Title: Managing Higher Moments in Hedge Fund Allocation
1Managing Higher Moments in Hedge Fund Allocation
Boston College June 11, 2004
- Campbell R. Harvey
- Duke University, Durham, NC USA
- National Bureau of Economic Research, Cambridge,
MA USA - http//www.duke.edu/charvey
21. Objectives
- Framework
- The importance of higher moments
- Rethinking risk
- Characteristics of hedge fund returns
- Rethinking optimization
- Skewness and expected returns
- Implementation
- Conclusions
32. Framework
- Markowitz (1952)
- Stage 1
- ...starts with observation and experience and
ends with beliefs about the future performances
of available securities
42. Framework
- Markowitz (1952)
- Stage 2
- ...starts with relevant beliefs and ends with
the selection of a portfolio - Markowitz only dealt with Stage 2 in context of
the famous mean-variance framework
52. Framework
- Markowitz (1952)
- Important caveat, p.90-91
- If preferences depend on mean and variance, an
investor will never accept an actuarially fair
bet.
62. Framework
- Markowitz (1952)
- Important caveat, p.90-91
- If preferences also depend skewness, an investor
then there some fair bets which would be
accepted.
73. Motivation
- 50 years later, we have learned
- Investors have an obvious preference for skewness
- Returns (or log returns) are non-normal
83. Motivation
Source Shadwick and Keating (2003)
93. Motivation
- Preferences
- 1. The 1 lottery ticket. The expected value is
0.45 (hence a -55) expected return. - Why is price so high?
- Lottery delivers positive skew, people like
positive skew and are willing to pay a premium
103. Motivation
- Preferences
- 2. High implied vol in out of the money OEX put
options. - Why is price so high?
- Option limits downside (reduces negative skew).
- Investors are willing to pay a premium for assets
that reduce negative skew
113. Motivation
- Preferences
- 2. High implied vol in out of the money SP index
put options. - This example is particularly interesting because
the volatility skew is found for the index and
for some large capitalization stocks that track
the index not in every option - That is, one can diversify a portfolio of
individual stocks but the market index is
harder to hedge. - Hint of systematic risk
123. Motivation
- Preferences
- 3. Some stocks that trade with seemingly too
high P/E multiples - Why is price so high?
- Enormous upside potential (some of which is not
well understood) - Investors are willing to pay a premium for assets
that produce positive skew - Note Expected returns could be small or
negative!
133. Motivation
- Preferences
- 3. Some stocks that trade with seemingly too
high P/E multiples - Hence, traditional beta may not be that
meaningful. Indeed, the traditional beta may be
high and the expected return low if higher
moments are important
143. Motivation
- Returns
- Crisis events such as August 1998
- Scholes (AER 2000, p.19) notes
- This 20-basis point change was a move of 10
standard deviations in the swap spread.
153. Motivation
- Returns
- 10 standard deviation move has a probability of
10-24 -- under a normal distribution
163. Motivation
- Returns
- 10 standard deviation move has a probability of
10-24 -- under a normal distribution - Roughly the probability of winning the Powerball
Lottery ...
173. Motivation
- Returns
- 10 standard deviation move has a probability of
10-24 -- under a normal distribution - Roughly the probability of winning the Powerball
Lottery ... 3 consecutive times! - (See Routledge and Zin (2003))
183. Motivation
- Returns
- The most unlikely arena to see normally
distributed returns is the hedge fund industry - Use of derivatives, derivative replicating
strategies, and leverage make the returns
non-normal
193. Motivation
- Returns
- Consider an excerpt from a presentation of one of
the largest endowments in the U.S. from March
2004
20- The Evolution of Large Endowment Asset Mixes
- of Total Portfolio
-
- 1988 1991 1994 1997 2000 2003
- US Equity 45.6 45.9 40.1 39.4 32.4 24.8
- Non-US Equity 3.1 6.0 13.5 14.8 13.5 13.6
- Hedge Funds .7 2.0 6.4 8.8 11.7 24.0
- Non-Marketable 3.8 5.3 6.2 7.1 18.7 12.6
- Bonds 33.0 32.0 25.5 20.2 16.6 17.2
- Real Estate 2.9 3.2 3.3 5.4 4.7 6.2
21- Asset Mix-Large Endowments Versus the Average
Fund - June 2003
- of Portfolio
- Large Average
- Endowments Endowment
- US Equity 24.8 49.0
- Non-US Equity 13.6 8.2
- Hedge Funds 24.0 6.1
- Non-Marketable 12.6 4.1
- Bonds 17.2 25.8
- Real Estate 6.2 2.8
- Cash 1.6 4.0
- Traditional 43.6 78.8
- (US stocks, bonds, cash)
22- Selected Endowment Asset Mixes
- June 2003
-
- of Endowment
- Harvard Yale Virginia
- US Equity 18.4 15.1 6.2
- Non-US Equity 19.6 14.8 5.8
- Hedge Funds 54.7
- Private Equity 8.6 15.2 13.1
- Equity and Related 46.6 45.1 79.8
- Real Estate 5.1 13.1 2.8
- Natural Resources 5.8 6.9 2.8
- Commodities 3.8
- TIPS 6.7 7.7
- Inflation hedges 21.4 20.0 13.3
- Absolute Return 12.2 25.2 6.3
- Bonds 24.7 7.5 0
- Cash -4.9 2.2 .6
- Total Fixed 19.8 9.7 .6
23- Endowment Returns by Size of Fund
- Periods ending 6/30/2003
- 1 year 3 years 5 years 10 years
- gt 1 billion 4.1 -.7 6.9 11.5
- 501mm to 1b 2.9 -2.3 3.9 9.3
- 101mm to 500mm 2.7 -2.4 3.1 8.8
- 51mm to 100mm 2.7 -2.8 2.1 8.1
- 26mm to 50mm 3.1 -2.3 2.4 8.1
- Less than 25mm 3.5 -2.3 2.2 7.2
243. Motivation
- Manager explained the following fact
- If I use the same expected returns as in 1994
and add the hedge fund asset class, the optimized
portfolio mix tilts to hedge funds. The Sharpe
Ratio of my portfolio goes up.
253. Motivation
- Managers optimization based on traditional
Markowitz mean and variance. - Does this make sense?
263. Motivation
Source Naik (2003)
273. Motivation
Source Naik (2003)
283. Motivation
Source Naik (2003)
293. Motivation
Source Naik (2003)
304. Rethinking Risk
- Much interest in downside risk, asymmetric
volatility, semi-variance, extreme value
analysis, regime-switching, jump processes, ...
314. Rethinking Risk
- all related to skewness
- Harvey and Siddique, Conditional Skewness in
Asset Pricing Tests Journal of Finance 2000.
32Average Returns January 1995-April 2004
Source HFR
33Volatility January 1995-April 2004
Source HFR
34Skewness January 1995-April 2004
Source HFR
35Kurtosis January 1995-April 2004
Source HFR
36Coskewness January 1995-April 2004
Source HFR
37Beta market January 1995-April 2004
Source HFR
38Beta market (August 1998) January 1995-April
2004
Source HFR
39Beta chg. 10-yr January 1995-April 2004
Source HFR
40Beta chg. slope January 1995-April 2004
Source HFR
41Beta chg. spread January 1995-April 2004
Source HFR
42Beta SMB January 1995-April 2004
Source HFR
43Beta HML January 1995-April 2004
Source HFR
445. Rethinking Optimization
- Move to three dimensions mean-variance-skewness
- Relatively new idea in equity management but old
one in fixed income management
455. Rethinking Optimization
465. Rethinking Optimization
475. Rethinking Optimization
485. Rethinking Optimization
496. Higher Moments Expected Returns
- CAPM with skewness invented in 1973 and 1976 by
Rubinstein, Kraus and Litzerberger - Same intuition as usual CAPM what counts is the
systematic (undiversifiable) part of skewness
(called coskewness)
506. Higher Moments Expected Returns
- Covariance is the contribution of the security to
the variance of the well diversified portfolio - Coskewness is the contribution of the security to
the skewness of the well diversified portfolio
516. Higher Moments Expected Returns
526. Higher Moments Expected Returns
536. Higher Moments Expected Returns
546. Higher Moments Expected Returns
557. New Metrics
- Old Sharpe Ratio Excess return/vol
- Alternative Excess return/vol-adj(skew)
- Alternative alpha from 3-moment CAPM
567. New Metrics
- Traditional Markowitz optimization over mean and
variance - New optimization over mean, variance and skewness
578. Implementation
- Harvey, Liechty, Liechty and Müller (2004)
Portfolio Selection with Higher Moments
589. Conclusions
- Data not normal especially hedge fund returns
- Investors have clear preference over skewness
which needs to be incorporated into our portfolio
selection methods and performance evaluation - Remember Markowitzs two stages. Ex ante
skewness is difficult to measure.
599. Conclusions
- While we have only talked about average risk, it
is likely that the risk (including skewness)
changes through time
60Readings
- Distributional Characteristics of Emerging
Market Returns and Asset Allocation," with Geert
Bekaert, Claude B. Erb and Tadas E. Viskanta,
Journal of Portfolio Management (1998),
Winter,102-116. - Autoregressive Conditional Skewness, with
Akhtar Siddique, Journal of Financial and
Quantitative Analysis 34, 4, 1999, 465-488. - Conditional Skewness in Asset Pricing Tests,
with Akhtar Siddique, Journal of Finance 55, June
2000, 1263-1295. - Time-Varying Conditional Skewness and the Market
Risk Premium, with Akhtar Siddique, Research in
Banking and Finance 2000, 1, 27-60. - The Drivers of Expected Returns in International
Markets, Emerging Markets Quarterly 2000, 32-49. - Portfolio Selection with Higher Moments, with
John Liechty, Merrill Liechty, and Peter Müller,
Working paper, 2004.