Firm Size: Small firms generate higher returns. Banz, 1981
Market-to-book ratio: Small generates higher returns. Statman, 1980; Rosenberg et al, 1985
P/E ratio: Small generates higher returns. Basu, 1997
Dividend yield: high generates higher returns.
Momentum: Buy stock with high past-6 months returns. XXX
Calendar effects
Daniel & Titman, 1997: Portfolios of mispriced stocks
Either: Investors systematically ignoring profitable opportunities OR:
Positive-alpha strategies contain risks not caputred by CAPM
Expected returns increase linearly with beta
Empirical SML is flatter than CAPM predicts. Black et al 1972
More recent estimations suggest it is flatter still. XXX
Securities should have zero alpha. But large variance make it impossible to say alpha categorically zero
Market portfolio is mean variance efficient
CAPM Supporters say tests are bad, rather than theory
Real Betas are not observed: based on historical values and delevered by today's leverage ratio
Expected returns are not observed: actual returns need not equal expected returns for irrational investors or concern about certain event
The market proxy is not correct: investors hold assets other than the ones used for CAPM, e.g. houses
Data snooping: given enough characteristics, we can find some that by chance are related to estimation error of regression
Anomalies can be explained by disaster. Gabaix, 2002
CAPM has never actually been tested
Fama & French, 2004. Use specific
proxy for market portfolio, efficient from
set of portfolios
Roll, 1970. True market portfolio cannot be
measured, all hypotheses around CAPM
arise from mean variance efficiency
Says one lacking assumption is that market
portfolio must be identifiable
Consumption-based CAPM
ICAPM: Takes into account consumption over
multiple periods. Merton, 1973
Rather than using mean-variance preferences,
this links asset returns to consumption
Investors as consumers that optimise their
portfolio against a consumption tracking portfolio
Risk of securities is measured with regard
to covariance with aggregate consumption
E(Rm) - Rf = A Cov(Rm,Rc): equity risk premium is driven by A (risk aversion) and
covariance of market relative to consumption-tracking portfolio (Cov(Rm,Rc) can be assumed
as Var(Rc) as return on market assumed equivalent to consumption tracking portfolio
Investors value the flow of
consumption associated with wealth
Equity Risk Premium Puzzle.
Mehra and Prescott, 1985
Look at covariance of market
with actual consumption
Disparity between returns on bonds and
stock is so great that it implies an implausibly
high level of investor risk aversion (approx
6% too high 1889-1978). XXX
Maybe covariance not
correctly measured
Maybe actual risk aversion is higher
Maybe risk premium incorrect as
period too short, sample size too small
Hypothesis: Actual returns higher than expected
returns in second half of 20th century. Fama & French
Goetzmann & Ibbotson, 2005:
Prior to 1792 only 3.66%
Suggestion that US is outlier, however ERP
high everywhere. Mehra & Prescott, 2008
Survivorship bias in stock markets
Behavioural Finance: Irrational investor
behaviour, less averse, keen to
maintain attained level of consumption
Investors engage in narrow framing, seeing individual
investment for inherent risk rather than market
Maybe measuring consumption wrong, e.g.
extrapolation from GDP survey and smoothing
Savov, 2011. Garbage production as measure
of consumption, manages to reduce relative
risk significantly, yet small ERP remains
First model to specify what drives returns: BETA
Single-factor model
Arbitrage Pricing Theory: Multifactor model
Ross, 1976
Annotations:
Intuition: If you have n factors, n securities can replicate any factor profile. Price of n+1st security must be determined by previous n securities. In practice # of factors << # of securities
E(Ri) = Rf + Summation(BETAijLAMBDAj)
LAMBDA is risk premium on each factor, BETA
it's sensitivity
No reliance on mean-variance analysis
Crucial Assumptions
Arbitrage impossible in
market equilibrium
Securities' returns
functions of (macro) factors
Large number of
traded assets
Limitations
Lack of theoretical foundations for choice of factors
Have all factors been considered?
Self-Financing Portfolio: Going long on
some, short on others, weight sums to zero
Small-Minus-Big:
Firm size
High-Minus-Low:
Book-to-market ratio
One-Year Momentum: PR1YR
E.g. Fama-French-Carhart model:
Mkt, SMB, HML, PR1YR
Extensively used
in event studies
Also used in risk measurement of
actively managed mutual funds
Fama-French: Market
Return, SMB, HML
Jagannathan & Wang, 2006: 4th quarter consumption, FF
SMB and HML linked to consumption beta, e.g. smaller
firms associated with higher betas/consumption risk
Excess Volatility Puzzle. Shiller, 1981: shifts in dividends and discount
rates far less volatile than actual share prices and LeRoy & Porter 1981
Consumption is far less volatile than wealth
Barro, 2006: Both ERP and
EVP solved by disasters
Defined as falls in GDP per capita > 15%, almost all
OECD countries experienced one in 20th century
Gabaix, 2012: Suggest that disaster can also
solve Daniel & Titman, 1997, anomalies
Shiller, 2003: Forward feedback model. Speculative
prives rise, encouraging a fad until bubble
Bubbles tend to form if people are
conditioned to expect bubbles
Kahneman & Tversky, 1974: Judgements are
made closest to previous pattern without attention
to whether new events will follow past pattern
Smart investors amy reinforce feedback
loop to make money. De Long et al, 1990