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Investigating ICAPM with Dynamic Conditional Correlations

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Title: Investigating ICAPM with Dynamic Conditional Correlations


1
  • Investigating ICAPM with Dynamic Conditional
    Correlations
  • Turan Bali and Robert Engle
  • Oxford University
  • VAST DATA CONFERENCE
  • September 15, 2008

2
Introduction
  • Merton (1973)s ICAPM predicts a positive
    relation between the expected excess return on a
    stock or stock portfolio and its conditional
    covariance with the market portfolio return.
  • The literature generally focused on the relation
    between the expected excess return on the market
    portfolio and its conditional variance, thus
    confining the estimation to a single series of
    the market portfolio.

3
Introduction
  • We exploit the cross-sectional consistency of the
    intertemporal risk-return relation and estimate
    the common relation across 30 stocks in the Dow
    Jones Industrial Average.
  • Using daily returns from July 1986 to September
    2007, we estimate the conditional covariances
    between the excess returns on each stock and the
    market portfolio.

4
Introduction
  • The mean-reverting DCC model of Engle (2002) is
    used to estimate a stocks conditional covariance
    with the market and test whether the conditional
    covariance predicts time-variation in the stocks
    expected return.
  • We estimate a system of equations between the
    excess returns and their conditional covariances
    with the market, while constraining all equations
    to have the same slope coefficient.

5
Introduction
  • The positive risk-return tradeoff is robust after
    controlling for conditional covariation of
    individual stocks with
  • macroeconomic variables (fed funds rate, default
    spread, and term spread)
  • financial factors (size, book-to-market, and
    momentum)
  • volatility measures (implied, GARCH, and range
    volatility).

6
FINDINGS
  • By pooling the time series and cross section
    together, the mean-reverting DCC-based
    conditional covariance estimates generate
    significant and reasonable risk premiums.
  • The significantly positive, robust, and sensible
    estimates of risk aversion highlight the added
    benefits of using the conditional measures of
    covariance risk and maintaining the
    cross-sectional consistency in estimating the
    ICAPM.

7
Literature Review
  • Insignificant relation
  • French, Schwert and Stambaugh (1987)
  • Baillie and DeGennaro (1990)
  • Chan, Karolyi, and Stulz (1992)
  • Campbell and Hentschel (1992)
  • Glosten, Jagannathan, and Runkle (1993)
  • Harrison and Zhang (1999)
  • Goyal and Santa-Clara (2003)
  • Bali, Cakici, Yan, and Zhang (2005)
  • Bollerslev and Zhou (2006)

8
Literature Review
  • Negative relation
  • Abel (1988), Backus and Gregory (1993), and
    Gennotte and Marsh (1993)
  • Campbell (1987)
  • Breen, Glosten, and Jagannathan (1989)
  • Turner, Startz, and Nelson (1989)
  • Nelson (1991)
  • Glosten, Jagannathan, and Runkle (1993)
  • Whitelaw (1994, 2000)
  • Harvey (2001)
  • Brandt and Kang (2004)

9
Literature Review
  • Positive relation
  • Bollerslev, Engle, and Wooldridge (1988)
  • Scruggs (1998)
  • Gyhsels, Santa-Clara, and Valkanov (2005)
  • Guo and Whitelaw (2006)
  • Bali and Peng (2006)
  • Lundblad (2007)
  • Bali (2008)

10
ICAPM Specification
  • Mertons (1973) ICAPM implies
  • Almost Everyone agrees with this theory. However
    implementations differ in many ways
  • Assets Index, portfolios or individual returns
  • Covariances constant betas, 5 year constant,
    conditional
  • State Variables none, Fama-French, macro,
    interest rates, inflation, volatility
  • Data Frequency Annual, monthly, daily
  • Sample Period 100 years, 50 years, 10 years

11
ICAPM Specification
  • Traditional empirical studies focus on the
    risk-return tradeoff for the market portfolio
    with and without hedging demand
  • Many studies sort portfolios based on previously
    estimated covariances or characteristics such as
    FF.

12
Data
  • Financial Factors
  • SMB Size Factor of Fama-French (1993)
  • HML Book-to-Market Factor of Fama-French (1993)
  • MOM Momentum Factor of Fama-French (1993)
  • Volatility Measures
  • Implied Volatility (VXO VIX)
  • GARCH Volatility
  • Range Volatility
  • Idiosyncratic Volatility

13
THE SPECIFICATION
  • i.e.
  • And test

14
THE METHOD
  • Estimate GARCH for all series
  • Estimate bivariate DCC for each series and the
    market
  • Jointly estimate A and intercepts with
    covariances as regressors
  • Use SUR to control for equation error covariances
  • Test that intercepts are jointly zero
  • Add other regressors
  • Add DCC covariances with other state variables

15
Data
  • Daily excess returns on Dow 30 stocks from July
    10, 1986 to September 28, 2007 total of 5,354
    daily observations
  • Five different stock market indices
  • Value-weighted NYSE/AMEX/NASDAQ index
  • New York Stock Exchange (NYSE) index
  • SP 500 index
  • SP 100 index
  • Dow Jones Industrial Average (DJIA)

16
Data
  • Macroeconomics Variables
  • Federal funds rate
  • 3-month Treasury bill
  • 10-year Treasury bond yields
  • BAA-rated corporate bond yields
  • AAA-rated corporate bond yields
  • Dependent Variables
  • Daily excess return on the market portfolio
  • Daily excess return on Dow 30 stocks

17
DCC CORRELATION ESTIMATES
18
DCC CORRELATIONS CONT
19
Risk Return Tradeoff
20
SUB SAMPLES
21
RESULTS MACRO VARIABLES
  • Default spread
  • Term spread
  • Federal funds rate
  • Differences of these variables
  • NO SIGNIFICANT VARIABLES
  • ESTIMATE IN COVARIANCES
  • STILL NOTHING SIGNIFICANT

22
FAMA FRENCH FACTORS
23
INDIVIDUAL STOCK VOLATILITY
24
MARKET VOLATILITY
25
MARKET VOLATILITY COVARIANCE
26
Future Research
  • Bali and Engle (2008) Can DCC-based conditional
    measures of covariance risk explain the value
    premium?
  • Monthly Decile Portfolios of BM July 1926 - Dec
    2007
  • Daily returns of thousands of stocks. Are there
    more factors? Can this be done with composite
    likelihood methods?

27
CONCLUSIONS
  • RISK RETURN TRADE-OFF IS RELIABLY ESTIMATED AND
    SIGNIFICANTLY POSITIVE
  • MARKET VOLATILITY IS A SIGNIFICANT STATE VARIABLE
    HOWEVER IT IS MEASURED
  • OTHER FACTORS DO NOT APPEAR IMPORTANT
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