"Successful investing is about managing risk, not avoiding it." Benjamin Graham
The capital asset pricing model (“CAPM”) tells us that risk and return are directly related. Generally speaking, an investor must be willing to bear above-average risks in order to earn above-average returns. According to this theory, investors cannot expect to outperform the market, or generate alpha, on a risk-adjusted basis. Per CAPM, the only risk premium comes from the market itself, or beta.
Considerable evidence, however, shows that this relationship
does not hold. Other sources of equity risk premia (i.e., alpha factors) do
exist. Rosenberg et al. (1985), found a significant positive relationship
between average return and book-to-market ratios. Ross (1976) introduced the
Arbitrage Pricing Theory, which also demonstrates another anomaly of the Capital
Asset Pricing Model, and shows the expected return of a security to be a
function of several (macro) factors. Building on these observations, Fama and
French (1992) presented their well-known Three Factor model, showing that
expected returns are modeled as a linear function of characteristics that are
specific to firms: market risk premium, value premium and size premium.
All models have experienced rigorous empirical examination
regarding their ability to explain cross-sectional differences in expected
returns. Fama and Macbeth (1973) proposed a two-stage regression test that
estimates the premium awarded to a particular risk factor exposure by the
market. That is, how much return you would expect to receive for a beta
exposure to that factor. The first step estimates the beta’s of each asset or
portfolios’ return on the factors using time-series regressions:
Rn,t = an + bn,F1F1,t
+ bn,F2F2,t
+ … + bn,FmFm,t
+ en,t
Where Rt is
the excess return (over the risk-free rate) of portfolio n at time t, F is the
risk premium associated with the factor, b
is the sensitivity of excess returns to factor risk loadings with intercept
term an,
and en
represents the error terms.
The second stage uses the risk loading estimates as the
independent variable to estimate the cross-sectional regressions:
Ri,t = a0 + y1,tbi,F1
+ y2,tbi,F2
+ … + ym,tbi,Fm
+ er
Where Rt represents
the asset or portfolio returns, b is the risk loading
estimates and y is the
factor premia with intercept a0.
The asset pricing model is correct if the time-series average of a0
is not significantly different from zero and the factor loading
estimates are not significantly different from the average risk premium
associated with the corresponding risk factor. Further, if the model is
correct, we should expect that the risk loadings explain the cross-sectional
differences in expected returns.
The underlying idea is that if an asset pricing model is
perfect, then the intercept should not be significantly different from zero for
any asset or portfolio. The primary goal of this paper is to apply the two-step
Fama Macbeth procedure to the Fama and French Three-Factor Model using the Main
Research Low Volatility (“Proxy”) Index and to assess the results.
The rest of this paper is structured as follows. The first
section introduces the methodology. The second part discusses the results
obtained by applying the Fama Macbeth procedure. Finally, the last part
summarizes the main findings of the paper.
Methodology
Applying
Fundamental Indexation® methodology (Arnott et al,
2005), the data were collected
from the universe of public companies listed on the New York Stock Exchange
from 1983 through 2012. All companies were ranked by factor, and then the top
1000 companies were indexed by fundamental score. A composite index (“proxy”) comprised of each
factor index is examined.
The
proxy components are available on financial statements, domestically and
worldwide, including emerging markets. The sample was selected to cover the
past 25 years of market activity with
data from the Compustat database. Financial statement and stock price data are
from the Center
for Research in Security Price (CRSP)
database that is linked to corresponding Compustat entries by way of the Compustat/CRSP
Merged (CCM) database[1].
Data for the S&P 500 is also gathered from the CRSP database.
For benchmarking purposes, the S&P 500 annual returns[2]
are used. Company information was generated using annual data so the indices hoeld
until the next year, when more recent financial information is made available
for calculating the new index.
Statistical
Properties
Exhibit 1 shows the annual returns of the Main Research
Index and the S&P 500 between 1988-2012. Over the 25 years covered by
Exhibit 1, the proxy index has a compound annual return of 9.41%, with 4.89%
annualized volatility. The benchmark S&P 500 shows a compound return of
6.57% and volatility of 17.48%.
Exhibit 1: Annual Returns of Main Research Index and the
S&P 500
Source:
S&P 500 January Average data from Compustat/CRSP combined CCM
database
Exhibit 2 illustrates the relative
performance of the proxy and the S&P 500 including (1) the change in
volatility drag, (2) the total risk effect, and (3) the return/risk tradeoff.
Between the proxy and the S&P 500, the difference in geometric means is
2.83% annually. The difference in arithmetic means is 1.43% annually, while the
difference in volatility drag is 1.40% annually.
The S&P 500 shows a positive
return indeed for bearing risk during the 1988-2012 time period. The Main
Research Index’s return is reduced by 5.82% annually since it bore less risk
than the S&P 500. Adding this to the difference in volatility drag means
that the reduced volatility cost the proxy index approximately 4.42% annually.
To offset these risk effects, the
proxy index shows improved reward for bearing risk. Main Research produces 1.95 units of return for every
unit of risk, whereas the S&P 500’s return to risk ratio is .462 units
annually. The impact of this improved return to risk tradeoff results in an incremental performance of 7.25% annually.
Exhibit 3 charts the 5-year rolling annual return difference
between Main Research and the S&P 500. The rolling annual return difference is shown
from 1992-2012, using predictive forecast values for the proxy index from
2013P-2016P. Since 2013, the forecast appears to be significantly consistent with
the actual historical performance drift near zero.
Exhibit 2: Sources of Annual
Relative Performance
Reference
|
Factor
|
Main Research (%)
|
S&P 500 (%)
|
Difference (%)
|
A
|
Geometric
Mean
|
9.410
|
6.578
|
2.832
|
B
|
Arithmetic
Mean
|
9.519
|
8.087
|
1.431
|
C
|
Volatility
Drag (A-B)
|
-0.109
|
-1.509
|
1.400
|
D
|
Standard
Deviation
|
4.893
|
17.484
|
|
E
|
Reward
for Risk (B/D)
|
1.945
|
.462
|
|
F
|
Impact
for Changed Risk Level (Dp-Db)*Eb)
|
-5.823
|
||
G
|
Impact
of Improved Tradeoff ((Ep-Eb)*Dp)
|
7.255
|
||
H
|
Difference
in Arithmetic Means (F+G)
|
1.432
|
||
I
|
Sum of
Risk Effects (C+F)
|
-4.423
|
||
J
|
Improved
Tradeoff, Arguably an Anomaly (G)
|
7.255
|
||
K
|
Difference
in Geometric Means (I+J)
|
2.832
|
Exhibit 3: 5-Year Rolling Annual Return Difference (Main
Research Index Versus the S&P 500)
Source: S&P 500 January Average data from Compustat/CRSP combined CCM database
Analysis of Results
To
analyze these results, a Fama-Macbeth regression is assessed on the excess
returns of the proxy index against the Fama and French factor loadings (market
risk premium, value premium, and size premium). Proxy ‘portfolios’ were created
from the universe of companies that compose the proxy index, and each
portfolio’s excess returns were regressed against the factor loadings. The
betas show to what extent each portfolio’s returns can be explained by each
factor.
Table 1: Regression
One Results
subscript
|
||
0
|
Intercept Coefficient
|
|
1
|
Mkt-Rf Coefficient
|
|
2
|
SMB Coefficient
|
|
3
|
HML Coefficient
|
|
P1:P40
|
β0
|
β1
|
β2
|
β3
|
Mean
|
8.69%
|
12.25%
|
-2.32%
|
18.41%
|
1988:2012
|
y0
|
y1
|
y2
|
y3
|
Mean
|
5.28%
|
29.13%
|
-6.26%
|
6.95%
|
The
results in the cross-sectional regression are inconsistent with what we would
expect to find if the model is correct, that the factor premium estimates are
equal to the risk premia estimates. The intercept coefficient estimate, which
should not be significantly different from zero, is on the contrary highly
significant. The t-statistic (3.61) rejects the null hypothesis of equality to
zero. In addition, the market risk premium average is significantly different
from its beta estimate equivalent. The t-statistic of 2.83 again rejects the
null hypothesis that risk equals reward, H0: b1 = y1.
Table 2: Correlations of Estimates
Intercept
|
Mkt-Rf
|
SMB
|
HML
|
|
Intercept
|
1.000
|
|||
Mkt-Rf
|
.880
|
1.000
|
||
SMB
|
-.812
|
-.875
|
1.000
|
|
HML
|
.836
|
.923
|
-.863
|
1.000
|
One
interesting feature resides in the high correlation of beta estimates between
the intercept and factor loadings. In Table 2, this correlation amounts to 0.88
between the intercept and market returns. In addition, the size (-0.812) and value
(0.836) factors show a strong negative correlation to each other. This result
would imply that the ability of the market premium to explain the
cross-sectional differences in the proxy portfolio’s excess returns is captured
by both the value premium and market risk premium estimates.
Conclusion
We
examined the performance of the Main Research Low Volatility Index and the
S&P 500 over a 25-year period. Results show that the proxy strategy achieves incremental
performance of 7.25% annually over the S&P with 4.9% annualized volatility. Similar to existing and ample (Lazzara et al, 2016), the persistence of the low volatility anomaly abounds; the proxy strategy’s low market risk exposure is indeed rewarded with equity risk premium.
References
Arnott, R. D., Hsu, J., & Moore, P. (2005). Fundamental
Indexation. Financial Analysts Journal , 83-97.
Fama, E. F. & French, K.R. (1992). The cross-section of
expected stock returns, The Journal of
Finance, 47 (2), 427-465.
Fame, E.F. & Macbeth, J.D. (1973), Risk, return, and
equilibrium: Empirical tests, Journal of Political Economy, 81 (3), 607.
Rosenberg, B, Reid, K., Lanstein, R. (1985), Persuasive
evidence of market inefficiency, Journal of Portfolio Management, 11, 9-17.
Ross, Stephen A. (1976), The arbitrage theory of capital
asset pricing, Journal of Economic Theory, 13, 341-360.
Disclaimer: Data for the Main Research Low Volatility Index and the S&P 500 are from
Compustat/CRSP and CCM database. All data for the indices is for research and informational
purposes only. All information for the indices is back-tested. Back-tested performance, which is
hypothetical only, is limited because it applies an index methodology and selection of index
components in hindsight. No hypothetical approach can account for intangible market factors in
general, nor the impact of investor preferences. Hypothetical returns are not indicative of future
returns, may differ from, and be lower than, back-tested returns.
[1] The historical data were not adjusted
for transaction costs, taxes or turnover. Missing observations were adjusted consistently throughout the data set. REITs, ADRs and mutual funds were excluded, as were extreme outliers.



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