Title: An Introduction to Behavioral Finance
1An Introduction to Behavioral Finance
- SIP Course on Stock Market Anomalies and Asset
Management - Professors S.P. Kothari and Jon Lewellen
- March 15, 2004
2An Introduction to Behavioral Finance
- Efficient markets hypothesis
- Large number of market participants
- Incentives to gather and process information
about securities and trade on the basis of their
analysis until individual participants valuation
is similar to the observed market price - Prices in such markets reflect information
available to the participants, which means
opportunities to earn above-normal rates of
return on a consistent basis are limited - Prediction Stock returns are (almost) impossible
to predict - Except that riskier securities on average earn
higher rates of returns compared to less risky
firms
3An Introduction to Behavioral Finance
- Behavioral finance
- Widespread evidence of anomalies is inconsistent
with the efficient markets theory - Bad models, data mining, and results by chance
- Alternatively, invalid theory
- Anomalies as a pre-cursor to behavioral finance
- Challenge in developing a behavioral finance
theory of markets - Evidence of both over- and under-reaction to
events - Event-dependent over- and under-reaction, e.g.,
IPOs, dividend initiations, seasoned equity
issues, earnings announcements, accounting
accruals - Horizon dependent phenomenon short-term
overreaction, medium-term momentum, and long-run
overreaction
4An Introduction to Behavioral Finance
- Behavioral finance theory rests on the following
three assumptions/characteristics - Investors exhibit information processing biases
that cause them to over- and under-react - Individual investors errors/biases in processing
information must be correlated across investors
so that they are not averaged out - Limited arbitrage Existence of rational
investors should not be sufficient to make
markets efficient
5Behavioral finance theories
- Human information processing biases
- Information processing biases are generally
relative to the Bayes rule for updating our
priors on the basis of new information - Two biases are central to behavioral finance
theories - Representativeness bias (Kahneman and Tversky,
1982) - Conservatism bias (Edwards, 1968).
- Other biases Over confidence and biased
self-attribution
6Behavioral finance theories
- Human information processing biases
- Representativeness bias causes people to
over-weight recent information and deemphasize
base rates or priors - E.g., conclude too quickly that a yellow object
found on the street is gold (i.e., ignore the low
base rate of finding gold) - People over-infer the properties of the
underlying distribution on the basis of sample
information - For example, investors might extrapolate a firms
recent high sales growth and thus overreact to
news in sales growth - Representativeness bias underlies many recent
behavioral finance models of market inefficiency
7Behavioral finance theories
- Human information processing biases
- Conservatism bias Investors are slow to update
their beliefs, i.e., they underweight sample
information which contributes to investor
under-reaction to news - Conservatism bias implies investor underreaction
to new information - Conservatism bias can generate
- short-term momentum in stock returns
- The post-earnings announcement drift, i.e., the
tendency of stock prices to drift in the
direction of earnings news for three-to-twelve
months following an earnings announcement also
entails investor under-reaction
8Behavioral finance theories
- Human information processing biases
- Investor overconfidence
- Overconfident investors place too much faith in
their ability to process information - Investors overreact to their private information
about the companys prospects - Biased self-attribution
- Overreact to public information that confirms an
investors private information - Underreact to public signals that disconfirm an
investors private information - Contradictory evidence is viewed as due to chance
- Genrate underreaction to public signals
9Behavioral finance theories
- Human information processing biases
- Investor overconfidence and biased
self-attribution - In the short run, overconfidence and biased
self-attribution together result in a continuing
overreaction that induces momentum. - Subsequent earnings outcomes eventually reveal
the investor overconfidence, however, resulting
in predictable price reversals over long
horizons. - Since biased self-attribution causes investors to
down play the importance of some publicly
disseminated information, information releases
like earnings announcements generate incomplete
price adjustments.
10Behavioral finance theories
- In addition to exhibiting information-processing
biases, the biases must be correlated across
investors so that they are not averaged out - People share similar heuristics
- Focus on those that worked well in our
evolutionary past - Therefore, people are subject to similar biases
- Experimental psychology literature confirms
systematic biases among people
11Behavioral finance theories
- Limited arbitrage
- Efficient markets theory is predicated on the
assumption that market participants with
incentives to gather, process, and trade on
information will arbitrage away systematic
mispricing of securities caused by investors
information processing biases - Arbitrageurs will earn only a normal rate of
return on their information-gathering activities - Market efficiency and arbitrage EMH assumes
arbitrage forces are constantly at work - Economic incentive to arbitrageurs exists only if
there is mispricing, i.e., mispricing exists in
equilibrium
12Behavioral finance theories
- Behavioral finance assumes arbitrage is limited.
What would cause limited arbitrage? - Economic incentive to arbitrageurs exists only if
there is mispricing - Therefore, mispricing must exist in equilibrium
- Existence of rational investors must not be
sufficient - Notwithstanding arbitrageurs, inefficiency can
persist for long periods because arbitrage is
costly - Trading costs Brokerage, B-A spreads, price
impact/slippage - Holding costs Duration of the arbitrage and cost
of short selling - Information costs Information acquisition,
analysis and monitoring
13Behavioral finance theories
- Why cant large firms end limited arbitrage?
- Arbitrage requires gathering of information about
a firms prospects, spotting of mispriced
securities, and trading in the securities until
the mispricing is eliminated - Analysts with the information typically do not
have the capital needed for trading - Firms (principals) supply the capital, but they
must also delegate decision making (i.e.,
trading) authority to those who possess the
information (agents) - Agents cannot transfer their information to the
principal, so decisions must be made by those who
possess information - Agents are compensated on the basis of outcomes,
but the principal sets limits on the amount of
capital at the agents disposal (the book) - Limited capital means arbitrage can be limited
14Behavioral finance theories
- Like the efficient markets theory, behavioral
finance makes predictions about pricing behavior
that must be tested - Need for additional careful work in this respect
- Only then can we embrace behavioral finance as an
adequate descriptor of the stock market behavior - Recent research in finance is in this spirit just
as the anomalies literature documents
inconsistencies with the efficient markets
hypothesis
15Stock Returns, Aggregate Earnings Surprises, and
Behavioral Finance
S.P. Kothari, Jonathan Lewellen, Jerold B.
Warner SIP Course on Stock Market Anomalies
and Asset Management March 15, 2004
16Objective of the study
- We study the relation between market index
returns and aggregate earnings surprises - We focus on concurrent and lagged surprises
- Do prices react slowly?
- Is there discount rate information in aggregate
earnings changes?
17Motivation
- At the firm level, post-earnings announcement
drift is well-known - The slow adjustment to public information is
inconsistent with market efficiency - Slow adjustment is consistent with behavioral
finance - Barberis/Shleifer/Vishny (BSV, 1998)
- Daniel/Hirshleifer/Subrahmanyam (DHS, 1998)
- Hong/Stein (HS, 1999)
- Aggregate return-earnings relation serves as an
out-of-sample test of the behavioral hypothesis
of investor underreaction - Literature concentrates on cross-sectional return
predictability - We provide time-series evidence
18Main findings
- Aggregate relation does not mimic the firm-level
relation - Market returns do not depend on past earnings
surprises - Inconsistent with underreaction (or overreaction)
- Market returns are negatively (not positively)
related to concurrent earnings news - s seem economically significant
- Earnings and interest/ discount rate shocks are
positively correlated - Good aggregate earnings news can be bad news
- Decomposing earnings changes does not fully
eliminate the negative correlation between
earnings news and returns, a troubling result
19Firm level drift and behavioral models
- Drift could occur if investors systematically
ignore the time-series properties of earnings. - Bernard/Thomas (1990) show that quarterly
earnings changes have positive serial dependence
(.34,.19,.06 at the first 3 lags) - If investors underestimate the dependence, prices
will respond slowly and they will be surprised by
predictable changes in earnings. - Consistent with this, the pattern of trading
profits at subsequent earnings announcements
matches the autocorrelation pattern.
20Evidence
- Time-series properties of earnings
- Stock returns and aggregate earnings surprises
- Returns, earnings, and discount rates
21Earnings series
- Compustat Quarterly database, 1970 2000
- NYSE, Amex, and NASDAQ stocks with
- Earnings before ext. items, quarter t and t 4
- Price, quarter t 4
- Book value, quarter t 4
- Plus
- December fiscal year end
- Price gt 1
- Exclude top and bottom 0.5 based on dE/P
22Sample
23E/P, 1970 2000
24Firms w/ positive earnings, 1970 2000
25Quarterly earnings changes (), 1970 2000
26Aggregate earnings growth, 1970 2000
27dE scaled by lagged price, 1970 2000
28Autocorrelations
- Seasonally-differenced earnings (dE Et Et-4)
- Estimation
- dE/St ?0 ?k dE/St-k ?t
- dE/St ?0 ?1 dE/St-1 ?2 dE/St-2 ..
?5 dE/St-5 ?t - Market Time-series regressions
- Firms Fama-MacBeth cross-sectional regressions
29Autocorrelations, dE/P, 1970 2000
30Implications
- Basic message
- Pattern similar for firms and market
- Persistence stronger for market good for tests
- Specifics
- Transitory, idiosyncratic component in firm
earnings - Aggregate earnings changes are permanent
- Earnings changes predictable but volatile (?
18.6) - AR1 similar to AR5
31Returns and earnings surprises
- Rtk ? ? dE/Pt etk
- k 0, , 4
- Changes and surprises
- Market Time-series regressions
- Firms Fama-MacBeth cross-sectional regressions
32Returns and earnings, 1970 2000
33Contemporaneous relation
- Explanatory power 4 8
- Fitted values dE/P-vw
- Std. dev. of earnings surprises 0.25
- Slope 10.10
- Two std. deviation shock ? 5 drop in prices
- Historical
- Earnings change in top 25 return ? 1 (s.e.
1.7) - Earnings change in bottom 25 return ? 7 (s.e.
1.6)
34Contemporaneous relation
- Early overreaction
- No theory
- Not in firm returns
- Movements in discount rates
- Rt ?d,t ?r,t
- Cash flow news vs. expected-return news
35Returns and past earnings
- Zero to negative
- No evidence of under-reaction
- Inconsistent with behavioral theories
- Results are robust
- Alternative definitions of earnings
- Subperiods
- Annual returns and earnings
- Subsets of stocks (size, B/M terciles)
36Summary observations
- Large portfolio
- Earnings more persistent
- Initial market reaction more negative
- Puzzling from a cashflow-news perspective
- Small portfolio
- Reversal at lag 4
- Negatively related to CRSP, but not own returns
37Earnings and discount rates
- Rt ?d,t ?r,t
- ?d,t cashflow news
- ?r,t expected-return news discount-rate news
- Returns and earnings
- cov(dEt, Rt) cov(dEt, ?d,t) cov(dEt, ?r,t)
- cov(dEt, ?r,t)?
- inflation and interest rates ()
- consumption smoothing ()
- changes in aggregate risk aversion ()
38Earnings and the macroeconomy, 1970 2000
Correlations
39Earnings and the macroeconomy, 1970 2000
40Controlling for discount rates
- Two-stage approach
- dEt ? ? ?TBILLt ? ?TERMt
- ? ?DEFt ? dEt-1 ?
- Rtk ? ? Fitted(dEt) ? Residual(dEt) etk
- Timing?
- Rt Rt1 Rt2 Rt3 Rt4
- dEt
41Returns and earnings, 1970 2000
42Annual dE/P, 1970 2000
43How big are the effects?
- Over the last 30 years, CRSP VWT portfolio
- Increased 6.5 in value in the quarters with
negative earnings growth - Increased 1.9 in value in quarters with positive
earnings growth
44Conclusions
- Markets reaction to earnings surprises much
different at the aggregate level - Negative reaction to good earnings news
- Past earnings contain little (inconsistent)
information about future returns - Investment strategy Long in quarters when
aggregate earnings changes are negative - Open questions
- Do earnings proxy for discount rates?
- Is there a coherent behavioral story for the
patterns?
45Richardson and Sloan (2003) External Financing
and Future Stock Returns
- Prior evidence Market is sluggish in rationally
incorporating information in managers market
timing motivation for external financing - Market timing Raise funds when the firm is
overvalued and repurchase shares when the firm is
undervalued. - Slow assimilation of the information can be
because of investors information processing
biases - Sluggish reaction means opportunities for
abnormal returns - How large are the returns to a trading strategy?
- What is the source of the abnormal returns? Is
it related to the use of proceeds from external
financing? - Richardson and Sloan Examine returns to a
trading rule based on net external financing (not
individual decisions like share repurchasing)
46Returns following external financing
- Prior evidence
- Low returns following equity offerings, debt
offerings, and bank borrowings - High returns following share repurchases
- Managers seem to time external financing
transactions to exploit mispricing - Markets immediate reaction to the financing
decisions is incomplete (underreaction to public
announcements of voluntary decisions) - Market gradually reacts over the following
one-to-three years inconsistent with market
efficiency and consistent with some of the
information-processing biases
47Returns following external financing
- Richardson and Sloan show that
- Net external financing generates a 12-month
abnormal return of about 16 (Table 5) - The return is on long-minus-short position that
has a zero initial investment - Long position is in firms that raise the least
external financing (i.e., repurchase shares or
retire debt) - Short position is in firms that raise the most
external financing issue equity or debt or
borrow from a bank
48Returns following external financing
- Richardson and Sloan show that
- Use of the proceeds from external financing
matters (Table 6) - Investment in operating assets generates highest
return on the zero-investment portfolio - Suggests managers over-invest in assets
- Market fails to fully assimilate information in
accruals - What are accruals?
- Earnings (X) CF Accruals (A)
- When you sell on credit, earnings increase, cash
flow does not, but accruals in the form of
accounts receivables increase - Investment in operating assets is a form of
accrual
49Returns following external financing
50Returns following external financing
- External financing decisions as well as
exceptional corporate performance (high sales
growth or extreme decline) are all associated
with large accruals - A large increase in sales translates into a large
increase in receivables, so an accrual increase
is associated with increased sales - Accruals also present opportunities to the
management to manipulate them and/or create them
fictitiously - A fictitious dollar of sales and receivables
accruals contributes dollar for dollar to
earnings before taxes and also enhances profit
margin (because the cost of goods sold is not
increased with fictitious sales)
51Returns following external financing
- Since extreme performance or financing activities
or fictitious sales are typically not
sustainable, accruals revert - If investors suffer from information processing
biases, do they recognize the time-series
properties of accruals and its implications for
future earnings? - In particular, does the market recognize that
The persistence of current earnings is
decreasing in the magnitude of accruals and
increasing in cash flows? - Market overvalues accruals (i.e., fails to
recognize that accruals-based earnings are not
permanent) - Trading strategy implication Long in low accrual
stocks and short in high accrual stocks to
generate above-normal performance. - Trading strategy based on external financing is
based on accruals raise capital means high
accruals means go short
52Conclusions
- Investors exhibit many behavioral biases
- If the biases are similar across individuals and
arbitrage forces are limited, then the behavioral
biases can cause prices to deviate systematically
from economic fundamentals - Recent attempts to test the effects of behavioral
biases in stock price data - Aggregate earnings data and stock returns
- Individual firms financial data and stock
returns - Stock returns associated with external financing
decisions - Stock returns due to investors alleged inability
to process information in accounting accruals - Next set of issues
- How large is the mispricing? Can it be exploited?
What are the barriers to implementation and what
are the implications for asset management?