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					RESEARCH Low Volatility Strategies August 2014 Wes Crill In recent decades, low volatility stocks have enjoyed the benefit of market-like returns. RESEARCH However, investors should take caution before extrapolating this performance into the Associate Wes earned his BS and PhD in materials science engineering from North Carolina State University. future. The historical average returns of stocks with low volatility are well-explained by known drivers of returns. INTRODUCTION A variety of solutions have been designed for investors that wish to reduce volatility risk in the equity portion of their investments. They include minimum variance, inverse volatility weighting, and low market beta portfolios. Though differing in name and construction, one common theme linking many of these strategies is a focus on stocks with low past volatility. The back-tested performance of low volatility strategies has been particularly appealing in the past 40 years, reducing volatility relative to the market without any sacrifice in returns. However, low volatility stocks underperformed the market in earlier periods. This paper shows that wellknown drivers of expected returns can explain the performance in both periods. Low volatility stocks tend to have low market betas, or low covariances with the market. All else being equal, this implies lower-than-market expected returns. Only in recent decades has this been offset with exposure toward value, which allowed low volatility stocks to achieve marketlike returns. Without a systematic focus on the size, relative price, and profitability dimensions of expected stock returns, it is not clear investors should expect that low volatility portfolios will have expected returns similar to the market. The material in this publication is provided solely as background information for registered investment advisors and institutional investors and is not intended for public use. DIMENSIONAL FUND ADVISORS 2 LOWERING EXPECTED VOLATILITY Expected future volatility is unobservable, but past volatility or past market betas are often used to identify stocks with low expected volatility. Both metrics provide similar results, since stocks with low market betas tend to have low volatility and vice versa. For example, Exhibit 1 shows that on average over 70% of low market beta stocks are among the two least volatile quintiles. Exhibit 1 OVERLAP BETWEEN VOLATILITY AND MARKET BETA 1928–2013 Exhibit 2 MARKET BETA AND VOLATILITY Market Beta Rank VOLATILITY RANK Vol 4 Exhibit 2.1 compares market betas and volatilities for the quintile portfolios formed from sorting on past market beta. The lowest quintile’s market beta of 0.63 is distinctively low for an equity portfolio. The low market exposure was accompanied by a monthly return volatility that was 1.5 percentage points lower than the market portfolio’s volatility of 5.4%. Conversely, the high market beta portfolio amplified market exposure with a market beta of 1.43, incurring a monthly volatility that was 2.7 percentage points higher than the market. Low Vol Vol 2 Vol 3 High Vol Low β 52% 19% 12% 9% 8% β2 30% 32% 18% 12% 8% β3 12% 29% 30% 18% 10% β4 4% 17% 29% 33% 17% High β 1% 3% 11% 29% 57% Daily stock market betas are estimated using daily returns for one year. Returns are regressed on the daily market portfolio’s return with five lags, and the market beta is the sum of the current and lagged slope coefficients. Stock volatility is measured using standard deviation of daily returns for the same year as the market beta estimation. Each December, stocks are ranked on market beta or volatility for that year to form quintiles, each containing 20% of the market. Included in this ranking are all common stocks from the NYSE, AMEX, and NASDAQ exchanges that possess at least 200 return observations in the ranking period. The percentage of capitalization by volatility rank is measured for each market beta quintile, and the exhibit reports the time series averages of these percentages. Stock data and daily market portfolio from CRSP. Past performance is no guarantee of future results. 1928–2013 Exhibit 2.1: Portfolios Formed on Market Beta MARKET BETA RANKING Low β β2 β3 β4 High β Market β 0.63 0.79 0.98 1.12 1.43 1.00 Volatility (%) 3.9 4.6 5.5 6.2 8.1 5.4 Market Exhibit 2.2: Portfolios Formed on Volatility VOLATILITY RANKING Low Vol Vol 2 Vol 3 Vol 4 Market β 0.61 0.82 0.97 1.15 High Vol Market 1.42 1.00 Volatility (%) 3.8 4.8 5.4 6.3 8.1 5.4 At the end of each year, stocks are sorted on daily return volatility or daily market beta to form quintiles each containing 20% of the market. Capitalization-weighted average monthly returns are computed for the portfolios. The tables report post-formation monthly market betas and return volatility for the market beta-sorted portfolios in Exhibit 2.1 and the volatility sorted portfolios in Exhibit 2.2. Market returns provided by Ken French. Filters were applied to data retroactively and with the benefit of hindsight. DIMENSIONAL FUND ADVISORS 3 A similar comparison, using past return volatility to form quintiles, is presented in Exhibit 2.2. Comparing the two exhibits, post-formation market beta and return volatility are nearly identical for the low quintile of both sorts and increase monotonically from low to high. Given the overlap between the market beta and volatility quintiles and the similarity of the results in Exhibit 2, the remainder of this paper uses low market beta as a generalization for low volatility strategies.1 Exhibit 3 PERSISTENCE OF LOW MARKET BETA 1928–2013 Percent of Low Market Beta Quintile in Year t 60 50 40 30 20 10 0 Low 2 3 4 High Market Beta Rank in Year t+1 At the end of each year, stocks are sorted on market beta to form quintiles, each containing 20% of the market. The chart illustrates where stocks from the current low market beta quintile tend to rank the following year. The bars are the average percentage of previous low market beta quintiles’ capitalization by the subsequent ranking. Percentages do not sum to 100 due to firms that delist between rank periods. Filters were applied to data retroactively and with the benefit of hindsight. Past market betas can be used as a proxy for future volatility because market beta rankings are a persistent characteristic, as shown in Exhibit 3. On average, about 75% of the stocks in the lowest market beta quintile remain in the lowest two quintiles the following year. Rankings on return volatility (not shown) are even more persistent, with almost 90% remaining in the lowest two quintiles. This suggests that if a stock has low market beta or volatility relative to other stocks today, this is likely to remain the case in the future. UNDERSTANDING MARKET BETA AND RETURNS Market exposure is an important determinant of expected return. Under the CAPM assumptions, stocks with low (high) market betas earn less (more) equity premium and, all else being equal, should have lower (higher) expected return than the market. Thus, it may be surprising that sorting stocks on market beta produced very little spread in average returns from 1928 to 2013. Exhibit 4 shows that average returns on high and low market beta portfolios only differed from the market by about 10 basis points per month. Breaking the sample into sub-periods reveals differences in these return comparisons. Prior to 1970, the low market beta portfolio return was 22 basis points per month less than the market and 43 basis points lower than that for the high market beta portfolio, although neither difference is statistically reliable. However, in the more recent sub-period, average returns for high and low market beta were essentially the same, each within two basis points of the market. The disparity between the recent flat market beta/return relation and the steeper relation witnessed in the earlier period can be understood through four-factor regressions of the portfolio returns. The regression intercepts (alphas) in Exhibit 5 are within 1.6 standard errors of zero for both low and high market beta across the entire sample. Hence, the returns from our sort on market beta are well-explained by the market, size, value, and momentum factors. Exhibit 4 AVERAGE RETURN FOR MARKET BETA PORTFOLIOS HIGH β MINUS LOW β MARKET MINUS LOW β Low β High β Market Return 1928−2013 0.82 1.01 0.91 0.19 1928−1969 0.67 1.10 0.89 0.43 1.60 0.22 1.71 1970−2013 0.96 0.92 0.94 -0.04 -0.16 -0.02 -0.15 t-Stat 1.05 Return 0.10 t-Stat 1.15 Capitalization-weighted average returns are computed for the low and high market beta portfolios and compared to the market portfolio. Time-series averages of the returns are reported in percent for the full sample and two sub-periods. Filters were applied to data retroactively and with the benefit of hindsight. Returns are not representative actual strategies and do not reflect costs and fees associated with an actual investment. Actual returns may be lower. 1. Other low volatility strategies were studied, including inverse volatility weighted portfolios and low volatility portfolios formed by sorting on idiosyncratic volatility and market beta estimated over varying horizons. The results reported here are robust to these alternative specifications of volatility. DIMENSIONAL FUND ADVISORS 4 Exhibit 5 FOUR-FACTOR REGRESSIONS OF MARKET BETA PORTFOLIOS Alpha t-Stat Mkt–Rf SMB HML UMD Low Market Beta 1928−2013 0.09% 1.60 0.65 -0.10 0.07 0.03 1928−1969 0.04% 0.53 0.67 0.00 -0.08 0.03 1970−2013 0.06% 0.79 0.72 -0.13 0.28 0.02 1928−2013 -0.11% -1.58 1.35 0.28 -0.04 -0.10 1928−1969 -0.12% -1.45 1.31 0.13 0.23 -0.05 1970−2013 -0.02% -0.17 1.28 0.33 -0.33 -0.12 High Market Beta The monthly returns for the low and high market beta portfolios are regressed on market (Mkt-Rf), size (SMB), value (HML), and momentum (UMD) factors. Alphas and slope coefficients for the independent variables are reported for the three time periods. Factor returns provided by Ken French. Filters were applied to data retroactively and with the benefit of hindsight. The factor loadings uncover the driving force behind low market beta’s recent market-like returns. In the post-1970 period, the low market beta portfolio had a pronounced value tilt. Thus, despite the low market exposure, low market beta returns were not lower than the market. In contrast, the low market beta portfolio had a growth tilt for the first half of the sample which, combined with the low market exposure, resulted in lower-than-market average returns. Exhibit 5 also provides some context to the recent underperformance of high market beta relative to low market beta. Over the past 44 years, the high market beta portfolio had a positive size factor loading and a negative value factor loading, implying a small cap growth tilt. The four-factor intercept for small cap growth stocks2 was -17 basis points per month over this period, so small growth underperformance likely detracted from the returns for high market beta stocks in the recent sub-period. High market beta portfolios have also loaded negatively on the momentum factor, contributing an additional drain on returns. The performance of the high market beta portfolio can thus be attributed to exposures to the four factors along with the poor returns of small cap growth securities. To further illustrate the role that exposure to low relative price stocks plays in the relative returns of the low and high market beta portfolios, two switching strategies were constructed. Strategy 1 is a low price-to-book strategy. If, at the beginning of the year, the price-to-book ratio of the low market beta quintile is less than the price-to-book ratio of the high market beta quintile, the low price-to-book strategy invests in the low market beta quintile for that year. Otherwise, it invests in the high market beta quintile. Strategy 2 is a high price-to-book strategy and is the complement of strategy 1. Exhibit 6 shows the result of this experiment. From 1928 to 2013, the low price-to-book strategy invested in the low market beta quintile during 52 of the 86 years in the sample (about 60% of the time). The average monthly return was 1.14%. The average return of the high price-to-book strategy was 0.68%. The volatilities of the low and high price-tobook strategies were similar. The t-statistic of the difference in average returns between the strategies is 2.61, implying this return difference is reliably different from zero. This is in contrast to the return difference between the low and high market beta quintiles, which is not reliably different from zero. Exhibit 6 MARKET BETA PORTFOLIOS WITH BOOK-TO-MARKET CONTROLS 1928–2013 Low Market Beta High Market Beta Switching Strategy 1: Low Priceto-Book Switching Strategy 2: High Priceto-Book Monthly Return 0.82 1.01 1.14 0.68 High minus Low — 0.19 — 0.47 t(High minus Low) — 1.05 — 2.61 3.88 8.12 6.75 5.95 — — 52 (60%) 34 (40%) Standard Deviation Years in Low Market Beta Two switching strategies are formed. The low price-to-book strategy invests in the low market beta quintile when its median price-to-book ratio is less than the median price-to-book ratio of the high market beta quintile and invests in high market beta otherwise. The high price-to-book strategy is the complement of this; it invests in the low market beta quintile when its median price-to-book ratio is greater than the median price-tobook ratio of the high market beta quintile and invests in the high market beta quintile otherwise. Average monthly returns, monthly volatility, and portion of years invested in low market beta are reported for these strategies and the high and low market beta quintiles. The average monthly differences between high and low market beta and the high and low price-to-book switching strategies are reported with accompanying t-statistics. Returns and volatilities are shown in percent. Filters were applied to data retroactively and with the benefit of hindsight. Returns are not representative actual strategies and do not reflect costs and fees associated with an actual investment. Actual returns may be lower. 2. P erformance for small-cap growth stocks computed using returns on the Fama/French Small Growth Index. See Appendix for index descriptions. Indices are not available for direct investment. DIMENSIONAL FUND ADVISORS 5 This simple experiment demonstrates the importance of the low and high market beta quintiles’ exposure to low relative price stocks and their subsequent relative performance. The quintile with greater exposure to low relative price stocks tended to outperform over the subsequent year. For example, in years when the low market beta quintile had lower exposure to low relative price stocks than the high market beta quintile, the average monthly return was 0.75% versus 1.57% for the high market beta quintile. What’s the lesson? Controlling for relative price is important when informing expectations about differences in expected returns between low and high market beta stocks. betas than higher priced stocks. The shaded regions in Exhibit 7 indicate periods when large value had the lowest market betas within large caps. It is apparent that the tendency for value to have low market beta is a recent phenomenon occurring predominantly in two stretches, throughout the 1980s and from the mid-1990s through the early 2000s. WHERE IS THE LOW MARKET BETA ANOMALY? To serve as the foundation of an investment strategy, an empirical observation should lead to well diversified and cost-effective portfolios. If the observation is driven by a small group of tiny stocks, it may be difficult to construct a well-diversified portfolio that benefits from the observation. If portfolio turnover must be high to capture the benefits, there may be little advantage to investors after implementation costs. ARE VALUE AND LOW MARKET BETA SYNONYMOUS? Investors are naturally drawn to the return/volatility tradeoff achieved by low market beta over the past few decades, but can this performance be expected in the future? The sub-period regression analysis shows that portfolios focused on low market beta stocks have had inconsistent value exposure. The reverse is also true. Low relative price stocks do not consistently have lower market The results presented above are for quintiles of aggregate market cap that are annually rebalanced and market cap weighted. Each quintile includes 20% of US market capitalization and is well-diversified—the quintiles contain Exhibit 7 MARKET BETAS FOR LARGE CAP STYLE INDICES 1928–2013 Fama/French Large Growth Fama/French Large Neutral Fama/French Large Value 1-Year Rolling Market Beta 2.0 1.5 1.0 0.5 0.0 1927 1934 1941 1948 1955 1962 1969 1976 1983 1990 1997 2004 2011 One-year rolling market betas are estimated monthly using daily returns for the past year. The dependent variables in the regressions are daily returns for the three Fama/French large-cap indices. The independent variable is the daily return on the CRSP Value-Weighted Market Index with five lags. Shaded area indicates when large value has the lowest market beta. Filters were applied to data retroactively and with the benefit of hindsight. Index data use for analysis. See Appendix for index descriptions. Indices are not available for direct investment. DIMENSIONAL FUND ADVISORS more than 300 stocks on average.3 Weighting by market cap prevents tiny stocks from dominating the returns, making the results relevant to real-world implementation. Due to the annual rebalance frequency, turnover averages approximately 50%. The historical returns of stocks sorted on market beta using this reasonable framework are well explained by known drivers of returns. It is common for researchers to analyze characteristics of portfolios that weight stocks equally or in proportion to their ranking. These tend to produce extreme outcomes and can magnify the effect being investigated. For example, in a 100-stock portfolio, the top 10% of securities by rank weight will represent about 19% of total weight, regardless of their market caps. Frequent rebalancing can also boost the magnitude of an “anomaly.” Trading costs, however, can reduce the returns actually delivered to investors. Simulated returns that require a portfolio to be turned over several times per year can be difficult to capture on an after-cost basis. If we repeat the exercise above but weight stocks proportionally to their rank on market beta in each quintile and rebalance monthly, the outcomes for the low market beta quintile change substantially. The top 10% of stocks in quintile market beta ranking (by name count) comprise just 2.5% of market capitalization on average but account for 18.7% of rank weights. Exhibit 8 indicates rank-weighting over-weights tiny stocks within the low market beta quintile; the weighted average firm market cap is under $5 billion, compared to over $180 billion when capitalization weights are employed. Exhibit 9 reports the performance of the low market beta quintile with the rank weights. In contrast to the market cap weighted low market beta portfolio, which has had returns similar to the market, the rank-weighted quintile has generated an average return of 35 basis points per month in excess of the market (over 4% per year). The four-factor intercept for the portfolio is 41 basis points 6 Exhibit 8 SIZE CHARACTERISTICS OF LOW MARKET BETA PORTFOLIO 1928–2013 Weighted Average Market Cap Cap-Weighted Portfolio Rank-Weighted Portfolio 183,714 4,971 Each month, stocks are sorted on market beta, and a low market beta portfolio is constructed from the lowest quintile of market cap. The table reports the time series average of the portfolio’s weighted average market cap, where stocks are weighted in proportion to market capitalization (cap-weighted) and rank on market beta (rank-weighted.)4 Market caps are shown in USD millions. per month, indicating that controlling for the four factors does not completely explain the rank-weighted low market beta outperformance. Aside from the extreme security weights produced by a rank weighting scheme, the final column of Exhibit 9 reveals an additional flaw of this methodology combined with monthly rebalancing. The average annualized turnover of 234% is high and would incur large transaction costs that would likely inhibit the ability of investors to capture any abnormal returns. Thus, while one can find a “low market beta anomaly” using an extreme weighting and rebalancing scheme, the observation may not be useful for a practical portfolio. Exhibit 9 PERFORMANCE OF RANK-WEIGHTED LOW MARKET BETA PORTFOLIO 1928–2013 Low Market Beta – Market # Stocks Return 1928− 2013 857 1.26 Return 0.35 t-stat 2.99 Four-Factor Model Alpha t-stat Turnover 0.41 5.09 234.1 Time series average monthly return for rank-weighted low market beta and the average return in excess of the market are reported in percent. Alpha is the intercept in percent from a regression of the rank-weighted low market beta portfolio returns on market (Mkt-Rf), size (SMB), value (HML), and momentum (UMD) factors. Turnover is in percent, annualized. Filters were applied to data retroactively and with the benefit of hindsight. Returns are not representative actual strategies and do not reflect costs and fees associated with an actual investment. Actual returns may be lower. 3. These quintiles are diversified with respect to aggregate market cap and stock count, but not industry; sorting on market beta has tended to produce portfolios with substantial industry under- and over-weights in the extreme quintiles relative to the market portfolio. Sorting stocks by industry to form sector-neutral market beta portfolios reduced the spread in volatility between high market beta and low market beta by about 35%. 4. Formula for the market beta rank weight of stock i in an N-stock quintile: DIMENSIONAL FUND ADVISORS IMPLICATIONS FOR INVESTORS Focusing on low volatility or low market beta stocks is one way of reducing volatility in an equity portfolio. In recent decades, low market beta portfolios have enjoyed the additional benefit of market-like returns. However, investors should take caution before extrapolating this performance into the future. Low market beta stocks received a return boost due to a value tilt over the past few decades. The historical average returns to low market beta stocks are well-explained by known drivers of returns. It is not obvious that stocks sorted on past market beta alone should be expected to consistently deliver the value premium. If low market beta stocks are not expected to enjoy the value premium (or other premiums associated with known dimensions of expected returns), portfolios targeting low market beta stocks should generally have lower expected returns than the market portfolio. APPENDIX Index Descriptions Fama/French Small Growth Index Provided by Fama/French from CRSP (Center for Research in Security Prices, University of Chicago) securities data. Includes the lower-half range in market cap and the lower 30% in book-to-market of NYSE securities (plus NYSE Amex equivalents since July 1962 and Nasdaq equivalents since 1973). Exclusions: ADRs, investment companies, tracking stocks, non-US incorporated companies, closedend funds, certificates, shares of beneficial interests, and negative book values. 7 Fama/French Large Growth Index Provided by Fama/French from CRSP (Center for Research in Security Prices, University of Chicago) securities data. Includes the upper-half range in market cap and the lower 30% in book-to-market of NYSE securities (plus NYSE Amex equivalents since July 1962 and Nasdaq equivalents since 1973). Exclusions: ADRs, investment companies, tracking stocks, non-US incorporated companies, closedend funds, certificates, shares of beneficial interests, and negative book values. Fama/French Large Neutral Index Provided by Fama/French from CRSP (Center for Research in Security Prices, University of Chicago) securities data. Includes the upper-half range in market cap and the middle 40% in book-to-market of NYSE securities (plus NYSE Amex equivalents since July 1962 and Nasdaq equivalents since 1973). Exclusions: ADRs, Investment Companies, Tracking Stocks, non-US incorporated companies, Closedend funds, Certificates, Shares of Beneficial Interests, and negative book values. Fama/French Large Value Index Provided by Fama/French from CRSP (Center for Research in Security Prices, University of Chicago) securities data. Includes the upper-half range in market cap and the upper 30% in book-to-market of NYSE securities (plus NYSE Amex equivalents since July 1962 and Nasdaq equivalents since 1973). Exclusions: ADRs, investment companies, tracking stocks, non-US incorporated companies, closedend funds, certificates, shares of beneficial interests, and negative book values. This information is provided for registered investment advisors and institutional investors and is not intended for public use. Past performance is no guarantee of future results. There is no guarantee strategies will be successful. Eugene Fama and Ken French are members of the Board of Directors for and provide consulting services to Dimensional Fund Advisors LP. All expressions of opinion are subject to change without notice in reaction to shifting market conditions. International investing involves special risks such as currency fluctuation and political instability. Investing in emerging markets may accentuate these risks. Diversification does not protect against loss in declining markets. This article is distributed for informational purposes, and it is not to be construed as an offer, solicitation, recommendation, or endorsement of any particular security, products, or services. Dimensional Fund Advisors LP is an investment advisor registered with the Securities and Exchange Commission. 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