Title: L1: Behavioral Finance
1L1 Behavioral Finance
- Discussions on Barberis and Thaler (2003) A
Survey of Behavioral Finance - Discussions on Other Papers
2Market Efficiency and Limit to Arbitrage
- In a world where agents are rational and there
are no frictions, a securitys price equals its
fundamental value. Friedman (1953) rational
traders will quickly undo any dislocations caused
by irrational traders - Limit to arbitrage
- Fundamental Risk
- Risk that a surprise is related to a specific
company - Noise Trader risk
- They trade irrationally
- Implementation costs
3Evidence on Irrationality
- Twin shares
- E.g., Royal Dutch and Shell Transport
- Index inclusion
- Internet Carve-outs
- 3Com and Plam Inc.
- A case where there is no fundamental risk and no
noise trader risk - The key is the barrier to short selling ?
arbitrade was limited and mispricing persists
4Belief-based Behavioral Explanations
- Overconfidence
- Optimism
- People are overconfident of their judgements
- biased parameters
- Representativeness
- People tend to draw a conclusion after observing
few data points - Conservatism
- Opposite to representativeness
5Belief-based Behavioral Explanations
- Belief perseverance
- Once people have an opinion, they stick to it too
long - Reluctant to search for evidence against their
belief - Treat such evience with excessive skepticism
- Anchoring
- Anchoring too much on the initial number
- Availability Biases
6Preference-based Explanations
- Prospect Theory
- About investor preferences
- Risk aversion to gains (loss aversion) risk
loving to losses
7Preference-based Explanations (2)
- Ambiguity Aversion
- People do not like situations where they are
uncertain about the probability distribution of a
gamble. - Prefer certainty
8Aggregate Stock Applications
- Equity premium
- - using annual data from 1871-1993,
Campbell and Cochrane (1999) report that the
average log return on the SP 500 index is 3.9
higher than the average log return on short-term
commercial paper. - Volatility
- Stock returns and price-dividend ratios are
highly volable. Annual standard deviation of
excess log returns on the SP is 18, while that
of log price-dividend ratio is 0.27 - Predictability
- Stock returns are forecastable. Using monthly,
real, equal-weighted NYSE returns from 1941-1986,
FF (1988) show that dividend-price ratio is able
to explain 27 of the variation of cumulative
stock return over the subsequent four years.
9Cross-Sectional Predictions
- Size premium
- Long-term reversals
- The predictive power of scaled-price ratios
- Momentum
- Earnings announcement effect
- Dividend initiations and omissions
- Stock repurchases
- IPOs and SEOs
10Explanations
- Representativeness
- Overconfident
- others
11Applications in Investor Behavior
- Insufficient diversifications (home bias)
- Ambiguity aversion
- Naïve diversification
- Excessive trading
- Disposition effect
- Buying decision is attention driven
12Hong and Stein (JF 1999) -- tong
- Main Idea present a unified framework for
underreaction, momentum trading and overreaction
in asset market. It assumes there are two types
of investors (1) newswatchers who observe some
private invormation, but dont extract
information from prices, and (2) momentum
traders. If information diffuses gradually across
the population, prices underract in the short
run, thus momentum traders can profit from trend
chasing. Simple implementation of momentum
trading leads to over-reaction at long horizons.
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14Testable Implications
- Stocks with most information asymmetry enjoy the
biggest momentum effect - Small stocks
- Stocks having few analysts to follow
- Stocks most momentum-prone are most
reversal-prone.
15- Mental accounting, loss aversion and individual
stock returns - by Barberis, N., and M. Huang (2001, JoF) -- Fu
- Improving the way we model investor preferences
- Loss aversion People are more sensitive to
losses than to gain - Dynamic loss aversion the degree of loss
aversion depends on Ri,t-1 - Mental accounting over which people think about
and evaluate? - Narrow framing People pay attention to narrowly
defined gains and losses (firm-level stock
returns) when making decision - 1.Individual stock accounting U(Ct, Ri,t-1),
high mean, more volatile, large value premium
(P/D effect) aggregate stock returns are
predictable in the TS. - 2.Portfolio accounting U(Ct, Pt-1), mean value
falls, less volatile, value premium in CS
disappears, more correlated with each other. Less
successful - WHY? Change discount rate ?ri,t f(Ri,t-1)
16Model A Individual Stock Accounting
17Model B Portfolio Accounting
18Style InvestingBarberis and Shleifer (JFE, 2003)
-- Tina
- Purpose study asset prices in an economy where
some investors categorize risky assets into
different styles and move funds among these
styles depending on their relative performance.
19Style InvestingBarberis and Shleifer (JFE, 2003)
- Findings
- 1. assets in the same style comove too much
- 2. assets in different styles comove too little
- 3. reclassifying an asset into a new style
raises its correlation with that style - 4. style returns exhibit a rich pattern of own-
and cross-autocorrelations - 5. style-level momentum and value strategies are
even more profitable than those of asset-level
20- Returns to Buying Winners and Selling Losers
Implications for Stock Market Efficiency by
Jegadeesh and Titman (1993) -- Jeff - Buying past winners and shorting past losers
generates - significant positive stock returns over 3 to 12
months holding - periods. For example, 6-month/6-month strategy
can realize a - compounded excess return of 12.01 per year.
- Profitability is not persistent Part of abnormal
returns - generated in the first year after portfolio
formation dissipates - in the following two years.
21Trading Strategies
- J-month/K-month strategy select stocks on the
basis of returns over the past J months and holds
them for K months. - At the beginning of each month t, the stocks are
ranked in ascending order based on their returns
in the past J months. - Based on these rankings, ten decile portfolios
are formed that equally weight the stocks
contained in each decile. - Top is losers and bottom is winners.
- In each month t, buy winners and sell losers and
hold this position for K months.
22Source of Profitability
- 3 sources of excess returns cross-sectional
dispersion in expected returns market factor
and firm-specific (idiosyncratic) components - Profitability is not related to systematic risk
not related to delayed stock price reactions to
common factors. - But consistent with delayed price reactions to
firm-specific information. - Other tests
- Size and beta based subsamples
- Subperiod January effect
- Event time
- Back-testing
23- Investor Psychology and Security Market
Under-and Overreaction by Daniel, Hirshleifer,
and Subrahmanyam (1998) -- Jeff - Propose a theory of stock market under- and
overreaction - based on two psychological biases
- Overconfidence Overestimate the precision of
privation - information, but not public information
- Biased self-attribution Attribute events that
confirm the - validity of actions to high ability and events
that disconfirm the actions to noise.
24Model 1 Constant Confidence Level
- 2 investors and 4 days
- I (informed) those who receive the signal
- U (uninformed) those who do not receive the
signal - Day 0 endowment
- Day 1 I receives the signal and trades with U
- Day 2 Noisy public signal comes trade further
- Day 3 conclusive public info arrives.
- The risky security has a terminal value of ? the
private information signal received by I at day 1
is - s1 ? e U correctly assesses the e but I
underestimate it to be ?c2 lt ?e2 (key
overreaction assumption)
25Model 2 Outcome Dependent Confidence
- No longer require, initial overconfidence, ?c2 lt
?e2 - Assume public signal is discrete, with s2 1 or
-1 at day 2. - If sign (? e) sign (s2), confidence
increases, so investors assessment of noise
variance decreases to ?c2 k, 0 lt k lt ?c2 - If sign (? e) ? sign (s2), confidence remains
constant ?c2 - Model 1 or Overconfidence implies negative
long-lag autocorrelations, excess volatility,
and, when managerial actions are correlated with
stock mispricing, public-event-based return
predictability. - Model 2 or attribution implies short-lag
autocorrelations (momentum), short-run earnings
drift.
26Evidence on the Characteristics of Cross
Sectional Variation in Stock Returns (Daniel and
Titman JF 1997) -- Liem
- Firm sizes and B/M ratios are both highly
correlated with average returns of common stocks.
DT find that return premia on small cap and high
B/M does not arise because of the co-movements of
these stocks with pervasive factors. It is the
characteristics rather than the covariance
structure of returns that appear to explain the
cross-sectional variation in stock returns. - Model 1 The Null Hypothesis
- Returns are generated by the following factor
structure
27Evidence on the Characteristics of Cross
Sectional Variation in Stock Returns (Daniel and
Titman JF 1997)
- Model 2 A Model with Time Varying Factor Risk
Premia - Factor loadings do not change as firms become
distressed. A factors risk premium increases
following a string of negative factor
realizations. - There is no separate distress factor fD. The
remaining ßs in this model are constant over
time.
28Evidence on the Characteristics of Cross
Sectional Variation in Stock Returns (Daniel and
Titman JF 1997)
- Model 3 A Characteristic-based Pricing Model
- Firms exist that load on the distressed factors
but which are not themselves distressed, and
therefore have a low theta and commensurately
low return. - There is no separate distress factor fD. The
remaining ßs in this model are constant over
time.
29What is the Intrinsic Value of the Dow? (Lee,
Myers and Swaminathan JF 2000) -- Liem
- They model the time-series relation between
price and intrinsic value as a co-integrated
system so that price and value are long-term
convergent. They compare the performance of
alternative estimates of intrinsic value for the
Dow 30 stocks. - Traditional market multiples such as B/P, E/P,
and D/P ratios had little predictive power. - However, a V/P ratio, where V is based on a
residual income valuation model, has
statistically reliable predictive power. Further
analysis shows time-varying interest rates and
analyst forecasts are important to the success of
V. Alternative forecast horizons and risk premia
are less important.
30What is the Intrinsic Value of the Dow? (Lee,
Myers and Swaminathan JF 2000)
- The Residual-Income Valuation Model
- Returns are generated by the following factor
structure - Model Implementation Issues
- Forecast horizons and terminal values
- Cost of equity capital
- Explicit earnings forecasts
- Matching book value to I/B/E/S forecasts
- Dividend payout ratios
31What is the Intrinsic Value of the Dow? (Lee,
Myers and Swaminathan JF 2000)
- Intrinsic Value Measures
- DJDP
- DJEP
- DJBM
- VP
- Tracking the Dow Index
- Without time trend (eq 10)
- With time trend (eq 11)
- Business Cycle Variables
- Default spread
- Term spread
- Returns prediction
- Forecast regression methodology (eq 12)
- Forecasting regression results
- Univariate regressions (eq 13)
- Multivariate regressions involving DJDP, DJEP,
DJBM, and VP
32Does the stock market overreact?Werner F. M. De
and Richrd Thaler Leon
- The paper tests that whether overreaction
affect stock prices. - overreaction is an implicit comparison to
appropriate reaction, which tells us Bayes
rule prescribes the correct reaction to new
information. - Individuals tend to overweight recent information
and underweight prior information. - Early researchs J. M. Keynes, Williams, Arrow,
Shiller, Kleidons, Reinganum, Basu, Graham,
Russell and Thaler.
33The methodology
- Two hypothesis 1. extreme movements in stock
will be followed by subsequent price movement in
the opposite direction, 2. the more extreme the
initial price movement , the greater will be the
subsequent adjustment. ------ To test whether the
overreaction hypothesis is predictive.
and . -
- is market-adjusted excess return
, and if it is a efficient market, then -
- Use , ,
to test and find overreaction. -
34Findings
- loser and winner are both overreacting, and loser
overreact more (asymmetric ) - most of the excess return realized in January
(January effect) - the overreaction mostly occurs during the second
and third year of the test period.
35- A model of investor sentiment
- N. Barberis, A. Shleifer, R. Vishny. JFE (1998)
-- Daryl - Earnings streams follow a random walk process
- Investors form expectations based on one of two
non-random walk models mean-reverting or a
trend. - Investors exhibit representativeness, the
tendency to view events as typical and ignore
statistical probabilities. - Investors make forecasts based on (i) the
strength of evidence (ii) the statistical
weight of evidence - Model predicts that stocks
- Underreact to low strength evidence high weight
- Corporate announcements
- Overreact to high strength and low statistical
weight of evidence. - Consistent patterns of good or bad news
36- Underreaction E(rt1ztG) gt E(rt1ztB)
- over-confidence about prior information
- Overreaction E(rt1ztG,, zt-jG) lt
E(rt1ztB,,zt-jB) - seeing order among chaos
- Model
- Investors believe earnings follow one of two
regimes according to a specific regime switching
process. - Model 1 Mean Reverting or Model 2 Trend
(Markov) - Investor is convinced that he knows both pH pL
37- Regime switching between models based on
probability parameters,?i , which are assumed low.
- To value a security, an investor needs to
forecast earnings. - Investor task is then to understand which of the
two regimes is currently governing earnings. - At time t, after observing shock yt, investor
estimates the probability qt that yt was generate
by Model 1. Formally, - qt Pr (st1yt, yt-1, qt-1) or
- qt1
- If earnings are generated by regime-switching
process, then prices may be decomposed to a
random-walk component and and a deviation
component from fundamental value. (Prop 1)