17-02-2022 | Research

Research shows that beta forecasts are improved by shrinking correlations more than relative volatilities. In turn, these superior estimates can be used in low-risk portfolios to enhance their risk-return outcomes.

- Accuracy of beta forecasts can be improved by shrinking correlations more than volatilities
- Asymmetric beta shrinkage results in portfolios with lower risk and higher alpha
- But sorting stocks on volatility and beta is a simpler alternative, with similar results

In the capital asset pricing model (CAPM), beta is used to describe how the returns of a particular stock (or portfolio) are related to those of the market. It is defined as the correlation between a specific stock (or portfolio) and the market, multiplied by the relative volatility of the stock (or portfolio) versus the market.

Beta is, however, an unobserved characteristic that needs to be estimated. Thus, finding the best way to forecast the beta of securities is an important consideration for academics and practitioners. But more importantly, dealing with the accompanying estimation error is a crucial step in the process. Robeco researchers tackled these issues in an academic paper^{1} that focused on beta estimations using shrinkage techniques, by looking at the US stock market from January 1963 to December 2017.

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For the study, the authors assumed that correlations and relative volatilities are independent of each other, such that beta expectations are equal to the product of these two estimated components. To examine which approach best forecasts beta, they analyzed a range of methods, from those that shrink the beta in its entirety, to others that reduce estimation errors in correlations and relative volatilities to their cross-sectional averages separately.

To investigate the effect of implementing shrinkage on correlations and relative volatilities, they looked at the resulting mean squared errors (MSE) of the beta estimates when correlations and relative volatilities were shrunk at different levels. This ranged from a shrinkage factor of 0 to 1 for both parameters.

The analysis confirmed that the largest estimation error – or highest MSE – occurred when no shrinkage was implemented. Meanwhile, a two-parameter approach – that reduced correlations (0.5 shrinkage factor) more than relative volatilities (0.2 shrinkage factor) – produced the best outcome (or lowest MSE). Moreover, one-parameter settings generally delivered suboptimal results.

The researchers also scrutinized stocks that had the most dissimilar beta predictions when the no shrinkage and two-parameter shrinkage approaches were applied. This comparison was also made between the related estimates of the one-parameter shrinkage and two-parameter shrinkage settings. Thereafter, the stocks were ranked on the differences in beta forecasts between these methods and allocated to 10-decile portfolios. The average ex-ante beta estimates for these portfolios were then compared with their realized betas over the full sample period.

The results revealed that the two-parameter shrinkage method had lower forecasting errors than the other two approaches. Indeed, Figure 1 shows the ex-post absolute beta forecast error for both the no shrinkage and two-parameter shrinkage settings for each of the 10-decile portfolios, while the horizontal axis reflects the differences in ex-ante average beta estimates between the two methods.

The authors also assessed whether these improved ex-ante beta estimates at the individual stock level led to lower ex-post portfolio betas. They ranked stocks on their historical beta estimates and allocated them to 10-decile portfolios. The same exercise was performed using the two-parameter shrinkage beta forecasts. In addition, a long-short strategy based on a long position in the D1 portfolio (lowest beta estimates) and short position in D10 portfolio (highest beta estimates) was constructed.

Improved ex-ante beta estimates at the individual stock level led to lower ex-post portfolio betas

For the strategies based on historical beta estimates, the results showed that the D1 portfolio had an average excess return of 7.26%, volatility of 11.04%, Sharpe ratio of 0.66, and market beta of 0.45. On the other hand, the D10 portfolio also had an average return of 7.26%, but a volatility of 32.59%, Sharpe ratio of 0.22, and a market beta of 1.65. Meanwhile, the long-short portfolio exhibited an alpha of 10.14% relative to the CAPM.

For the strategies based on the two-parameter shrinkage beta estimates, the D1 portfolio had a lower ex-post beta (from 0.45 to 0.42) and a lower realized volatility (from 11.04% to 10.79%). In addition, the D10 portfolio had a higher volatility and a higher ex-post beta. This also indicates that risk can be better predicted on an overall portfolio level. Finally, the long-short portfolio delivered a CAPM alpha that was almost 2% higher (from 10.14% to 11.87%) and that was statistically significant.

In their paper, the researchers found that beta predictions were more accurate when correlations were shrunk more to their cross-sectional average than relative volatilities. For portfolio construction purposes, these results could be seen as a reason to allocate less weight to estimated correlations than forecasted relative volatilities. To assess this notion, the authors took a different approach and formed portfolios based on either two-parameter shrunk betas, volatility, or a combination of these two variables. This analysis gave them insight on the effect of including correlations alongside volatilities, thereby connecting the literature of low beta and
low volatility investing.

When different portfolio combinations based on shrunk beta estimates and volatilities were evaluated, the results revealed that including correlation significantly reduced the volatility of a low-risk portfolio. Therefore, this indicates that correlation is indeed an important element to consider within a low volatility portfolio.

However, sorting stocks into portfolios based on their conventional betas gives too much weight to the correlation, which is less accurately forecasted. This can be reduced, however, by shrinking correlations more to their cross-sectional average than volatilities, or by combining conventional betas with pure volatility estimates. This latter approach of equally combining beta and volatility is less complex because there is no need to estimate shrinkage parameters.

An equally weighted combination of unshrunk betas and volatility are most effective in reducing volatility

This concept is illustrated in Figure 2, which shows that the portfolios based only on conventional beta exhibit the highest realized volatility. Furthermore, it depicts that standalone volatility is a better predictor than standalone beta. Meanwhile, those that are based on two-parameter shrunk betas or use an equally weighted combination of unshrunk betas and volatility are most effective in reducing volatility.

All in all, the results from this research paper indicate that correlations can help enhance the risk-return outcomes of low-risk portfolios. But since they are less accurately estimated than volatilities, they should be handled with care.

^{1} Blitz, D., Swinkels, L., Ūsaitė, K., and Van Vliet, P., December 2021, “Shrinking beta”, SSRN working paper.

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