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Low Volatility Portfolio Optimization Works Where Momentum Strategies Fail

Summary Momentum strategies have worked exceedingly well since 2008. It takes some effort to find a diversified portfolio for which momentum strategies fail. Adaptive asset allocation based on portfolio optimization with high volatility target also fails when momentum strategies fail. Adaptive asset allocation based on portfolio optimization with low volatility target performs well even when momentum strategies fail. Momentum strategies are very popular and are readily available at no cost on the internet. In fact, it takes some effort to find a well diversified portfolio of equities and bonds that would have failed. I used the “dual momentum” and the “relative strength” timing models on the portfoliovisualizer.com site and run a sequence of simulation on some ETF portfolios that included stocks, bonds, real estate and commodities. The portfolio I selected for the study is made up of six ETFs and it performed poorly for the momentum strategy with any look back period. As a benchmark we analyze the performance of the portfolio with equal weight targets, rebalanced when the allocation of any asset deviates by more than 20% from the target weight. That portfolio was subjected to 21 rebalancings within the time interval of the study from January 2007 to September 2015. In this article I compare the momentum strategy with the adaptive allocation strategies I described in many previously published articles. We investigate two versions of the strategy: a return maximization with a low volatility target, and another with a high volatility target. The version with low volatility target was subjected to 105 reallocations of the assets, virtually almost every month. The version with high volatility target was subjected to only 52 reallocations because it was allocated, on average, about two months to the same asset. Here is the list of securities used to build the portfolio: SPDR S&P 500 Trust ETF (NYSEARCA: SPY ) iShares U.S. Real Estate ETF (NYSEARCA: IYR ) SPDR Gold Trust ETF (NYSEARCA: GLD ) T he United States Oil ETF, LP (NYSEARCA: USO ) iShares 1-3 Year Treasury Bond ETF (NYSEARCA: SHY ) iShares 20+ Year Treasury Bond ETF (NYSEARCA: TLT ) The data for the study were downloaded from Yahoo Finance on the Historical Prices menu for SPY, IYR, GLD, USO, SHY and TLT. We use the daily price data adjusted for dividend payments. For the adaptive allocation strategy, the portfolio is managed as dictated by the mean-variance optimization algorithm developed on the Modern Portfolio Theory (Markowitz). The allocation is rebalanced monthly at market closing of the first trading day of the month. The optimization algorithm seeks to maximize the return under a constraint on the portfolio risk determined as the standard deviation of daily returns. In table 1 we list the total return, the compound average growth rate (CAGR%), the maximum drawdown (maxDD%), the annual volatility (VOL%), the Sharpe ratio and the Sortino ratio of the portfolios. Table 1. Performance of the portfolios from January 2007 to September 2015. TotRet% CAGR% maxDD% VOL% Sharpe Sortino Equal Weight 36.95 3.70 -35.85 10.46 0.32 0.42 AA LOW volatility 65.03 5.96 -11.05 6.02 0.99 1.32 AA HIGH volatility -4.73 -0.56 -55.18 23.19 -0.02 -0.03 The data in table 1 should be compared to the results of applying the dual momentum strategy as computed with the portfolio visualizer application. The dual momentum strategy investing monthly in the asset with the highest return over the previous 3 months had total return of -10.34%, with CAGR of -1.25%, maximum drawdown of -40.88% and volatility (St Dev) of 20.48%. There were two periods when the momentum strategy suffered huge losses; first in 2011-12 after gold topped, and the second in 2014-15 when oil prices tanked. The AA high volatility results are very similar to the dual momentum results. Most of the difference in drawdown and volatility is due to the fact that I use daily closing data while the portfolio visualizer site uses monthly data. That explains the slightly larger volatility and drawdown of the AA high volatility compared to the dual momentum. The small difference in the total return is due to a different allocation of the two strategies during a few months in 2011, as will be seen in figure 2. Of the three strategies, the AA with low volatility target performs the best both in return and risk. It produces a steady return of about 6% annually with a low volatility of only 6% and a maximum drawdown of -11%. The performance of the equal weight strategy falls in the middle; it returns on average almost 4% with low volatility of 10%, but still rather large drawdown of -36%. The equal weight strategy suffered steep losses during the 2008-09 bear market. In figures 1a and 1b we show the historical allocation of assets for the adaptive allocation strategy. (click to enlarge) Figure 1a. Historical asset allocation for the low volatility target portfolio. Source: All the charts in this article are based on calculations using the adjusted daily closing share prices of securities. As can be seen in figure 1a, the portfolio was allocated to SHY about 50% over the entire time. It was also allocated about 25% each to SPY and TLT. There were only small allocations to gold, oil and real estate. (click to enlarge) Figure 1b. Historical asset allocation for the high volatility target portfolio. Here one sees that the high volatility target portfolio was allocated alternately to one asset only, the same as in the momentum strategy. Only for a few months in 2009 was the portfolio invested in two assets simultaneously. In figure 2 we show the equity curves of the adaptive allocation portfolios. (click to enlarge) Figure 2. Equity curves for the adaptive allocation (NYSE: AA ) portfolios. We see in figure 2 that the high volatility target portfolio performed well until the fall of 2011. Since then, the equity either went down or oscillated in a range. Recently the equity fell below the initial investment. In figure 3 we show the equity curves of the low volatility and equal weight portfolio. (click to enlarge) Figure 3. Equity curves of the adaptive allocation with low volatility target and the equal weight portfolios. We see in figure 3 that the equal weight portfolio suffered large losses during the 2008-09 financial crises. It performed well between 2009 and 2012, but it fluctuates in a range since 2013. Still, overall, the equal weight portfolio performed better than the adaptive allocation or momentum strategy, as can be seen in figure 4. (click to enlarge) Figure 4. Equity curves of the adaptive allocation with high volatility target and the equal weight portfolios. Source: All the charts in this article are based on calculations using the adjusted daily closing share prices of securities. Conclusion The adaptive allocation by portfolio optimization with low volatility target performs satisfactorily during all market environments. Over a long investment horizon, it beats the equal weight as well as the momentum strategies.

Retirement Portfolios – Volatility, Taxes, And Risk

Summary This article refines a previously-presented method for qualifying investment portfolios as suitable for retirement. It uses simple formulas for the effect of taxes on returns and volatilities, which leads to a surprising result: an investor in a higher tax bracket can accept a lower volatility. The method also extends the previous analysis to cover more volatile portfolios, such as those trading XIV and VXX. Introduction A previous article introduced a method for comparing investment portfolios based on back-test results. It considered a recently-retired person who: – Invests an initial amount at the start of retirement, – withdraws a percentage of the initial amount each year, adjusted for inflation, and – holds a portfolio with an expected volatility and return for the duration of their retirement. The previous article showed how to make a go/no-go decision about investing in a portfolio, based on its expected after-tax annualized return, after-tax annualized volatility of returns, and historical inflation. However, back-tests provide pre-tax returns and volatilities, not after-tax figures, and the current level of inflation remains below the mean historical level. To improve the usefulness of the method, this new article shows how to decide whether to invest in a portfolio based on its expected pre-tax returns and volatilities, and based on other-than-historical inflation rates. As before, this article defines risk as a number with direct impact on the retiree, the chance of running out of money during retirement; rather than as a more abstract number, the annualized volatility of returns. A prudent retiree would first seek to reduce risk, the chance of running out of money, to a negligible level. That ensured, the retiree would next seek to increase the portfolio’s balance at the end of retirement to leave a legacy. Simulation method As in the previous article, this analysis uses a Monte Carlo simulation tool at portfoliovisualizer.com to test the risk of a portfolio with a given volatility and return. Table 1 shows the input parameters for the simulation. For each volatility shown in the table, the analysis tried various values of expected return until the simulation output showed a 99% probability of success. This means that at the preset annual withdrawal and volatility settings, 99% of Monte Carlo trials showed a positive balance at the end of retirement. In other words, the retiree did not go broke. The expected return setting that yields 99% probability of success represents the average annualized return necessary throughout retirement to reduce risk to a negligible level at the given settings for annual withdrawal and volatility. Defining negligible risk as 99% probability of success (1% risk) seems appropriate considering the severity of the consequences of running out of money. The simulation tool also provides a median end balance, the retiree’s legacy at the end of retirement in 50% of Monte Carlo trials at the given withdrawal rate and volatility settings, and at the expected return necessary for 99% probability of success at those settings. The simulator shows median end balance discounted for inflation, and therefore expressed in the same dollars as the initial invested amount at the start of retirement. This procedure yielded (volatility, return) pairs at 1% risk of going broke for withdrawing an inflation-adjusted fixed amount annually, equal to 3% of the initial amount. It also provided the median end balance at this volatility, return, and withdrawal rate. Simulation results The simulation tool provided the results in Table 2, where: “Median annual return” = (Median end balance / Initial amount)^(1/30)-1. This gives the median annual rate of return during retirement after inflation and withdrawals at the selected withdrawal rate, the selected volatility, and the rate of return required to reduce risk to 1%. Consider, for example, a portfolio with 15% volatility – similar to the historical volatility of the S&P 500 index. Suppose inflation remains near zero. Table 2 shows that a retiree would need an average annual return of 12% in this portfolio for an acceptable risk of going broke. If the portfolio in fact delivers this 12% return, year after year, then the investor will benefit from a median return after withdrawals of 9%, and the original investment of $1M will rise to a median legacy of $13M at the end of retirement. While this median performance seems more than adequate, remember that there remains a 1% chance of leaving no legacy at all. Each row in Table 2 represents a hypothetical portfolio. Each portfolio has the same 1% risk of going broke, but the portfolios with higher volatility require higher annual returns to reduce risk to that level, and as a consequence, investors benefit from higher median annual returns, and their heirs should benefit from greater legacies. An investor who chooses a higher-volatility portfolio at the same level of risk should expect to experience a jumpier account balance and to leave a greater legacy. Effect of inflation Chart 1, graphed from Table 2, shows how annual return required for 99% success probability increases with volatility. A portfolio with annual return on or above the line has acceptable risk. The lines in Chart 1 can be considered “lines of equal risk,” or in this case, “lines of 1% risk.” The difference between the two lines in Chart 1 is close to the mean historical inflation rate (4.18%). Over the range studied here, the annual return required for 99% success probability can reasonably be estimated as the zero-inflation annual return (lower line in Chart 1), plus the expected inflation rate. For simplicity, the remainder of this article assumes zero inflation, which is close to the situation today. Chart 2, also graphed from Table 2, shows how median annual return (and therefore the investor’s legacy) also increases with volatility. As explained above, each row in Table 2 gives returns for a different volatility, but all rows have the same 1% risk. Similarly, all points on the same line in Chart 2 have the same 1% risk. For these curves, annual return was selected to reduce the worst-case risk to 1% at a given volatility and withdrawal rate. Chart 2 shows that for two portfolios with equal risk, an investor leaves a larger legacy by selecting the portfolio with higher volatility, provided that it delivers the required higher return. Chart 2 also shows, like Chart 1, that the difference between the two curves is close to the mean historical inflation rate (4.18%). Over the range studied here, the median annual return with inflation can reasonably be estimated as the zero-inflation median annual return (lower line in Chart 2), plus the expected inflation rate. Required pre-tax return Until now, the analysis has not considered the effect of taxes. The required return as a function of volatility in Chart 1 must apply to after-tax returns and volatilities, because those are what affect the balance in the retiree’s account. This begs a question, what are the corresponding pre-tax volatilities and returns? Define “Rtn” as the required annual after-tax return for a given after-tax volatility (“Vol”), that is, the annual return required for 99% probability for reaching the end of a 30-year retirement, making 3% annual withdrawals, and assuming zero inflation. At a marginal tax rate “Tax,” the after-tax return: Rtn = (1-Tax)*PreRtn, where PreRtn is the pre-tax return (Equation 1). The after-tax volatility is reduced by the same ratio: Vol = (1-Tax)*PreVol, where PreVol is the pre-tax volatility (Equation 2). Equation 2 holds true for volatility because volatility is a standard deviation (“σ”), and for a random variable X and a constant m: σ(m*X) = m*σ(X). For example, at a tax rate of Tax = 50%, for a portfolio to provide an after-tax volatility of Vol = 15% and an after-tax return of Rtn = 12%, it must have a pre-tax return of PreRtn = Rtn/(1-Tax) = 24%, but it can have a pre-tax volatility as high as PreVol = Vol/(1-Tax) = 30%. Table 3 and Chart 3 show after-tax and pre-tax (volatility, return) pairs for 1% risk. The after-tax volatilities and returns come from Table 2, and the pre-tax volatilities and returns come from applying the simple equations in the preceding paragraph to the after-tax figures. Table 3 and Chart 3 provide pre-tax figures for 50% and 25% marginal tax rates: For example, in Chart 3, portfolio “K” has 45% after-tax volatility, which, from Chart 1, requires 67% after-tax return for 1% risk. With 25% tax, this corresponds to pre-tax volatility of 60% and pre-tax return of 89%. With 50% tax, this corresponds to pre-tax volatility of 90% and pre-tax return of 133%. Back-test results are pre-tax. By the way, these stratospheric volatilities and back-test returns are included here for exceptional strategies, such as those trading derivatives of derivatives (XIV and VXX). Charts 3b and 3c show an expanded view of more usual volatilities and returns. Consequently, Charts 3, 3b, and 3c provide an investor with a way to qualify a portfolio for retirement – it must fall above the line in these charts that corresponds to investors’ marginal tax bracket. If an investor used the lines in the previous article (which were after-tax lines) to qualify a portfolio based on back-tested volatility and return (which are pre-tax figures), this would have been too stringent a qualification test. In effect, the investor would have required a return above the green line in Chart 3, when a return above the yellow or red line would have sufficed. To take inflation into account, the investor needs to shift the curves in Chart 3, 3b, or 3c upward by the expected inflation rate. Chart 3b shows an expanded view of the low-volatility part of Chart 3: Chart 3c shows an expanded view of the midrange of Chart 3: Charts 3, 3b, and 3c show that at a given back-test volatility – which is a pre-tax volatility – the required back-test return – which is a pre-tax return – is lower for a higher tax rate. This non-intuitive result occurs because taxes not only reduce returns, but also reduce volatility. When an investor does poorly, so does the tax collector. Effectively, the tax collector shares the investor’s risk along with the investor’s returns. This analysis has other interesting (and perhaps non-intuitive) consequences: Consider a strategy with back-tested (pre-tax) average annual return of 25% and volatility of 40%. Row F in Table 3 shows that this has acceptable risk for an investor in the 50% tax bracket, but row H in Table 3 shows that it is too risky for an investor in the 25% tax bracket. This investor needs the tax collector to share more of the risk. Now, consider a strategy with a back-tested (pre-tax) average annual return of 20% and volatility of 40%. Rows F and H in Table 3 show that this is too risky for an investor in either tax bracket. However, if that investor keeps 25% of the retirement account in that portfolio and 75% in cash at zero return and zero volatility, the account would have a pre-tax return of 25% * 20% = 5% and a pre-tax volatility of 25% * 40% = 10%. Rows B and C in Table 3 show that this is enough return at this volatility to reduce risk to an acceptable value for an investor in either tax bracket. Discussion and conclusion Investors could use this method to qualify portfolios for retirement investments, based on back-tested returns and volatilities, and taking taxes and inflation into account. The method extends to cover unusually volatile portfolios: even those with 50% volatility can provide acceptable risk after taxes and inflation, provided they maintain acceptable returns. This opens a door toward including non-traditional portfolios – such as those trading VXX and XIV – in a prudent retiree’s account. This method is subject to the classical limitation of back-tests: they do not consistently predict future results. Most investors will want to maintain a mix of qualified portfolios, including a traditional core. Acknowledgement: The author thanks Dr. Toma Hentea for reviewing and clarifying the article. Appendix: Alternative calculations with a pseudo-Sharpe ratio Although Charts 3, 3b, and 3c provide enough information to make a go/no-go decision about investing in a portfolio, there is another method for looking at the data. Both methods reach the same decision in the same situation. For the second method, portfolio back-tests provide not only (volatility, return) pairs, but they also provide a ratio of annualized return to annualized volatility. This is similar to a Sharpe ratio, except it assumes a risk-free return of zero (close to the situation today). Table 4 and Chart 4 show the required return/volatility for 1% risk, using the data from Table 3. Chart 4 shows that the required return/volatility ratio (“pseudo-Sharpe ratio”) for 1% risk increases with volatility over the range studied. It also shows that the pseudo-Sharpe ratio required for a given portfolio (“A” through “L”) does not change with the investor’s tax situation. This follows directly from equations 1 and 2, because volatility and required return change by the same proportion when changing tax situations. Like Chart 3, Chart 4 provides an investor with a method to qualify a portfolio – its pseudo-Sharpe ratio must fall above the curve in Chart 4 for that investor’s marginal tax bracket. Chart 4b provides an expanded view of the lower-volatility part of Chart 4: Charts 4 and 4b show that at a given back-test volatility, the required back-test pseudo-Sharpe ratio for 1% risk is lower for a higher tax rate. As in Charts 3, 3b, and 3c, this occurs because the tax collector shares the investor’s risk along with the investor’s returns.

Best And Worst Performing ETFs Of September

September is historically considered as the scariest month for the stock market and this year particularly proved it to be true. A calculation carried out by moneychimp.com in the year range 1950 to 2014 revealed that September ended up offering negative returns in 36 years and positive returns in 29 years, leading to an average return of -0.65%. Thanks to the persistent China-led slowdown, a new climate of uncertainty triggered by Fed’s “no lift-off” announcement, outburst of the bizarre Volkswagen ( OTCQX:VLKAY ) scandal, tumbling commodity prices and the huge sell-off in biotech stocks, September was a witness to a lot of turbulence (read: 3 Hit and Flop Zones of Q3 and Their ETFs ). Both the major U.S. benchmarks – S&P 500 and the Dow Jones Industrial Average – continued its correction during the month. The S&P 500 lost 2.6% while the DJIA shed 1.5%. Let’s take a look at the three best and worst performing ETFs of this chaotic month (read: Top ETF Stories of September ). Top Performers iPath Dow Jones-UBS Sugar Total Return Sub-Index ETN (NYSEARCA: SGG ) – Up 12.61% Sugar prices recovered 15% at the end of September after hitting its seven-year low in August. The upsurge was driven by appreciation of the Brazilian Real against the U.S. dollar and the country’s decision to hike fuel prices. Sugar is greenback-priced in Brazil, the largest producer of the agricultural commodity in the world. Therefore, a stronger dollar encourages more sugar exports from the country, dampening its prices. As a result, SGG became the top performer of the month. SGG tracks the Dow Jones-UBS Sugar Subindex Total Return Index, which provides the returns that are in an investment in the futures contracts on the commodity of sugar. The note has garnered nearly $53 million in assets and trades in a daily volume of 48,000 shares. It charges 75 bps in fees and has a Zacks ETF Rank #3 (Hold) with a High risk outlook. iPath Dow Jones-UBS Tin Total Return Sub-Index ETN (NYSEARCA: JJT ) – Up 11.87% Tin was one exception among the commodities experiencing a bullish trend in prices amid fears of supply shortage. Solder used in electronics accounts for about half of the global demand for tin. In the past one month, tin prices rose 5.8% . Indonesia, the world’s largest tin exporter, imposed restrictions on tin exports in order to curb illegal mining. The country has mandated that all tins going out of the country must come from government-certified mines. Further, tin output from Myanmar, the new entrant in the tin market, has been declining due to falling ore grades. These took the ETN to new heights. JJT tracks the Dow Jones-UBS Tin Subindex Total Return index, consisting of one futures contract on tin. However, the note has not yet received enough attention gathering only $2 million in assets and trading in a paltry volume of roughly 300 shares per day. It charges 75 bps in fees and has a Zacks ETF Rank #4 (Sell) with a High risk outlook. ETFS Physical Palladium Shares ETF (NYSEARCA: PALL ) – Up 8.51% Palladium is another metal that is witnessing rising prices. It is actually a surprise gainer from the Volkswagen scandal, which has turned consumers away from diesel-engine vehicles toward gasoline-engine vehicles, where the precious metal is used in catalytic converters. Palladium prices rose 14.8% last month. As a result, this ETF was a top performing candidate in the month. The ETF tracks the spot price of palladium bullion and amassed roughly $223 million in assets. This fund charges 60 bps in fees and trades in an average volume of 34,000 shares. It has a Zacks ETF Rank #3 with a High risk outlook. Worst Performers AccuShares Spot CBOE VIX Up Shares ETF (NASDAQ: VXUP ) – Down 58.85% The presence of this volatility ETF among the worst performers is surprising when this asset class have been investors’ darling during the third quarter as they tend to outperform when markets are falling or fear levels over the future are high. VXUP offer direct “spot” exposure to the CBOE Volatility Index or ‘VIX’, also known as fear gauge and the best representative of volatility in the stock market. It is constructed using the implied volatilities of a wide range of S&P 500 index options. VIX was indeed down 13.8% in the last month, pointing to investors’ belief that market may not reach its bottom in the near term. This few-months old fund has market capitalization of $1.1 million and trades in an average volume of a meager 5,000 shares. It charges 95 bps in fees. Barclays Return on Disability ETN (NYSEARCA: RODI ) – Down 36.45% RODI is a thinly traded ETN, which exchanges only 50 shares in hand per day. Thinly traded assets are considered very risky due to its illiquidity and are not a proper choice of investors at turbulent times. This note seeks to track the performance of the Return on Disability US Large Cap ETN Total Return USD Index which zeroes in on companies that have very favorable policies towards the disabled, both as customers and workers. It charges 45 bps in fees and has a market capitalization of $26.8 million. InfraCap MLP ETF (NYSEARCA: AMZA ) – Down 22.06% Units of energy-based master limited partnerships or MLPs are trading in the south due to the continued slide in crude oil price. AMZA seeks total return through investments in equity securities of publicly-traded MLPs and limited liability companies taxed as partnerships. AMZA is highly exposed to MLPs engaged in the midstream oil and gas sector, which has been experiencing huge sell-off. This made the ETF one of the worst performing candidates in September. The fund has garnered only $16 million in assets and trades in an average volume of 22,000 shares. It charges a hefty 270 bps in fees. Link to the original article on Zacks.com