Essays on Predicting and Explaining the Cross Section of Stock Returns

Essays on Predicting and Explaining the Cross Section of Stock Returns PDF Author: Xun Zhong
Publisher:
ISBN:
Category :
Languages : en
Pages : 181

Get Book Here

Book Description
My dissertation consists of three chapters that study various aspects of stock return predictability. In the first chapter, I explore the interplay between the aggregation of information about stock returns and p-hacking. P-hacking refers to the practice of trying out various variables and model specifications until the result appears to be statistically significant, that is, the p-value of the test statistic is below a particular threshold. The standard information aggregation techniques exacerbate p-hacking by increasing the probability of the type I error. I propose an aggregation technique, which is a simple modification of 3PRF/PLS, that has an opposite property: the predictability tests applied to the combined predictor become more conservative in the presence of p-hacking. I quantify the advantages of my approach relative to the standard information aggregation techniques by using simulations. As an illustration, I apply the modified 3PRF/PLS to three sets of return predictors proposed in the literature and find that the forecasting ability of combined predictors in two cases cannot be explained by p-hacking. In the second chapter, I explore whether the stochastic discount factors (SDFs) of five characteristic-based asset pricing models can be explained by a large set of macroeconomic shocks. Characteristic-based factor models are linear models whose risk factors are returns on trading strategies based on firm characteristics. Such models are very popular in finance because of their superior ability to explain the cross-section of expected stock returns, but they are also criticized for their lack of interpretability. Each characteristic-based factor model is uniquely characterized by its SDF. To approximate the SDFs by a comprehensive set of 131 macroeconomic shocks without overfitting, I employ the elastic net regression, which is a machine learning technique. I find that the best combination of macroeconomic shocks can explain only a relatively small part of the variation in the SDFs, and the whole set of macroeconomic shocks approximates the SDFs not better than only few shocks. My findings suggest that behavioral factors and sentiment are important determinants of asset prices. The third chapter investigates whether investors efficiently aggregate analysts' earnings forecasts and whether combinations of the forecasts can predict announcement returns. The traditional consensus forecast of earnings used by academics and practitioners is the simple average of all analysts' earnings forecasts (Naive Consensus). However, this measure ignores that there exists a cross-sectional variation in analysts' forecast accuracy and persistence in such accuracy. I propose a consensus that is an accuracy-weighted average of all analysts' earnings forecasts (Smart Consensus). I find that Smart Consensus is a more accurate predictor of firms' earnings per share (EPS) than Naive Consensus. If investors weight forecasts efficiently according to the analysts' forecast accuracy, the market reaction to earnings announcements should be positively related to the difference between firms' reported earnings and Smart Consensus (Smart Surprise) and should be unrelated to the difference between firms' reported earnings and Naive Consensus (Naive Surprise). However, I find that market reaction to earnings announcements is positively related to both measures. Thus, investors do not aggregate forecasts efficiently. In addition, I find that the market reaction to Smart Surprise is stronger in stocks with higher institutional ownership. A trading strategy based on Expectation Gap, which is the difference between Smart and Naive Consensuses, generates positive risk-adjusted returns in the three-day window around earnings announcements.

Essays on Predicting and Explaining the Cross Section of Stock Returns

Essays on Predicting and Explaining the Cross Section of Stock Returns PDF Author: Xun Zhong
Publisher:
ISBN:
Category :
Languages : en
Pages : 181

Get Book Here

Book Description
My dissertation consists of three chapters that study various aspects of stock return predictability. In the first chapter, I explore the interplay between the aggregation of information about stock returns and p-hacking. P-hacking refers to the practice of trying out various variables and model specifications until the result appears to be statistically significant, that is, the p-value of the test statistic is below a particular threshold. The standard information aggregation techniques exacerbate p-hacking by increasing the probability of the type I error. I propose an aggregation technique, which is a simple modification of 3PRF/PLS, that has an opposite property: the predictability tests applied to the combined predictor become more conservative in the presence of p-hacking. I quantify the advantages of my approach relative to the standard information aggregation techniques by using simulations. As an illustration, I apply the modified 3PRF/PLS to three sets of return predictors proposed in the literature and find that the forecasting ability of combined predictors in two cases cannot be explained by p-hacking. In the second chapter, I explore whether the stochastic discount factors (SDFs) of five characteristic-based asset pricing models can be explained by a large set of macroeconomic shocks. Characteristic-based factor models are linear models whose risk factors are returns on trading strategies based on firm characteristics. Such models are very popular in finance because of their superior ability to explain the cross-section of expected stock returns, but they are also criticized for their lack of interpretability. Each characteristic-based factor model is uniquely characterized by its SDF. To approximate the SDFs by a comprehensive set of 131 macroeconomic shocks without overfitting, I employ the elastic net regression, which is a machine learning technique. I find that the best combination of macroeconomic shocks can explain only a relatively small part of the variation in the SDFs, and the whole set of macroeconomic shocks approximates the SDFs not better than only few shocks. My findings suggest that behavioral factors and sentiment are important determinants of asset prices. The third chapter investigates whether investors efficiently aggregate analysts' earnings forecasts and whether combinations of the forecasts can predict announcement returns. The traditional consensus forecast of earnings used by academics and practitioners is the simple average of all analysts' earnings forecasts (Naive Consensus). However, this measure ignores that there exists a cross-sectional variation in analysts' forecast accuracy and persistence in such accuracy. I propose a consensus that is an accuracy-weighted average of all analysts' earnings forecasts (Smart Consensus). I find that Smart Consensus is a more accurate predictor of firms' earnings per share (EPS) than Naive Consensus. If investors weight forecasts efficiently according to the analysts' forecast accuracy, the market reaction to earnings announcements should be positively related to the difference between firms' reported earnings and Smart Consensus (Smart Surprise) and should be unrelated to the difference between firms' reported earnings and Naive Consensus (Naive Surprise). However, I find that market reaction to earnings announcements is positively related to both measures. Thus, investors do not aggregate forecasts efficiently. In addition, I find that the market reaction to Smart Surprise is stronger in stocks with higher institutional ownership. A trading strategy based on Expectation Gap, which is the difference between Smart and Naive Consensuses, generates positive risk-adjusted returns in the three-day window around earnings announcements.

Two Essays on the Cross-section of Stock Returns

Two Essays on the Cross-section of Stock Returns PDF Author: Zhuo Tan
Publisher:
ISBN:
Category : Finance
Languages : en
Pages :

Get Book Here

Book Description
This dissertation consists of two essays that address issues related to the cross-section of stock returns. The first essay documents that actively managed mutual funds invest disproportionately in stocks with high historical risk-adjusted returns (alpha). This alpha-chasing behavior has a destabilizing effect on stock price. Specifically, low-alpha stocks earn higher subsequent returns than high-alpha stocks up to two months following portfolio formation—i.e. alpha is not persistent, but reverses. Consistent with liquidity-based price pressure, I find that low- (high)-alpha stocks that are heavily traded by mutual funds exhibit strong subsequent return reversals. Further analysis finds that trades from a few large funds are the primary source of this trading. However, there is no evidence to support the view that herding by fund managers explains fund managers’ preference for high-alpha stocks. The reason why managers of large mutual funds chase high-alpha stocks when alpha is not persistent remains a puzzle. The second essay shows that a better measure of mispricing confirms the primary prediction of the limits-of-arbitrage hypothesis that high levels of idiosyncratic risk prevent arbitrage activity. Rather than using returns to size, B/M and momentum portfolios, I construct a mispricing measure based on the difference between a stock’s price and its intrinsic value estimated using the residual income model of Ohlson (1995). I confirm that this measure explains future returns. I then use it and idiosyncratic return volatility to proxy for mispricing and arbitrage risk, respectively. I find that expected returns to undervalued (overvalued) stocks monotonically increase (decrease) with idiosyncratic risk. These findings support the limits-of-arbitrage hypothesis and that idiosyncratic risk is an impediment to arbitrage.

Essays on the Cross Section of Stock Returns

Essays on the Cross Section of Stock Returns PDF Author: Yong Wang
Publisher:
ISBN:
Category :
Languages : en
Pages : 139

Get Book Here

Book Description
Many factor models, with a variety of conditioning variables, have been proposed to explain cross-sectional returns. In chapter 2, we run a horse race among several proposed models. The purpose is to better understand which factors, in combination with which conditioning variables, explain the cross section of returns better, and to seek an economic interpretation of the specifications that appear most promising. We find that a consumption growth factor, conditioning on lagged business income growth, is the most successful in explaining cross sectional variation of average quarterly returns in the 25 Fama-French portfolios.

The Cross-section of Stock Returns

The Cross-section of Stock Returns PDF Author: Stijn Claessens
Publisher: World Bank Publications
ISBN:
Category : Rate of return
Languages : en
Pages : 28

Get Book Here

Book Description


Essays on Asset Pricing Models

Essays on Asset Pricing Models PDF Author: Yan Li
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

Get Book Here

Book Description
My dissertation contains three chapters. Chapter one proposes a nonparametric method to evaluate the performance of a conditional factor model in explaining the cross section of stock returns. There are two tests: one is based on the individual pricing error of a conditional model and the other is based on the average pricing error. Empirical results show that for valueweighted portfolios, the conditional CAPM explains none of the asset-pricing anomalies, while the conditional Fama-French three-factor model is able to account for the size effect, and it also helps to explain the value effect and the momentum effect. From a statistical point of view, a conditional model always beats a conditional one because it is closer to the true data-generating process. Chapter two proposes a general equilibrium model to study the implications of prospect theory for individual trading, security prices and trading volume. Its main finding is that different components of prospect theory make different predictions. The concavity/convexity of the value function drives a disposition effect, which in turn leads to momentum in the cross-section of stock returns and a positive correlation between returns and volumes. On the other hand, loss aversion predicts exactly the opposite, namely a reversed disposition effect and reversal in the cross-section of stock returns, as well as a negative correlation between returns and volumes. In a calibrated economy, when prospect theory preference parameters are set at the values estimated by the previous studies, our model can generate price momentum of up to 7% on an annual basis. Chapter three studies the role of aggregate dividend volatility in asset prices. In the model, narrow-framing investors are loss averse over fluctuations in the value of their financial wealth. Persistent dividend volatility indicates persistent fluctuation in their financial wealth and makes stocks undesirable. It helps to explain the salient feature of the stock market including the high mean, excess volatility, and predictability of stock returns while maintaining a low and stable risk-free rate. Consistent with the data, stock returns have a low correlation with consumption growth, and Sharpe ratios are time-varying.

Essays on the Analysis of Cross-sectional Stock Returns

Essays on the Analysis of Cross-sectional Stock Returns PDF Author: 林琦
Publisher:
ISBN:
Category : Investment analysis
Languages : en
Pages : 158

Get Book Here

Book Description


Essays on Stock Return Predictability

Essays on Stock Return Predictability PDF Author: Qing Bai
Publisher:
ISBN:
Category :
Languages : en
Pages : 96

Get Book Here

Book Description
The dissertation consists of two essays. Essay I examines the return predictability by firm level R & D and innovation measures and shows that technology spillover helps to explain the positive innovation-return relation. Essay II propose a novel measure of conditional value premium based on firm's stock split announcement. This measure is shown to have a strong predicting power over value premium both in sample and out of sample. Essay I: I show that technology spillovers are important information phenomena that benefit both other innovators (as emphasized in the Industrial Organization literature) and stock market investors. I find that the premium associated with R & D and patenting activities is largely restricted to firms located in more isolated technology spaces with fewer spillovers. Moreover, there is a strong lead-lag effect among firms engaging in innovative activities: the stock prices of firms in more isolated technology spaces react more slowly to new information than do the stock prices of firms in more competitive technology spaces. Finally, announcement-day returns to patent grants are greater for more technologically important patents (measured by forward citations), but only for firms in more crowded technology spaces. My results indicate that investors are able to value innovative investments by exploiting the information flows associated with greater technology spillovers. Essay II: I propose a novel conditional value premium measure based on the present-value relation that the stock price impact of a firm's public announcement reveals the firm's expected discount rates. Specifically, because most splitting stocks are growth stocks on which, by construction, the value premium has strong influence, the average splitting stock announcement-day returns track closely conditional value premium. I find very similar results using announcements of divested asset acquisitions in which acquirers are usually growth firms. Consistent with risk-based explanations, my conditional value premium measure correlates positively with future GDP growth and helps explain the cross-section of stock returns.

Essays in Honor of Peter C. B. Phillips

Essays in Honor of Peter C. B. Phillips PDF Author: Thomas B. Fomby
Publisher: Emerald Group Publishing
ISBN: 1784411825
Category : Political Science
Languages : en
Pages : 772

Get Book Here

Book Description
This volume honors Professor Peter C.B. Phillips' many contributions to the field of econometrics. The topics include non-stationary time series, panel models, financial econometrics, predictive tests, IV estimation and inference, difference-in-difference regressions, stochastic dominance techniques, and information matrix testing.

Essays in Empirical Asset Pricing

Essays in Empirical Asset Pricing PDF Author: Riccardo Sabbatucci
Publisher:
ISBN:
Category :
Languages : en
Pages : 162

Get Book Here

Book Description
The focus of my dissertation is the study of stock market predictability. More precisely, I use econometric tools to understand, explain, and predict aggregate and cross-sectional patterns in stock prices. Predictability of aggregate stock market returns and dividend growth is a widely studied topic, of great interest to both academics and practitioners. It is related to theories of market efficiency and information diffusion, both rational and behavioral. It also allows us to determine which types of information generate the movements in stock prices that we observe. Understanding why stock prices move and what factors drive their variation is critical from theoretical and policy-making perspectives. Chapter 1 of my dissertation revisits one of the main findings of the predictability literature, namely that all variation in aggregate stock prices is explained by changes in aggregate risk through discount rates and none by news about firms' expected cash flows. I propose a more comprehensive measure of dividends that includes M&A cash flows and show that dividend growth is predictable and that cash flow news explains around 60% of the observed variation in prices, while the remaining 40% is accounted for by discount rate news. Chapter 2 shows that information about fundamentals of the aggregate economy derived from closely held firms help predict stock returns of public firms. A common feature of most stock market predictors is that they are constructed using financial data of public firms. I construct a new economy-wide dividend-price ratio that takes into account dividends and market capitalization of both listed (public) and non-listed (private) U.S. companies and show that it strongly predicts stock returns both in-sample and out-of-sample. I also find that changes in dividends of private firms lead those of public firms and that the economy-wide dividend-price ratio subsumes the standard dividend-price ratio in predictive regressions. Chapter 3, co-authored with Christopher A. Parsons and Sheridan Titman, explores geographic momentum: a positive lead-lag stock return relation between neighboring firms operating in different sectors. It shows that a portfolio of firms headquartered in the same area, but operating in different sectors, strongly forecasts individual stock returns up to one year ahead. The economic significance of a city-momentum trading strategy is of similar magnitude to that observed with industry momentum. However, while industry momentum is strongest among thinly traded, small firms, and/or those with scant analyst following, geographic momentum is unrelated to these proxies for information processing. We propose an explanation linking this to the structure of the investment analyst business, which is organized by sector, rather than by geographic region.

Two Essays on the Cross-section of Stock Returns

Two Essays on the Cross-section of Stock Returns PDF Author: Peter Wong
Publisher:
ISBN:
Category :
Languages : en
Pages : 99

Get Book Here

Book Description
This dissertation studies two distinct topics. First, I examine whether the idiosyncratic volatility discount anomaly documented by Ang, Hodrick, Xing, and Zhang (2006, 2009) is related to earnings shocks, and I find that a substantial portion of the idiosyncratic volatility discount can be explained by earnings momentum and post-formation earnings shocks. When these two effects are accounted for, idiosyncratic volatility has little, if any, return predictability. Second, I propose a parsimonious measure to characterize the severity of the microstructure noise at the individual stock level and assess the impact of this microstructure induced illiquidity on cross-sectional return predictability. One of the main advantages of this measure is that it is very simple to construct (requires only daily stock returns data). Using this measure I find that firms with the largest microstructure bias command a return premium as large as 9.61% per year, even after controlling for the premiums associated with size, book-to-market, momentum, and traditional liquidity price impact and cost measures. In addition, the bias premium is strongest among small, low price, volatile, and illiquid stocks. On the other hand, the premiums associated with size, illiquidity, and return reversal are most pronounced among stocks with the largest bias.