Non-Random Walk Down Wall Street

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A01=A. Craig MacKinlay
A01=Andrew W. Lo
Arbitrage
Arbitrage pricing theory
Ask price
Asset
Asymptotic distribution
Author_A. Craig MacKinlay
Author_Andrew W. Lo
Autocorrelation
Autocovariance
Bias of an estimator
Calculation
Capital asset pricing model
Category=KFFM
Center for Research in Security Prices
Coefficient
Consistent estimator
Correlation coefficient
Covariance matrix
Dummy variable (statistics)
Economic equilibrium
Economics
Economist
Efficient-market hypothesis
Empirical distribution function
eq_bestseller
eq_business-finance-law
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
Estimation
Estimator
Financial economics
Forecasting
Futures exchange
Heteroscedasticity
Independent and identically distributed random variables
Inference
Investment
Investment strategy
Investor
Law of large numbers
Likelihood function
Logarithm
Market price
Market value
Monte Carlo method
Normal distribution
Null distribution
Null hypothesis
Order Imbalance
Order statistic
Percentage
Portfolio Weight
Predictability
Price
Price Change
Pricing
Probability
Profit (economics)
Random variable
Random walk hypothesis
S&P 500 Index
Share price
Sharpe ratio
Standard deviation
Standard error
Statistic
Statistical inference
Statistical significance
Stochastic process
Stock market
Summation
Test statistic
Time series
Trading strategy
Transaction cost
Valuation (finance)
Variance

Product details

  • ISBN 9780691092560
  • Weight: 680g
  • Dimensions: 152 x 235mm
  • Publication Date: 15 Jan 2002
  • Publisher: Princeton University Press
  • Publication City/Country: US
  • Product Form: Paperback
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For over half a century, financial experts have regarded the movements of markets as a random walk--unpredictable meanderings akin to a drunkard's unsteady gait--and this hypothesis has become a cornerstone of modern financial economics and many investment strategies. Here Andrew W. Lo and A. Craig MacKinlay put the Random Walk Hypothesis to the test. In this volume, which elegantly integrates their most important articles, Lo and MacKinlay find that markets are not completely random after all, and that predictable components do exist in recent stock and bond returns. Their book provides a state-of-the-art account of the techniques for detecting predictabilities and evaluating their statistical and economic significance, and offers a tantalizing glimpse into the financial technologies of the future. The articles track the exciting course of Lo and MacKinlay's research on the predictability of stock prices from their early work on rejecting random walks in short-horizon returns to their analysis of long-term memory in stock market prices. A particular highlight is their now-famous inquiry into the pitfalls of "data-snooping biases" that have arisen from the widespread use of the same historical databases for discovering anomalies and developing seemingly profitable investment strategies. This book invites scholars to reconsider the Random Walk Hypothesis, and, by carefully documenting the presence of predictable components in the stock market, also directs investment professionals toward superior long-term investment returns through disciplined active investment management.
Andrew W. Lo is the Harris & Harris Group Professor of Finance at the Sloan School of Management, Massachusetts Institute of Technology. A. Craig MacKinlay is Joseph P.Wargrove Professor of Finance at the Wharton School, University of Pennsylvania. With John Y. Campbell, they are the authors of The Econometrics of Financial Markets (Princeton), which received the Paul A. Samuelson Award in 1997.