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A Survey of Behavioral Finance

A Survey of Behavioral Finance. Nicholas Barberis Richard Thaler Presented by Ryan Samson. Traditional Rational Correct Bayesian Updating Choices Consistent with Expected Utility. Behavioral Some are Not Fully Rational Relax One or Both Tenets of Rationality. Traditional vs. Behavioral.

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A Survey of Behavioral Finance

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  1. A Survey of Behavioral Finance Nicholas Barberis Richard Thaler Presented by Ryan Samson

  2. Traditional Rational Correct Bayesian Updating Choices Consistent with Expected Utility Behavioral Some are Not Fully Rational Relax One or Both Tenets of Rationality Traditional vs. Behavioral

  3. Limits to Arbitrage vs. Market Efficiency • EMH • Prices Reflect Value • Mispricings Corrected by Arbitrageurs • Limits to Arbitrage • Strategies May not be Arbitrage • Problems Entering Position? • Correct Prices => No Free Lunch • No Free Lunch ≠> Correct Prices • Why Care?

  4. Theory Supporting Limits to Arbitrage • Fundamental Risk – Negative Shock and no Perfect Substitute (e.g. Ford and GM) • Noise Trader Risk – Continued Widespread Irrationality • Forced Liquidation (Separation of Brains and Capital) • Horizon Risk • Trading in the Same Direction

  5. Theory Supporting Limits to Arbitrage 2 • Implementation Costs • Commission • Bid/Ask Spread • Price Impact • Short Sell Costs • Fees • Volume Constraints • Legal Restraints • Identification Cost • Mispricing ≠> Predictability

  6. Evidence Supporting Limits to Arbitrage • Mispricings Hard to Identify • Test of Mispricing => Test of Discount Rate Model • Twin Shares • Royal Dutch (60%) and Shell (40%) • Only Risk is Noise Traders • => PriceRD = 1.5*PriceS

  7. Evidence Supporting Limits to Arbitrage 2 • Index Inclusions • Stock Price Jumps Permanently • 3.5% Average • Fundamental Risk • Poor Substitutes (best R2 < 0.25) • Noise Trader Risk • Index Fund Purchases etc.

  8. Evidence Supporting Limits to Arbitrage 3 • Internet Carve-Outs • 3Com Sells 5% of Palm in IPO, Will Spin Off Remainder in 9 Months • 1 Share of 3Com will own 1.5 Shares of Palm • PPalm = $95 • 3Com should be ≥ $142 • P3Com = $81 • Value of 3Com Excluding Palm = -$60

  9. Evidence Supporting Limits to Arbitrage 4 • Why? • Very Few Shares of Palm available to Short • Arbitrage was Limited • Mispricing Persisted

  10. Psychology • Beliefs • Overconfidence • 98% CI only captures 60% • 100% is actually 80% and 0% is actually 20% • Optimism / Wishful Thinking • Unrealistic View of Personal Abilities / Prospects • 90% of Drivers Claim Above Average Skill • 99% of Freshman Claim Superior Intelligence

  11. Psychology 2 • Beliefs Continued • Representativeness • Base Rates are Under-Emphasized Relative to Evidence • Sample Size Neglect in Learning Distribution • (6 Tosses vs. 1000 Tosses) • “Law of Small Numbers” • Gambler’s Fallacy • Conservatism • Base Rates are Over-Emphasized Relative to Evidence

  12. Psychology 3 • Beliefs Continued • Belief Perseverance • Search for Contradictory Evidence • Treatment of Contradictory Evidence • Anchoring • Initial Arbitrary Value and Make Adjustments • Availability Biases • Recent or Salient Events

  13. Psychology 4 • Beliefs, Final Notes • People Display Poor Learning in Application • Experts Often do Worse • Increasing Incentives Doesn’t Help

  14. Psychology 5 • Preferences • Expected Utility vs. Prospect Theory or Ambiguity Aversion • Prospect Theory • Value of a Gamble is: π(p)*v(x)+π(q)*v(y) • Utility Defined over Gains and Loses • Concave over Gains, Convex over Losses • Nonlinear Probability Transformation • Especially Large Weight on Certain Outcomes

  15. Psychology 6 • Ambiguity Aversion • People Avoid Uncertain Probability Distributions • Aversion Changes Based on Perceived Competence at Assessing Relevant Distribution • Preference for Familiar

  16. Application 1: Aggregate Stock Market • 3 Puzzles: • Equity Premium • High Volatility in Returns and P/D Ratios • Predictable Returns (D/P alone  R2 = 0.27)

  17. Equity Premium • Risk Premium Seems too High • Possible Explanations Under Prospect Theory • Benartzi and Thaler • Eπv[(1-w)Rf,t+1 + wRt+1 – 1], π and v as before • Given Historical Returns, Investors are Indifferent to w = 1 and w = 0 • Calculate Implied Length of t • 1 Year (Taxes? Annual Reports?) • Result is Myopic Loss Aversion

  18. Equity Premium 2 • Possible Explanations Under Prospect Theory Continued • Need Intertemporal Model • Barberis, Huang, Santos • Utility From Consumption (Source 1) AND Utility From Changes in Value of Risky Assets (Source 2) • Utility From Source 2 Captures Loss Aversion (Not Convexity, Concavity, or Nonlinearity of π) • Explanatory power based on weight of Source 2

  19. Equity Premium 3 • Possible Explanations Under Prospect Theory, Final Notes • Why? • Regret • Bounded Rational: • P(C(Labor Income, Stock Returns) < Habit) • P(C(Stock Returns) < Habit) • t = 1 Year Based on Presentation

  20. Equity Premium 4 • Explanations Under Ambiguity Aversion • Max[Min[E[U]]] (i.e. Playing Malevolent Opponent) • Requires High Equity Premium

  21. Volatility • Rational Approaches Must Focus on Changing Risk Aversion to Explain Volatility • Explanations Under Beliefs • Overreaction to Dividend Growth  Volatile Prices • Law of Small Numbers • Overconfidence in Opinion • Overreaction to Returns • Law of Small Numbers • Confusion Between Real and Nominal Rates

  22. Volatility • Explanations Under Preferences • Same Model as Used for Equity Premium • Add zt, a State Variable, to Source 2 of Utility • Several Price Increases  Less Scared • Price Decreases  Scared

  23. Application 2:Cross-Section of Average Returns • You Can Form Groups of Stocks w/ Different Average Returns, Not Explained by CAPM • Size Premium (Small Stocks +0.74%/month) • Long Term (3 Yr) Reversal (8%/Yr) • Price Ratios • B/M (High B/M +1.53%/month) • P/E (High P/E +0.68%/month) • Momentum (6 Month Winners +10%/Yr)

  24. Cross-Section of Average Returns • Anomalies Continued • Earnings Announcements (Over 60 Days +4% for Good Over Bad) • Dividend Initiation / Omission • Stock Repurchases • Problems w/ Anomalies • Difficult Statistics (Cross-Sectional Correlation) • Data-Mining (Test Out of Sample) • Multi-Factor Models

  25. Cross-Section of Average Returns • Explanations Under Beliefs • Conservatism (Underweight New Info) • React Slowly to Earnings Reports • Representativeness • Overreact Now, Reversal Later • Overconfidence • Ignore Unfavorable Public Info  Reversal • Too Much Attention to Favorable Public Info  Momentum • All Imply P Around Earnings Report

  26. Cross-Section of Average Returns • Belief Based Continued • Positive Feedback • Momentum • Post Earnings Drift • Long Term Reversal • A Result of Law of Small Numbers?

  27. Cross-Section of Average Returns • Belief Based w/ Institutional Friction (i.e. Short Sell Constraints) • Bearish Cannot Short  Reversal or Momentum • Effect of Higher Incentives on Short Prices

  28. Cross-Section of Average Returns • Preference Based Explanations • Same BHS Model Applied to Individual Stocks • Price Reversal (Not Momentum)

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