Saturday, April 19, 2014

Present Values

A retirement income strategy is designed to provide incomes at different times to different recipients. However, the outcomes will depend on future events -- in our scenarios, longevity, investment returns and inflation. But it is helpful to consider the present value of prospective incomes and how it is distributed among the key recipients.

In this post I'll describe the basic approach used for the Present Value Analysis included in the RIS software; more details will follow in the next post.

To start, consider the problem of valuation of an investment in a share of Apple common stock. This is a claim that provides the owner with any future dividends that Apple might pay as well as the ability to sell the share at any future date. Since shares are traded publicly it is relatively straightforward to determine the market price, which represents a consensus opinion of the present value of Apple's future prospects. If you think the share is worth more, you may well want to buy more shares; if less, you may want to sell any shares you hold. But the market price reflects the overall evaluation of other investors. Economists define this as its present value and consider it a highly relevant measure.

Note that the price of an Apple share is based on its uncertain future prospects. In some possible scenario, future earnings and dividends will be disappointing and the prior price will turn out to have been too high. In another scenario, the future earnings and dividends will be spectacular and the prior price will turn out to have been too low. But the price today reflects investors' assessment of many different possible scenarios.

The RIS software takes the same approach when calculating the present values of prospective incomes. In particular, it generates a number of scenarios, each covering many years. 

Now, imagine a large matrix (table) with 5,000 rows (one for each scenario) and 40 columns (one for each future year). In each cell of the matrix there is an income payment and an indication of the recipient (you and your partner, you alone, your partner alone, or your estate).

Next, imagine that for every cell in this matrix there is a number representing the present value of $1. For example, in row (scenario) 123, column (year) 10 there is a number representing the amount that investors would pay today to receive $1 in year 10 if and only if scenario 123 (and no other) happened. What would determine this value? First, the probability that the scenario would take place. And second, the state of the world in that scenario.

The probability is easily determined. In our simulation there are 5,000 scenarios so the probability that any one will occur is 1/5000.  But there is good reason to believe that the prices will differ across scenarios.

To approach this in a more general context, economists use a concept that I like to term the price per chance (PPC) for payment at a given future time in a given future state of the world. And there is good reason to assume that this value will depend on (1) the number of years before the state occurs and (2) the economic health of the economy in that state. In particular, it makes sense to assume that other things equal, the present (market) value of a future unit of purchasing power is greater for states of scarcity than for states of plenty. In our simulations the best available measure of the state of the economy is the future level of the real value of the market portfolio of world bonds and stocks. So we assume that the present value of $1 in a future state divided by the probability of that outcome depends on the number of years before the state occurs and on the cumulative real value of $1 invested in the market portfolio today and held until that future year. In sum, other things equal, the present value of $1 to be received in a given state divided by the probability is lower, the farther in the future the state and the smaller the cumulative return on the market over the period.

The pricing kernel formula reflects these assumptions. It indicates the price (present value) per chance (probability) of $1 for a given state in the future. To return to our matrix with 5,000 rows (scenarios) and 40 columns (years), imagine that there is present value of $1 in each cell, computed by multiplying the corresponding price per chance by the probability (in this case, 1/5,000). Then we can value each cell's payment by multiplying the amount paid by the present value. Moreover we can sum up the present values of all the payments made to various recipients. In effect, this is what the RIS software does (although it actually updates sums as it creates scenarios in order to avoid the need to store large matrices). In addition, the software provides similar computations for any fees paid to financial advisors or others (as if they were stored in a second matrix).

Here is a result (based on a standard RMD account with 1% fees), obtained by clicking the Present Values button under Analyses.



In this case the present value of the household's prospective incomes is roughly 70% of the total value of the future prospective payments. The present value of the estate's prospects are somewhat more than half of the remainder, with the present value of the financial advisor's prospects taking the rest.

I willl have more to say about these pie charts in future posts analyzing alternative strategies. But here are two generic observations.

First, only annuities offer reasonable income prospects for a household without providing valuable prospects for an estate. Moreover, different variations on a theme can substantially change the division of present value between the household and its estate, as can be seen by changing settings, then generating another set of scenarios.

Second, fees that may seem small may offer very valuable prospects for the person or organization charging the fees, with an associated decrease in the value of the prospects for the household and/or its estate. Note that in the figure above, a 1% fee is worth almost 1/8th of the total present value -- a cautionary tale.

Finally, some mechanics. 

Present value calculations using a limited number of scenarios are subject to some error. I'll explore this more in subsequent posts, but suffice it to say that it is important to have at least 5,000 scenarios before making such a calculation. You will see that if the scenario settings called for fewer than 5,000 scenarios when you produced multiple scenarios, the Present Values analysis will politely refuse to give you any results. The solution is, of course, to change the scenario settings, then produce a new set of multiple scenarios.

You will notice also that there are no numbers given for the percentages of the various recipients' prospects. This was not an oversight. I chose to show only the pie chart in deference to the imprecision of the estimates. You can test the dependence of the results on the scenarios generated by pressing the multiple scenarios button again, generating a new set of scenarios, then seeing the resulting present value pie chart. With luck, the variation may be relatively slight. And the larger the number of scenarios, the smaller it should be. 

Here's the bottom line. Any Monte Carlo analyses is at best an approximation of reality. It is a complex world out there. At best we can only hope that our models and simulations shed useful light on the relative prospects of different strategies.





Wednesday, April 16, 2014

Year/Year Incomes



The previous post ("Analyzing Multiple Scenarios") showed how to generate multiple scenarios using the RIS software, then view the yearly income ranges using the Analysis routine titled (appropriately enough) "Yearly Incomes". The resulting graph shows the probabilities of exceeding alternative levels of income in each of the future years in the selected range.

In economic analyses of multiple years' incomes, it is often assumed that people have "time separable utility functions." In principle, a person with such preferences can evaluate the probabilities of alternative incomes in any given year, then calculate the "expected utility" of that range of possibilities. If in this manner the results for each of the future years are expressed in terms of present-day happiness, the expected utilities for each of the years can be added together to get a single measure of the overall desirability of the prospective future incomes. An individual preferences of this type can in theory determine the desirability of a strategy by studying only a graph showing yearly incomes with the accompanying information about the probability of being alive in each year.  To be sure, even in this simplified setting, a couple would have to consider the probabilities of being alive and most people would want to include information about the possible amounts that could be left for an estate. But information on the changes in income from each year to the next would not be needed.

However, many people are in fact concerned with the extent to which their income might change from year to year. To accommodate them the RIS software also includes graphs showing at least some relevant information. On the Analysis page click the button labelled "Yr/Yr Incomes"; you will get a graph something like this:



In this case, each curve shows (on the vertical axis) the probability of exceeding a given value of a ratio of income divided by the prior year's income (X), shown on the horizontal axis. The ratios shown run from 0 to 2.0, with a ratio of 1.0 indicated by a green vertical line. As with the Yearly Income graph, the chance that one or both of you and your partner will be alive in a given year is shown in the upper right. Also, as with that graph, there are two variants. In the first, as in the case shown above, each graph starts at 100% and shows the ratios for cases in which at least one of the members of the household is alive. The other, shown below, plots the probabilities that the ratios will (1) exceed various levels and (2) that one or both of the members of the household will be alive.


The first item in the Analysis Settings determines which graph will be shown -- C(ontingent), as in our first example, or A(ctual), as in the second. As with the yearly income graph, the number of seconds of delay between years will be that indicated in the Analysis Settings.

It is important to understand how these graphs are constructed. With some exceptions, as each one of the multiple scenarios is generated, the ratio of each year's income to that of the prior year is calculated, with the result added to tables to be used to produce the graphs. Excluded are cases in which the recipient in a year differs from that in the prior year. Thus the final year in which any remaining savings goes to the estate is excluded as well as any year in which the household changes from two people to one (since some strategies call for changes in income in such instances that are not related to investment performance).

As with the yearly income graph, the year/year income graph should be interpreted as showing information available at the present time about the range of outcomes that could take place future years. For example, the range of possible year/year income ratios for years 19 and 20 is based on information available today. When year 19 actually arrives, the range of possible ratios of year 20 income to year 19 income will undoubtedly be very different, since many possible scenarios concerning the first 19 years will have failed to take place.

This distinction helps illustrate the difficulty of assessing the range of possible outcomes for any multi-year income strategy. There are simply too many income combinations to consider in detail. To emphasize the point, look at the graph below, showing the likelihoods of different combinations of income one and two years hence for a market-based strategy.



 It is possible that someone with training and patience could study such a graph, compare it with another showing the likelihoods of incomes from some other strategy, then choose the preferred strategy. But most retirement income strategies have many more dimensions (years of income) than two. It is simply impossible to portray and assess alternative 40-dimensional probability distributions of income.  One needs rather to concentrate on a manageable number of attributes. For some investors our yearly income graphs will suffice. Others may wish to also consider the year/year income graphs. More than that is beyond this project.


Saturday, January 18, 2014

Analyzing Multiple Scenarios

Multiple Scenarios 

While it is very useful to see possible scenarios for future income and savings one at a time, there is merit in getting a view of the range of possible outcomes over many possible scenarios. Starting with RIS-20120120, my software on the Scratch site allows for the analyses of multiple scenarios. This post will describe the required procedures and show some examples, but will be short on analysis. Future posts will discuss the relevant economics and analyze alternative retirement income strategies.

In a previous post I discussed the scenario settings. There is now one additional setting that indicates the number of scenarios that you wish to create for multiple scenario analyses. It is the last one shown in the figure below. To obtain meaningful results you will need to analyze a great many scenarios so the setting is stated in thousands. The default is 5 thousand. I allow as few as one thousand but strongly recommend at least five thousand and more if you are willing to take the time.



 The Main Page

The main page now contains the ten buttons shown below. The new ones provide for  Analysis Settings, Multiple Scenarios and Analyses


 

The Multiple Scenarios Button

To create multiple scenarios, you need only click on the Multiple Scenarios button. After a short while you will be given an estimate of the time required to complete the process and asked whether you wish to proceed. If you say no, you will return to the main page but there will be no scenario statistics available to be used for any subsequent analyses. If you say yes, the desired number of scenarios will be generated and statistics gathered. You will see the progress on the screen  and it is very important that you do not interrupt the process. After it is completed, you may click the Analyses button at any time to see various properties of the scenarios.

Analysis Settings

The Analysis Settings button allows you to change the default settings for various analyses. At present there are only two settings, although more will be added. They are shown below.



The first setting indicates whether you want to see the actual probabilities of receiving income (A) or the contingent probabilities (C). As shown, the default is actual. I'll describe the two alternatives below.

The second setting indicates the time that the software should wait between years when plotting multiple yearly outcomes. The default is 0.25 seconds, which makes the plots come rather fast. You may want to use a larger value to slow down the display, although you can always stop temporarily by pressing and holding the 's' key (then resuming by pressing the space bar).

The Analysis Page

When you press the Analysis button on the main page, you will be transferred to the Analysis Page. The figure below shows its current state.






At present, only the first button is operative. The other two will be programmed in the future, and more may be added as well. Note that all analyses will use the multiple scenarios that you generated most recently. As usual, you may return to the main page by pressing the left arrow key.

Yearly Income Analyses

Now to the good part --what happens when you press the Yearly Income button.

I strongly suggest that you start by doing this using the software initial defaults settings (which include 5,000 multiple scenarios previously produced) to see the results in their full animated glory.

I'll start with graphs produced using all the default settings (based on an RMD account). In this case the  Analysis Setting calls for Actual probabilities. The figure below shows the graph after 18 years.

To produce this figure, I froze the display by pressing and holding the 's' key after the 18th year was shown. To produce the next figure, I simply pressed the space bar. (As usual, you can find context-sensitive help instructions by pressing the up arrow key to get a help message).

Let's look at the results. As shown at the top of the graph, the red curve is for year 18 (18 years in the future since the current year is year 0). The chance that you, your partner or both will be alive in that year is 89.7%. The horizontal axis shows levels of income from 0 to 80 $ thousand (the upper limit, taken from your scenario settings). There are twenty vertical grid lines, so in this case, each covers 4 ($thousand). Here the values shown on the horizontal axis are for real income, also taken from your scenario settings. You may change any of the Scenario Settings to produce different graphs, then producing a new set of multiple scenarios by pressing the Multiple Scenario button.


 As indicated, the vertical axis shows the chance that (1) income will exceed the value shown on the horizontal axis and (2) that one or both of you will be alive. Values range from 0% to 100% (or, for those of you who think in probability terms, from 0 to 1.0). Each horizontal grid line covers 5%, and the 50% (median) line is indicated as well. 

You can read this graph in either of two ways. 

You could pick a real income goal, say $40,000, find it on the horizontal axis, then go up to the curve and look over to the vertical axis to see your chances of doing that well or better -- in other words, beating that goal. Clearly, the better your chances, the happier you will be. Thus higher curves are better than lower ones.

Or you could pick a chance, say 50%, find it on the vertical axis, then go to the curve and look down to the horizontal axis to see the goal that you have a 50% chance of beating. The higher that goal, the happier you will be. Thus curves farther to the right are better than ones to the left.

If you have a statistical background, you may recognize this graph as similar to a cumulative probability distribution, but with one key difference. The typical statistical graph shows the probability of falling below the value on the horizontal axis, not the probability of exceeding it. I think this is not the way most human beings think about attaining goals and strongly prefer the approach I've employed in my prior research and incorporated in the RIS software. I'll probably have more to say about this "goal/chance" approach in future blogs.

Most of those who analyze retirement income strategies pick one, two or three probabilities (chances), then show the incomes associated with each of them in each future year. I feel that it is far better to show the entire ranges, as does the RIS software. I'll undoubtedly have more to say about this as well in the future.

To return to the figure, note that when income exceeds the maximum shown on the horizontal axis, the plot is just to the right of the vertical right edge of the graph box. Here, the actual income values are greater than 80 $thousand maximum plotted, but there is no way to tell how much greater they may be. If this is of concern you may want to change the Scenario Settings to provide higher maximum incomes, then run a new set of multiple scenarios, and analyze the results using the appropriate Analysis tools.

Now, back to the case at hand. The figure below shows the graph after all the years specified in the Scenario Settings have been shown. Not surprisingly, as time goes on, the chance of any income diminishes as mortality takes its toll. Moreover, there is a wide range of possible incomes in all but the initial year, and the range tends to be larger for later years. In future posts I'll discuss such matters at length when analyzing specific retirement income strategies.



I'll finish this post with graphs produced using the Contingent Probability setting in the Analysis Settings. (Happily, you do not have to run a new set of Multiple Scenarios to  change between Actual and Contingent probabilities).

The figure below shows years 0 through 14 in yellow and year 15 in red. For the first few years the graphs are virtually the same is in the previous case, since the probability that one or both of you will be alive in the near future close to or equal to 100%. The only difference is the heading for the vertical axis, which shows that the results indicate the chance that income will exceed the amount on the horizontal axis if one or both is alive. (In that sense, it is contingent). Note that this shows that for at least the next 15 years the median (50%) real income is larger in future years, the low-probability worst cases (90% and above) are somewhat worse, and the rosier low-probability cases (say, 25% and below) are considerably better.



The figure below completes the picture, including all the future years through year 49. As can be seen, the prospects for the very distant years become quite dismal. But of course the chances that anyone will be alive at the time are small.


Note also that in this case the curves for distant years are far from smooth. This reflects the fact that while the results were based on 5,000 scenarios, there are very few scenarios in later years in which anyone is alive, so the sample sizes are insufficient to provide good indications of the overall range of possible future outcomes. For example, in year 49 (shown in red), there were only 5 scenarios (0.1% of 5,000) -- far from sufficient to make well-informed estimates of the whole range of possibilities. Unfortunately, the only way to improve the reliability of distant forecasts is to take the (considerable) time required to run many more scenarios. But with at least 5,000 you should be able to get a rough idea of possible prospects.

There are profound differences between viewing future retirement income prospects using actual probabilities and conditional probabilities, as these figures show. Indeed, there is considerable debate about the extent to which people should weigh each of these two views when choosing among alternative retirement income strategies. I'll have more to say about this anon. Meanwhile, please do use the software to experiment with these new features.






Thursday, January 2, 2014

RMD Accounts


As indicated in previous posts, an analysis using the RIS software can employ one or more accounts, each of which provides retirement income. Earlier I described the X% Rule account. This post covers another type, based on the Required Minimum Distribution requirements specified by the U.S. Internal Revenue Service for those older than 70 ½ holding investments in tax-deferred accounts such as Individual Retirement Accounts and 401(k)s.

The IRS rules are provided in IRS Publication 590. Required distributions each year are determined by dividing the value of an account by a life expectancy. Equivalently, the required distribution is equal to a percentage of the value of the account, with the percentage equal to the reciprocal of the life expectancy. For example, if the life expectancy is 20 years, the required withdrawal percentage is 1/20, or 5%. The required distribution amount each year must be moved from tax-deferred accounts and declared as income subject to regular income tax rates; otherwise a prohibitive tax is levied.


Life expectancies are given in three tables, each of which is applicable for taxpayers in a particular category. The simplest and most widely applicable is Table III, which is required for use by: “Unmarried Owners, Married Owners whose Spouses are Not More than 10 Years Younger, and Married Owners Whose Spouses are Not the Sole Beneficiaries of their IRAs” (IRS Publication 590, p. 109).


The first two columns of the table below are taken directly from publication 590. “Dist Period” is the Distribution Period (Life Expectancy). I have added the final column, which shows the percentage of an account that must be distributed at each age.



                  Age         Dist Period             Percent
70 27.4 3.65%
71 26.5 3.77%
72 25.6 3.91%
73 24.7 4.05%
74 23.8 4.20%
75 22.9 4.37%
76 22.0 4.55%
77 21.2 4.72%
78 20.3 4.93%
79 19.5 5.13%
80 18.7 5.35%
81 17.9 5.59%
82 17.1 5.85%
83 16.3 6.13%
84 15.5 6.45%
85 14.8 6.76%
86 14.1 7.09%
87 13.4 7.46%
88 12.7 7.87%
89 12.0 8.33%
90 11.4 8.77%
91 10.8 9.26%
92 10.2 9.80%
93 9.6 10.42%
94 9.1 10.99%
95 8.6 11.63%
96 8.1 12.35%
97 7.6 13.16%
98 7.1 14.08%
99 6.7 14.93%
100 6.3 15.87%
101 5.9 16.95%
102 5.5 18.18%
103 5.2 19.23%
104 4.9 20.41%
105 4.5 22.22%
106 4.2 23.81%
107 3.9 25.64%
108 3.7 27.03%
109 3.4 29.41%
110 3.1 32.26%
111 2.9 34.48%
112 2.6 38.46%
113 2.4 41.67%
114 2.1 47.62%
115 and over 1.9 52.63%















The calculations made by the IRS to generate this table are not specified. Presumably, mortality tables were utilized, with some sort of averaging across possible combinations of unmarried investors of both sexes and those married with spouses of both sexes and with differing ages.


There is no presumption that the owner of a tax-deferred account must spend the amount on which taxes must be paid. And many investors have additional sources of retirement income. This said, it has occurred to some investors and analysts that it might be desirable to adopt a retirement income strategy with a policy of spending the percentages of overall savings given in the final column above. Prominent studies of the efficacy of such an approach include:


Sun, Wei and Anthony Webb, 2012, “Should Households base Asset Decumulation Strategies onRequired Minimum Distribution Tables?” Center for Retirement Research at Boston College Working Paper (available here).
          
Blanchett, David, Maciej Kowara and Peng Chen, 2012, “Optimal Withdrawal Strategy for Retirement-Income Portfolios,” Retirement Management Journal, 2(3): 7-20

Blanchett, David M. 2013. “Simple Formulas to Implement Complex Withdrawal Strategies.” Journal of Financial Planning 26 (9): 40–48, available here .

In their 2012 paper, Sun and Webb concluded that the RMD approach was preferable to the 4% rule. In his 2013 paper, Blanchett found that “the RMD approach works well for periods less than 15 years...” and advocated the use of a more complex approach for subsequent years. I remain agnostic on the issue but feel that the approach is worthy of investigation.

Now, to the details of the RMD account.


To cover ages not shown in the IRS table, I have made the assumption that the life expectancy for any age younger than 70 will be (70 – age) years longer than that for age 70. Thus for a 65-year old the assumed life expectancy is 27.4 + 5, or 32.5 years. Moreover, when there are two participants (you and your partner), I base the withdrawal percentage each year on the age of the older participant in that year.


The settings for an RMD account are shown below.






The initial setting (line 2) is the usual one that determines whether or not the account is active. The second (line 4) indicates the initial balance – here, a million dollars (1,000 $ thousand). The next setting allows for a variation of the strategy in which the RMD longevity numbers are altered by adding or subtracting a constant number of years. For example, if the adjustment is 2, the life expectancy at age 70 will be 29.4 (27.4 + 2) years, and every other life expectancy will be adjusted by adding 2 years to the amount shown in the table. Lengthening the life expectancies in this manner will reduce the percentages of savings paid, lowering retirement income payments and increasing possible estate values. If desired, you may enter a negative number for this setting. This will reduce the life expectancies and increase the percentage payments. (Not to worry -- if this would result in any expectancies less than one, they are replaced with 1.0).


The remaining settings are the same as those for the X% Rule settings. The fee indicates the annual percentage of the account value charged as fees to third parties. The three settings for the investment strategy are, as for the X% Rule, the initial proportion of the account invested in the market portfolio, the number of years for any glide path, and the proportion of the account invested in the market portfolio at and after the end of the glide path period. As with the X% Rule, the default settings provide for a constant investment solely in the market portfolio in each year.

The RMD approach is a special case of a more general class that I have called Proportional Payout (PPO) strategies, in which a pre-specified proportion of an investment account is paid out to provide retirement income in each year. In previous research, I have used a set of proportions specified for the Fidelity Income Replacement 2042 Fund, which is designed to pay out all the assets in the portfolio by the end of 2042. For a detailed analysis, see my paper in the European Financial Management Journal, a version of which is here. While the Fidelity Funds are designed specifically for producing retirement income, they will pay out all assets by a target date no more than 30 years in the future. In contrast, the RMD approach as implemented in the RIS software will provide some income until the both participants are gone, leaving at least some funds for an estate. For this reason, and because it uses non-proprietary data, I chose to include the RMD method in the software. However, it would be a simple matter for a user to alter the longevity table used for the calculations to produce different results.

Do try the RMD account. Unlike the X% Rule, it conforms with two sensible criteria in each year:

      The amount you spend should depend on
              1. How much money you have, and
              2. How long you are likely to need it


This doesn't mean it is the best approach for you. But, combined with a sensible investment policy, it might provide a desirable component for your overall retirement income strategy.




Sunday, December 29, 2013

Savings and Income Scenario Settings



This is about the scenarios that can be generated and shown in the RIS software. I assume that you have dealt with the client settings and the market settings and have also set up one or more accounts and made at least one of them active. At this point you are almost ready to generate and plot scenarios, But you will probably first need to alter the initial scenario settings. The figure below shows the six settings and their default values in the RIS-20140101 version.






The first setting (line 2) indicates whether you want to project real (inflation-adjusted) or nominal values. I strongly suggest that you focus on real values for both savings and income, since these are far more relevant in estimating possible consumption of goods and services. However, it may be instructive in some cases to look at the nominal values, since some retirement income strategies focus on them. That said, it is important not to be fooled by such displays. For example, it is not enough for a strategy to provide constant or slightly increasing nominal income if the increases are not sufficient to cover inflation. Here is a simple bromide to keep in mind:

         Real people should care about real income


By all means, feel free to look at the nominal values of savings and income for scenarios, but then examine the real values in order to seriously evaluatie a strategy.


The second setting (line 4) indicates the number of future years that you wish to display on the savings and income graphs. Any values for subsequent years will be shown just outside the right-hand border of the graph. This conforms with a general rule: If a value falls outside the range of a graph, it is shown outside the border, using the closest x and/or y value


The remaining settings indicate the maximum values shown inside the borders for the four possible graphs (real savings, real income, nominal savings and nominal income). You may have to experiment a bit to find the most satisfactory values for these settings. A useful rule of thumb for strategies that rely on an initial investment is to set the maximum real savings at twice the initial investment and the maximum real income at twice the initial income. For nominal values it is useful to set maximum values at four times the initial amounts, since with typical settings for expected inflation, nominal values in the later years can be twice as large as real values.

I suggest that you use make rough estimates for all these settings, then generate some scenarios to see what happens. If too many values fall outside the borders, increase the corresponding setting. If there is too much empty space within the graph, decrease the corresponding setting. It should not take much time to find settings that provide a reasonable balance, excluding few values and using the space within the graph efficiently.

Once you have adjusted these scenario settings, you are ready to see the results of your handiwork by clicking either the savings scenario or income scenario button. I'll cover these in the next post.

Tuesday, December 17, 2013

The X% Rule


Accounts


The RIS software allows the user to specify one or more sources of retirement income. Each is described in an account. And each such account has a number of settings.

An account might be a bank account, an account managed by a financial advisor, an annuity in which an insurance company provides monthly payments, etc.. All accounts provide annual payments that sum to equal retirement income. Many also have balances that sum to equal total savings. An account will make payments that may depend on the mortality of the recipients. Thus an account might pay more if both you and your partner are alive than if only one is alive. And in the first year in which you and your partner are both dead, any account with a balance will pay the total amount remaining to your estate.

In this post I will describe the first type of account, which I have called, generically, the X% Rule. This is a generalization of an approach widely recommended by financial advisors, based on a strategy initially termed the “4% Rule”.


The 4% rule


The 4% rule, first advocated by William Bengen in “Determining Withdrawal Rates Using Historical Data”, Journal of Financial Planning, vol. 7, no. 4, October 1994, pp. 171-180, is widely used by financial advisors. Bengen initially analyzed annual returns on bonds and stocks in the United States over every possible 30-year sub-period within  a 90-year period . For each sub-period, he calculated the outcomes of a policy of withdrawing a constant real amount equal to 4% of an initial investment value, assuming that funds were invested in a constant mix split evenly between stocks and bonds. He found that in almost all of the 30-year periods, such a policy would not “run out of money” and suggest that in this sense it “should be safe”. In a recent webinar he advocated following the policy with a withdrawal amount equal to 4.5% of the initial value.

Much has been written about the 4% rule. Jason Scott, John Watson and I analyzed it at considerable length in (“The 4% Rule: At What Price?”, Journal of Investment Management, vol. 7, no.3 (Third Quarter) 2009, pp. 1-18"), available here, in which we pointed out a number of its shortcomings. In a recent paper in the September/October issue of the Financial Analysts Journal,  Jason and John document subsequent studies of variants of the 4% rule and advocate a very different approach.

I won't go into details here, but my view is that the 4% rule and the variants that I have allowed in the x% account are sorely lacking. It seems to me that first principles dictate that any rule for spending out of a retirement account should at the very least adhere to the following principle:

        The amount you spend should depend on
              1. How much money you have, and
              2. How long you are likely to need it


    The x% rule can meet both criteria in the first year, since the amount spent is x% of the initial value and the value of x can be set taking into account the ages of the recipients (in practice, some advisors do modify the initial payment percentage, making it larger for older clients and smaller for younger ones). But after the first year, the rule fails on both counts. The amount paid is completely divorced from the value of the account. And no account is taken of changes in life expectancy, death of a principal, etc..

    In a quest for simplicity, the x% approach to providing retirement income comes up very short on first principles. However, since it persists as a kind of standard in much of the practice of financial advice, I have included it in the software. I'll have more to say about this in subsequent posts. In the meantime, I encourage you to experiment with different settings of the account, the market and the client to better understand the properties of this rule.


    Now to the details of the software.


    The X% account and its settings


    This section will cover details of the implementation of the account in the RIS software. I'll probably belabor some aspects that may be obvious. For many users it will suffice to look at the settings using the software, make any desired changes, and see the implications for savings and income in alternative possible future scenarios.

    The figures below shows the settings for the X% account. These may be reviewed and/or changed by clicking the "Account Settings" button on the RIS home page, then clicking the "X% Rule" button on the account settings page. When the settings have been reviewed or changed, simply press the keyboard left arrow to return to the home page.




    The initial setting (line 2) indicates whether this account is active or not. If an account type is not be be used, this setting must be N (no). When reviewing the settings for the account if the answer is N, the dialogue will be terminated and the account button will be dimmed. If the setting is Y the account button will be shown fully and the remaining settings will be reviewed and may be changed.

    The second setting (line 4) concerns the amount of money initially placed in the account. In general, dollar amounts in RIS are stated in thousands. In this default case the account starts with a million dollars (1000 $ thousand).

    The next setting (line 6) indicates the amount to be paid out initially, also stated in thousands of dollars. This will be paid immediately and is thus not subject to any uncertainty. In the default case this is equal to 40 ($ thousand), which is 4% of the initial investment, as in the classic 4% rule.

    The original formulation of the 4% rule did not take mortality into account. The assumption was made that an amount with the same purchasing power would be paid in each subsequent year unless there were insufficient funds, in which case the remaining funds would be paid out and subsequently nothing would be available

    In RIS I have generalized the approach somewhat to allow different amounts forthree possible conditions: both are alive (line 8), only you are alive (line 10) and only your partner is alive (line 12). In the default settings, all three equal the initial amount, giving the original 4% rule.

    The remaining settings concern fees and the investment strategy to be followed when implementing the rule.

    Line 14 shows the annual fee as a percentage of the account value. In the default case, 1% of the value of the account will be deducted for fees each year, just before payment is made to the beneficiaries. In practice a smaller fee (for example, 1/12 of 1%) is likely to be deducted each month but since RIS uses only annual returns and valuations, a single deduction is utilized. Financial institutions and advisors often charge lower percentage fees for larger accounts, but 1% is not atypical for accounts of a million dollars. You should adjust this setting to reflect the likely cost of such services in your case. Of course, you could follow an x% rule without an intermediary, saving a considerable amount of money. In such an instance you would set this amount to 0.

    The remaining settings describe the investment strategy to be followed. The original versions of the rule assumed that funds would be invested in a relatively constant mix of stocks and bonds – typically with 50 or 60% invested in stocks and the remainder in bonds. More recently, some have advocated the use of a “glide path” in which the proportions of bonds and stocks vary from year to year. To generalize, I have allowed for limited versions of either approach.

    To focus on real returns, RIS has only two major types of investments – a market portfolio and a riskless real security (as discussed in a previous post). Any investment strategy can thus described by the proportion of funds (by value) in the market. For example, if the proportion in the market is 0.60 (60%), the remainder (0.40 or 40%) will be invested in the riskless real security. The settings allow the proportion in the market to be as low as 0 and as high as 5. As I discussed in my earlier post, values greater than 1.0 assume that it is possible to “lever up” the market portfolio by borrowing at the riskless real rate of interest (or equivalently, that some sort of investment with the equivalent expected return and risk of such a levered position can be obtained) – an assumption that may be inappropriate in some cases.

    Three settings determine the investment policy. The first (line 16) indicates the initial proportion of funds in the market portfolio. This specifies the investment mix that will be used to determine the return at the end of the first year. In the default case it is 1.00, reflecting investment totally in the market portfolio. The next two settings determine the length of the “glide path” and the proportion invested in the market portfolio when it ends. For example, if the glide path were to last 20 years with the proportion in the market at that point equal to .50, line 18 would be set at 20 and line 20 at 0.50. The RIS software assumes that after the glide path ends, the proportion invested in the market remains constant. Thus if the glide path lasts 20 years and ends at 0.50, the proportion in the market portfolio will equal 0.50 in years 21, 22, and thereafter.

    The default settings specify the special case in which there is, in effect, no glide path. The market proportion starts at 1.0, the glide path lasts for 0 years and then the proportion continues at 1.0 thereafter.

    While the use of these three settings is somewhat forced in the default case, it seemed desirable to allow for a glide path in order to allow the analysis of approaches advocated by some practitioners. I have limited the possibilities by requiring the glide path to be linear, but this should capture at least the key attributes of approaches recommended by some analysts. A similar approach will be used for some of the additional types of account to be added to the software in the future.

    Once you have arranged the settings of an X% account to your satisfaction and made it active, you need only return to the RIS home page (via the keyboard left arrow) and click either the "Income Scenarios" or "Savings Scenarios" to see plots of possible future outcomes. It's that easy.


    Tuesday, December 3, 2013

    Investment Returns and Inflation


    With the exception of some social insurance programs, most sources of retirement income depend to a greater or lesser extent on the returns on one or more investment vehicles. The RIS software simulates returns on two types of such investments as well as changes in the overall cost of living.

    There are five key settings for this process, shown, along with default values, in the market settings list below.




    To see the current values of these settings and make any desired changes, simply click the Market Settings button on the RIS home page.

    This post will discuss the procedures used to provide simulated returns and changes in the cost of living as well as the reasons why I have chosen them for the initial releases of the software. I'll deal with the three key aspects in turn. 

    Warning! Of necessity, some of this discussion is going to be lengthy and rather technical. Feel free to skim it as needed.

    Risk-free real returns


    There are, at present, only two possible types of investment in the RIS software. The first is a risk-free instrument that promises a constant real return in each future year. An example of a (hopefully) risk-free real return instrument would be the Treasury Inflation-Protected Securities (TIPS) issued by the U.S. Government. The coupon and principal payments of such bonds are adjusted using a Consumer Price Index with the intention of providing fixed amounts of purchasing power. Of course the “cost of living” of any given individual or household will depend on the prices of a particular basket of goods and services and will, at best, only be approximated by a standard price index. There have been attempts in the U.S. To produce an index that more closely reflects the goods and services purchased by retirees, but the results were mixed and some concluded that the resulting index was not demonstrably superior to the standard CPI for this purpose.

    As you will see, in the scenario projections I have chosen to focus on real returns, real investment values and real retirement income since it is far more important to consider the spending power of future incomes than the nominal amounts. Unhappily, some vendors of retirement strategies market their products by focusing on seemingly desirable prospects for nominal income, leading retirees to fail to consider the erosion of purchasing power that inflation may cause. Many retirees will find that in the last years of their lives a dollar (or other currency) buys less than half the goods and services that it did when they retired. Those who ignore the possibility of inflation do so at their own great peril.

    As shown above, the default setting is for a real (inflation-adjusted) risk-free return of 1% per year in each future year. This “flat yield curve” assumption is at variance with both history and current yields on TIPS. For example, here are the TIPS real yields for bonds of various maturities at the end of November, 2013:

            Maturity         Annual Yield
                5 years           - 0.32 %
             10 years              0.60 %
             20 years              1.23 %
             30 years              1.53 %

    Such a “rising yield curve” is not uncommon. This may reflect a preference for more liquidity or possibly a prediction that shorter-term rates are likely to increase in the future. But it adds a complexity that is not currently included in the RIS software.

    Note also that at the time the real return on (relatively) riskless investments for a 5-year period was actually negative, suggesting that you could have invested your money for a promise to obtain fewer future goods and services than you sacrificed initially. To some extent this may have been due to a feature of TIPS that precludes reductions in payments below certain levels if there is deflation. But more likely it was an artifact of the “quantitative easing” program, in place at the time, in which the Federal Reserve Bank was purchasing huge amounts of government bonds each month in an attempt to hold interest rates down, due to the still tepid recovery from the recession of 2007-2009. Whatever the reason, low yields on both inflation-protected and traditional bonds imposes a huge burden on those attempting to finance their retirement – a result infrequently noted in the popular press and political discourse.

    In any event, the RIS system assumes that there is a constant riskless real rate of interest. The user is free to chose any desired value for this setting. The default of 1% is roughly equal to the average across all maturities in the latter part of 2013 and lower than the rates provided in previous years by inflation-protected securities in the U.S. and some other countries. While the lack of a complete term structure of interest rates in our simulations may omit important aspects of some possible investment policies, it may be an acceptable simplifying assumption for broad-based comparisons of alternative approaches.


    Market bond/stock portfolio returns


    The other possible type of investment in the RIS software is a portfolio of bonds and stocks. In the settings I call this the “market bond/stock portfolio” although I often refer to it simply as the “market portfolio”. Ideally, this should include all bonds and stocks traded relatively actively around the globe, with each represented in proportion to its outstanding value. In practice you may want to favor bonds from your home country.

    A key assumption is that the market portfolio includes securities with values proportional to the total outstanding values. Thus if the total outstanding value of Apple shares is $A and the total outstanding value of Microsoft shares is $M, the relative values of the two shares in the market portfolio will be $A/$M. More simply put, if the portfolio has x% of the total shares issued by Apple, it will have x% of the total shares issued by Microsoft and every other issuer. It will also have x% of the bonds issued by each of the included firms or governments. Importantly, changes in the relative prices of Apple and Microsoft will not require the purchase or sale of either. Actual trades will be required only to deal with dividends on stocks, coupon payments on bonds, share repurchases, bonds that are redeemed, new issues and the like. In this sense our market portfolio is a low-turnover fund and it should be possible to obtain an index fund with similar returns and low overall expenses.

    The market portfolio plays a central role in may theories of the pricing of capital assets and resultant prescriptions concerning the relative desirability of different investment strategies. Importantly, it represents the portfolio held by the sum of all those who invest in traded bonds and stocks. Any investor holding a different combination of such securities must, in a sense, be offset by one or more investors holding a complementary portfolio. Thus if I underweight Microsoft and overweight Apple relative to the market portfolio, one or more investors must overweight Microsoft and underweight Apple. Only the market portfolio can be said to be “macro-consistent” – that is, everyone could hold it and markets would clear.

    Note that our market portfolio is not the often-used market value weighted portfolio of equity securities, represented by some popular stock index. Rather it is intended to represent all relatively liquid bonds and stocks and therefore conform more closely to the “market portfolio” construct of academic theories about the pricing of capital assets.

    But how to predict the return on such a portfolio? Anyone with experience in security markets knows that it is impossible to predict the total return on the market in any given year. One can, at best, aspire to specify a range of possible outcomes and the likely probability of each one. Both academics and practitioners assume that this can be done, with the actual return considered a draw from a pre-specified probability distribution of possible returns. But what is the shape of the distribution? And what are its parameters: the central return, the range of possible returns, etc.?  It would be nice if we could reasonably assume that every year in history was a drawn from an unchanging probability distribution and if we had many centuries or such draws. But it is implausible that the return in 1865 was drawn from the same distribution as that in 2013. The world changes, the financial system varies, and the sources of uncertainty change as well. Despite decades of sophisticated statistical analyses, there is little agreement among academics and practitioners about "the" probability distribution of the return on the market portfolio.

    My opinion is that predicting the possible range of returns on the market is ultimately the responsibility of the investor with the aid of a financial advisor whom he or she trusts. I am not that advisor. The RIS software makes some assumptions about the type of probability distributions from which market returns and inflation will be drawn, but it is up to the user to choose the specific inputs. I have provided defaults that are similar to those used by some institutional investors, but you should feel free to change them. That said, the current software does employ a particular type of probability distribution and has additional built-in assumptions. If you believe these are not appropriate, you or someone else may  create a version of the software with different computations. The code is available at the Scratch site and you are free to make any desired modifications.

    In the current version of the software I have assumed that each year's total market return is drawn from a lognormal probability distribution. By “total market return” I mean the ratio of the year-end value to the value at the beginning of the year. Thus if the return is 10%, the total return is 1.10. Equivalently, I assume that the logarithm of the total market return is drawn from a normal distribution (the bell-shaped symmetric version that you undoubtedly studied in school). 

    Why this assumption? Here is a possible justification. The annual total return on a portfolio will equal the product of the daily total returns. From this it follows that the logarithm of the annual total return will equal the sum of the logarithms of the daily total returns. Now, as you may have learned in class, if you repeatedly add up a set of values each of which is drawn randomly from a distribution, the distribution of the sums will be close to a normal distribution, and the more the numbers you sum each time, the closer this will be to such a distribution (this is the famous “central limit theorem”). So if you think about the total return on the market over a year as the product of the total returns for each of the trading days in the year and assume that the daily returns are drawn independently, you will conclude that the distribution of annual total returns will be very close to lognormal. Moreover, the central limit theorem holds approximately in many cases where these assumptions are not met in every detail. In any event, such relationships can provide some justification for the assumption that annual returns are lognormally distributed. But there may be occasional "perfect storms" and the software does not take such a possibility into account; that said, the long run effects on retirement income for at least some strategies may not be radically different from those produced in the simulations.

    For good or ill, the RIS software draws each annual market return from an unchanging lognormal probability distribution. You (or I at some future date) could of course create a version with a different set of assumptions to accommodate, for example, a “fat left tailed” distribution or some other set of assumptions, but the current version doesn't allow for such an alternative.

    Two settings are used to fix the parameters of the market return distribution. The first is the expected annual return premium over the riskless real rate. For example, given the default value of 4% per year along with the riskless real return of 1% , the expected real return of the market portfolio would equal 5% (the sum). Note that this is the expected return, defined as the value obtained by weighting each possible value by its probability. The corresponding risk measure is the standard deviation of the annual real return, obtained by squaring the deviation of each possible real return from the expected value, weighting each such value by its probability, then taking the square root of the resulting sum. The default value is 12% per year. Note that, following convention, both these measures relate to the annual return, not its logarithm.

    An important relationship is given by the ratio of the market expected return premium to its standard deviation -- usually called the Sharpe Ratio (although I originally termed it the Reward to Variability Ratio). In this case it is 4/12, or 1/3. This is a commonly made assumption, reflecting a plausible relationship between risk and the additional expected return required for investors to bear the risk of a market portfolio.

    In traditional models of asset pricing such as the Capital Asset Pricing Model, the market portfolio provides the highest possible Sharpe Ratio. Combinations of the market portfolio and the riskless asset will provide the same Sharpe Ratio, assuming that investors can borrow or lend at the riskless rate. In the RIS software, all asset mixes are combinations of the riskless asset and the market portfolio, so this condition is met. However, substantial amounts of borrowing (negative positions in the riskless asset) at the same riskless rate may not in fact be feasible in the real world. Fortunately, most retirement income strategies involve investment risks equal to or lower than that of our market portfolio.

    In more general models of asset pricing such as those employing pricing kernels, the market portfolio also plays a central role. I have written about this in a 2007 book and utilized the approach in papers analyzing alternative retirement income strategies. For more information, see my web site.

    It is important to note that when total returns are lognormally distributed, the median (50/50) return will be smaller than the expected return, since the distribution of total returns will be skewed to the right. This is an important aspect of the RIS assumption. My view is that the expected return is a non-intuitive concept and that ordinary human beings relate far better to the median -- that is, the outcome for which there is roughly a 50% chance that the actual return will larger and a 50% chance that the return will be smaller. The distinction between the expected value  and the median is important when returns are drawn from asymmetric distributions, as they are in the software.

    A final assumption about market returns concerns the relationship between the return on the market in one year and that in the next. The software assumes that each annual return is drawn independently from a given lognormal distribution, so that there is no predictable relationship between one year's return and that of any other. In academic-speak, annual returns are independent and identically distributed (iid). An interesting aspect of such returns is that, regardless of the nature of the distribution of annual returns, the distribution of possible cumulative return over a period of many years will be close to lognormal, and hence skewed to the right (due to the the central limit theorem). In our case, however, the return over any period of years (from 1 to many) will be lognormally distributed.

    You may well wonder why only two possible investments are included explicitly in the RIS software. The reason is that in a simple setting, all efficient investment strategies should be constructed using the most efficient risky portfolio and a riskless security. We assume that people care about real, not nominal, returns and so the market portfolio is assumed to be the most efficient risky portfolio in real terms. Accordingly, the only real risk that is rewarded with greater expected real returns is the risk borne by investing in the market portfolio; moreover, this will be the case for any single year or multi-year holding period. No additional source of risk is rewarded with higher expected real returns.

    In the real world, many investment strategies recommended for retirees employ mixes of stocks and bonds. An investment in our market portfolio could be considered as roughly equal to a portfolio with 60% of its value in stocks and 40% in bonds. However, the relative values of stocks and bonds in our market portfolio will change as the relative values of outstanding stocks and bonds vary. The investor holding our market portfolio will not have to sell bonds and buy stocks when the stock market falls more than the bond market. Nor will he or she have to sell stocks and buy bonds when the stock market rises more than the bond market. As I have discussed elsewhere, strategies that call for specified proportions of value invested in stocks and bonds require “contrarian” behavior – selling relative winner and buying relative losers, and only a minority of investors can do this. As always, for every seller there must be a buyer. This calls into serious question the desirability of any investment strategy that requires rebalancing to maintain specific proportions of values of different asset classes, especially when trading costs are considered.

    My paper on these issues and a helpful calculator with historic data on the relative values of world bonds and stocks can be found here.

    Unfortunately, at present there is no low-cost mutual fund or ETF that provides returns similar to those of a world bond/stock portfolio. It is possible to find low-cost index funds or ETFs that cover the major components -- world stocks, U.S. Bonds and non-U.S. Bonds. But the investor holding such funds would have to monitor the relative values of these components periodically to adjust for new issues, bond maturities and the like. While this might not be too arduous, I continue to hope that the financial industry will  provide a single fund for those who wish to invest in a truly representative world bond/stock portfolio. In the meantime, relatively low-turnover mixes of broad-based bond and stock funds will probably suffice.

    If you wish to analyze strategies in which some alternative risky portfolio is utilized, you may of course adjust the assumptions about the market portfolio's expected return premium and standard deviation of return accordingly. However, any changes in asset allocation will have to rely on combinations of this portfolio and the riskless real security.

    A final issue in this area concerns our assumption that the expected return on the market is constant from year to year. Some evidence suggests that stock returns are not independently distributed from year to year. Instead, the stock expected returns may be higher after stocks have declined and lower after they have risen. Formally, the return on the stock market may have negative serial correlation. Importantly, this is not inconsistent with our assumption that the returns on the overall bond/stock market portfolio returns are independent from year to year. For example, assume that stocks have fallen in value and that the value of the stocks has changed from 60% of the total to 50%. If bond expected returns are unchanged, for the overall market expected return to be the same, stock returns will have to be greater. More generally, our assumption that the returns on the broad market of bonds and stocks are independent from year to year is not incconsistent with negative serial correlation in stock returns.

    Inflation


    The last two market settings relate to inflation. They are the expected annual inflation, for which the default value is 2.5% per year and the standard deviation of inflation, with a default value of 1.0%. While these are the parameters for annual inflation, the amounts generated for simulations are drawn from a lognormal distribution. Thus if annual inflation is 2.5%, the comparable relative value of purchasing power is 1.025 and in the simulations, the logarithms of such relative values are drawn from a normal distribution.

    For simplicity, the annual rates of inflation are assumed to be independently and identically distributed (in academic-speak, they are said to be iid). Moreover, they are assumed to be uncorrelated with the real returns on the market portfolio. These assumptions are somewhat inconsistent with much of the empirical evidence. Annual inflation appears to be positively serially correlated, with abnormally high periods of inflation likely to be followed by periods of smaller but still above-average values and with abnormally low periods of inflation likely to be followed by periods of higher but still below-average inflation. Moreover, in some countries there tends to be a negative relationship between real returns on equity and inflation, due perhaps to the fact that firms' taxes are based on nominal rather than real returns, so an increase in inflation may lower after-tax profits.

    While these empirical results raise relevant questions about our inflation assumptions, it is not likely that changing them would greatly affect the key simulation results. If the variation in inflation from year to year is relatively small, the impact on retirement income strategies may be minor. And, as is well known, central banks in most large countries and regions make every attempt to keep inflation within narrow ranges such as those assumed in our default settings. Our default assumption for the standard deviation of inflation (1%) may reflect an overly optimistic view of such banks' abilities to control inflation, but it can of course be easily changed.

    Turning to expected inflation, the target set by many if not most central banks is 2 % per year. Historically, many countries have experienced somewhat greater levels (and many advocate the central banks encourage this, at least when economies are sluggish). Some observers believe that expected inflation can be inferred from the spread between the yield on a nominal treasury security and that on a real security. For example, at the end of November, 2013 the real yield on a 20-year U.S. Treasury TIPS was 1.23% while the nominal yield on a regular U.S. Treasury bond with the same maturity was 3.54%. The difference (2.31%) could be a consensus of investors' estimates of future inflation over that period, although it might also reflect other considerations. In any event, our estimate of 2.5% may be reasonable, although it too can be easily changed.

    With simulated real returns on the market portfolio and inflation, it is easy to determine the associated nominal returns on the market. Rather than adding the two amounts I use the more precise relationship:
             (1+n) = (1+r)*(1+i)
    Thus if the market return is 8% and inflation is 2%:

            (1+n) = 1.08*1.02

    so (1+n) is 1.1016 and the nominal return is 10.16%. Given this relationship, the nominal returns on the market portfolio will be lognormally distributed, since both the market real return and inflation are lognormally distributed  and the product of two variables drawn from such distributions will be as well.

    Summary

    Here are some key points concerning the market and inflation assumptions utilized in the RIS software.

    First, investors are assumed to diversify their risky asset holdings not only within asset classes but more broadly, across asset classes, focusing on a highly diversified portfolio of bonds and stocks. Second, the investment world is assumed to focus on real returns, with investors avoiding any “money illusion”. Third, the only risk that is rewarded with higher expected returns in any year or multi-year period is that associated with the broad overall market, represented ideally by the portfolio of all traded world bonds and stocks.

    The relative merits of different retirement income strategies may change if these assumptions are changed substantially, either by modifying the market settings or by changing the code to produce a system with qualitatively different investment and/or inflation assumptions. Outputs may well depend on inputs. My goal is to provide a base that others can use or modify as desired.