Jie Zhang, HKPU Forecasted Earnings per Share and the Cross Section of Expected Returns Ling Cen K.C. John Wei Hong Kong University of Science and Technology.

Slides:



Advertisements
Similar presentations
Chapter 3 Market Efficiency
Advertisements

The Efficient Market Hypothesis
1/19 Motivation Framework Data Regressions Portfolio Sorts Conclusion Option Returns and Individual Stock Volatility Jie Cao, Chinese University of Hong.
1 Aggregate Short Selling during Earnings Seasons Paul Brockman, Lehigh University Andrew Lynch, University of Missouri Andrei Nikiforov, Rutgers University.
INVESTMENTS | BODIE, KANE, MARCUS Copyright © 2014 McGraw-Hill Education. All rights reserved. No reproduction or distribution without the prior written.
McGraw-Hill/Irwin Copyright © 2008 The McGraw-Hill Companies, Inc., All Rights Reserved. The Efficient Market Hypothesis CHAPTER 8.
Capital Investments and Stock Returns Sheridan Titman K. C. John Wei Feixue Xie (Journal of Financial and Quantitative Analysis 39, 2004, pp )
LECTURE 9 : EMPRICIAL EVIDENCE : CAPM AND APT
1 Fin 2802, Spring 10 - Tang Chapter 11: Market Efficiency Fina2802: Investments and Portfolio Analysis Spring, 2010 Dragon Tang Lecture 10 The Efficient.
Efficient Capital Markets
Capital Asset Pricing and Arbitrary Pricing Theory
Market efficiency Specific meaning of the term “market efficiency” in financial economics: “security prices fully reflect all available information” So…
International Fixed Income Topic IVC: International Fixed Income Pricing - The Predictability of Returns.
The Inefficient Stock Market What Pays Off and Why (Prentice Hall, 1999) Visit our web-site at HaugenSystems.com.
Price and Earnings Momentum: An Explanation Using Return Decomposition Qinghao Mao K.C. John Wei Hong Kong University of Science and Technology NTUICF.
The Inefficient Market What Pays Off and Why Part 2: Why Prentice Hall 1999 Visit our web-site at HaugenSystems.com.
McGraw-Hill/Irwin © 2008 The McGraw-Hill Companies, Inc., All Rights Reserved. Capital Asset Pricing and Arbitrage Pricing Theory CHAPTER 7.
Active Portfolio Management Theory of Active Portfolio Management –Market timing –portfolio construction Portfolio Evaluation –Conventional Theory of evaluation.
Presentation by: Bryan Durand Josh Amoss Suri Thummala Steve Beuchaw Matthew Malouin Global Asset Allocation February 28, 2005.
THREE FACTOR MODEL: FAMA AND FRENCH (1992) Oren Hovemann Yutong Jiang Erhard Rathsack Jon Tyler.
Chapter 7: Capital Asset Pricing Model and Arbitrage Pricing Theory
McGraw-Hill/Irwin © 2008 The McGraw-Hill Companies, Inc., All Rights Reserved. Capital Asset Pricing and Arbitrage Pricing Theory CHAPTER 7.
R&D-Intensity, Mispricing, and Stock Returns in Taiwan Stock Market.
CHAPTER 13 Investments Empirical Evidence on Security Returns Slides by Richard D. Johnson Copyright © 2008 by The McGraw-Hill Companies, Inc. All rights.
Time Varying Market Efficiency Efficiency is dynamic Efficiency is dynamic We show this by looking at two efficiency metrics We show this by looking at.
Chapter 13 Alternative Models of Systematic Risk.
Comments on: “External Financing, Access to Debt Markets and Stock Returns” by F.Y. Eric C. Lam and K.C. John Wei Santiago Bazdresch University of Minnesota.
Motivation: existing stock valuation models è Variants of the Gordon model: too many unrealistic assumptions (e.g., a constant and flat term structure,
Size Effect Matthew Boyce Huibin Hu Rajesh Raghunathan Lina Yang.
Determinants of Credit Default Swap Spread: Evidence from the Japanese Credit Derivative Market.
Chapter 10 Capital Markets and the Pricing of Risk
Daniel Chi-Hsiou Hung Systematic Risks and Nonlinear Market Models in International Size and Momentum Strategies.
McGraw-Hill/Irwin © 2007 The McGraw-Hill Companies, Inc., All Rights Reserved. Efficient Markets & The Behavioral Critique CHAPTE R 8.
Investments, 8 th edition Bodie, Kane and Marcus Slides by Susan Hine McGraw-Hill/Irwin Copyright © 2009 by The McGraw-Hill Companies, Inc. All rights.
Empirical Evidence on Security Returns
Investments, 8 th edition Bodie, Kane and Marcus Slides by Susan Hine McGraw-Hill/Irwin Copyright © 2009 by The McGraw-Hill Companies, Inc. All rights.
McGraw-Hill/Irwin Copyright © 2008 The McGraw-Hill Companies, Inc., All Rights Reserved. Capital Asset Pricing and Arbitrage Pricing Theory CHAPTER 7.
McGraw-Hill/Irwin Copyright © 2008 The McGraw-Hill Companies, Inc., All Rights Reserved. Capital Asset Pricing and Arbitrage Pricing Theory CHAPTER 7.
Slide 9-1 Market Efficiency 1. Performance of portfolio managers 2. Anomalies 3. Behavioral Finance as a challenge to the EMH 1/7/
High Momentum and Traditional Momentum Strategies: Evidence from China Traditional Momentum (Jegadeesh and Titman, 1993)  A self-financing strategy that.
EFFICIENT MARKET HYPOTHESIS
I wish … I could understand how monkeys can pick up stocks in an efficient market!!!
McGraw-Hill/Irwin © 2007 The McGraw-Hill Companies, Inc., All Rights Reserved. Efficient Markets & The Behavioral Critique CHAPTER 8.
Copyright © 2002 Pearson Education, Inc. Slide 10-1.
1.  In 1970s, Princeton professor Burton Malkiel wrote an influential book titled “A Random Walk Down Wall Street”  He said that stock prices follow.
Portfolio risk and return
Behavioral Finance Fama French March 24 Behavioral Finance Economics 437.
Behavioral Finance Economics 437.
1 Arbitrage risk and the book- to-market anomaly Ali, Hwang and Trombley JFE (2003)
Anomalies and NEWS Joey engelberg (UCSD) R
Does Academic Research Destroy Stock Return Predictability. R
Momentum and Reversal.
Hasib Ahmed Phuvadon Wuthisatian Atsuyuki Naka
The Value Premium and the CAPM
Are Financial Markets Efficient ?
Equilibrium Asset Pricing
Capital Asset Pricing and Arbitrage Pricing Theory
Capital Asset Pricing and Arbitrage Pricing Theory
What Factors Drive Global Stock Returns?
Investor Sentiment.
Momentum, contrarian, and the January seasonality
Momentum Effect (JT 1993).
Leverage, Financial Distress and the Cross-Section of Stock Returns
Chapter 12 Efficient Markets: Theory And Evidence
Capital Asset Pricing and Arbitrage Pricing Theory
Index Models Chapter 8.
Figure 7.1 Efficient Frontier and Capital Market Line
Behavioral Finance Economics 437.
INEFFICIENT MARKETS AND CORPORATE DECISIONS
Presentation transcript:

Jie Zhang, HKPU Forecasted Earnings per Share and the Cross Section of Expected Returns Ling Cen K.C. John Wei Hong Kong University of Science and Technology Jie Zhang The Hong Kong Polytechnic University

Jie Zhang, HKPU 2 Outline Major Findings Motivations Data and Sample Empirical Results Potential Explanations Risk vs. Mispricing Conclusions and Contributions

Jie Zhang, HKPU 3 Major Findings This paper finds a surprisingly strong positive relation between the levels of analysts’ forecasted earnings per share (FEPS) and future stock returns The FEPS anomaly survives a number of well-known cross-sectional effects, such as the size, value and earnings-to-price effects, and price and earnings momentum

Jie Zhang, HKPU 4 Motivations Cross-sectional behavior of stock returns Related to market beta or systematic risk CAPM --- Sharpe (1964); Lintner (1965) ICAPM --- Merton (1973) CCAPM --- Lucas (1978) etc. Asset-pricing anomalies --- FF (1992, 1996) Value strategies based on E/P, C/P, B/M etc. Long-term contrarian and medium-term momentum Fama’s (1976) joint hypothesis problem

Jie Zhang, HKPU 5 Motivations (continued) Why asset-pricing anomalies are interesting? Because they help us to understand more deeply about risk and return! To identify unknown risk factors e.g. liquidity risk or volatility risk To understand market efficiency e.g. market friction, limits of arbitrage

Jie Zhang, HKPU 6 Motivations (continued) The role of FEPS in predicting future returns Prior empirical studies investigating the information content of earnings focus mainly on earnings surprises The return predictability based on either EPS or FEPS per se is ignored

Jie Zhang, HKPU 7 Data and Sample The basic sample: all NYSE, AMEX and Nasdaq- listed common stocks in the intersection of (a) the CRSP stock file, (b) the merged Compustat annual industrial file, and (c) the I/B/E/S unadjusted summary historical file Sample period: Jan – Dec Criteria for each month-stock: Sufficient data on price, size, B/M, return (including past six months), and FEPS Price higher than $5 Positive Book value

Jie Zhang, HKPU 8 Data and Sample (continued) 712,563 stock-month observations, or an average of 2,699 stocks per month Summary statistics (Table I) FEPS is highly correlated with Price, FE/P, and BPS

Jie Zhang, HKPU 9 Table I: Summary Statistics

Jie Zhang, HKPU 10 Empirical Results Trading strategies based on FEPS 10 FEPS-sorted decile portfolios (Table II) Future stock returns increase across deciles as FEPS increases The profits mainly come from the short side High FEPS firms are large in size, high price, greater analyst coverage, higher FE/P, higher FROE => less risky FEPS is not related to B/M or past returns

Jie Zhang, HKPU 11 Table II: Portfolio Characteristics for Equally Weighted Forecasted Earnings Per Share Deciles

Jie Zhang, HKPU 12 Empirical Results (continued) Trading strategies based on FEPS Cumulative returns to the FEPS anomaly (Figure 1) Accumulated at a diminishing speed Not reversal up to 36 months Monthly returns for different holding periods (Figure 2A&B) The abnormal return spreads disappear after 6 months

Jie Zhang, HKPU 13 Figure 1: Cumulative Returns to a Hedge Strategy of Buying the Highest FEPS Stocks and Selling the lowest FEPS Stocks

Jie Zhang, HKPU 14 Figure 2A: Raw Monthly Returns to a Hedge Strategy of Buying the Highest FEPS Stocks and Selling the Lowest FEPS Stocks for Different Holding Periods

Jie Zhang, HKPU 15 Figure 2B: Risk-Adjusted Monthly Returns to a Hedge Strategy of Buying the Highest FEPS Stocks and Selling the Lowest FEPS Stocks for Different Holding Periods

Jie Zhang, HKPU 16 Empirical Results (continued) Trading strategies based on FEPS FEPS strategies within five Size groups (Table IV) FEPS strategies within five Price groups (Table V) Overall, the abnormal returns to FEPS strategies are robust after controlling for firm size, stock price (and analyst coverage) The FEPS anomaly is greatest in stocks with small firm size, low price (and low analyst coverage)

Jie Zhang, HKPU 17 Table IV: Mean Portfolio Returns by Size and Forecasted Earnings Per Share

Jie Zhang, HKPU 18 Table V: Mean Portfolio Returns by Price and Forecasted Earnings Per Share

Jie Zhang, HKPU 19 Empirical Results (continued) Trading strategies based on FEPS FEPS Strategies within 3×3 Size and Book-to- Market Groups (Table VI) FEPS Strategies within 3×3 Size and Momentum Groups (Table VII) The FEPS anomaly survives the book-to- market effect and the price momentum The FEPS anomaly decreases with past returns

Jie Zhang, HKPU 20 Table VI: Mean Portfolio Returns by Size, Book-to-Market, and Forecasted Earnings Per Share

Jie Zhang, HKPU 21 Table VII: Mean Portfolio Returns by Size, Momentum, and Forecasted Earnings Per Share

Jie Zhang, HKPU 22 Empirical Results (continued) Regression tests Time-series regressions (Table III) Risk-adjusted returns (Alpha) increase across FEPS decile portfolios as FEPS increases Mixed risk profile  The highest FEPS stocks behave like big, value stocks  The lowest FEPS stocks behave like small, growth and loser stocks Fama-Macbeth cross-sectional regressions (Table IX) None of identified cross-sectional effects in returns captures the FEPS effect Not driven by specific industries

Jie Zhang, HKPU 23 Table III: Time-Series Tests of Four-Factor Models for Equally Weighted Forecasted Earnings Per Share Deciles

Jie Zhang, HKPU 24 Table IX: Fama-MacBeth Regressions: Explaining the Cross- Section of Individual Stock Returns

Jie Zhang, HKPU 25 Empirical Results (continued) Evidence on mispricing (Table VIII) Larger analyst forecast errors for low FEPS stocks relative to high FEPS stocks Subsequent earnings surprises explain a substantial proportion of the abnormal returns to FEPS strategies

Jie Zhang, HKPU 26 Table VIII: Forecast Errors and Earnings Surprises for Portfolios Classified by Size and Forecasted Earnings Per Share

Jie Zhang, HKPU 27 Empirical Results (continued) Robustness checks Seasonality and subperiod analysis (Table X) Similar January effect with momentum Countercyclical Various measures of earnings Historical EPS; Time-weighted average of forecasted EPS from the IBES detail file (similar results!) total earnings (much weak!) Outliers? (No)

Jie Zhang, HKPU 28 Table X: Seasonality and Subperiod Analysis for Equally Weighted Forecasted Earnings Per Share Deciles

Jie Zhang, HKPU 29 Potential Explanations Risk? Not easy to reconcile the FEPS anomaly with an existing risk framework Firm characteristics Four-factor model Time-series pattern of the FEPS anomaly However, strictly speaking, we cannot rule out the possibility that there is some unknown risk factor.

Jie Zhang, HKPU 30 Potential Explanations (continued) Mispricing? The FEPS anomaly might capture systematic errors-in-expectations of investors on EPS Ex ante forecast errors, i.e. (FEPS – Actual)/|Actual| Abnormal returns around future earnings announcements Two key prerequisites Psychological behavior of investors Limits of arbitrage

Jie Zhang, HKPU 31 Conclusions Forecasted earnings per share (FEPS) has strong predictive power on future stock returns. In particular, stocks with higher FEPS earn substantially higher future returns than stocks with lower FEPS, even after controlling for the market risk, the size, value, and earnings-to-price effects, and price and earnings momentum. Time-series and cross-sectional patterns of the FEPS anomaly, as well as further evidence on forecast errors and abnormal returns around future earnings announcements supports the errors-in-expectations explanation that investors overvalue (undervalue) stocks when their expectations about EPS are low (high).

Jie Zhang, HKPU 32 Contributions of This Paper This paper documents a novel asset- pricing anomaly that can be predicted by FEPS This paper would open up a new field for scholars to study unknown risk factors and market efficiency