A random coefficient approach to the predictability of stock returns in panels
Version 2 2024-06-03, 16:01Version 2 2024-06-03, 16:01
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journal contribution
posted on 2024-06-03, 16:01 authored by Joakim WesterlundJoakim Westerlund, P Narayan© The Author, 2014. Most studies of the predictability of returns are based on time series data, and whenever panel data are used, the testing is almost always conducted in an unrestricted unit-by-unit fashion, which makes for a very heavy parametrization of the model. On the other hand, the few panel tests that exist are too restrictive in the sense that they are based on homogeneity assumptions that might not be true. As a response to this, the current study proposes new predictability tests in the context of a random coefficient panel data model, in which the null of no predictability corresponds to the joint restriction that the predictive slope has zero mean and variance. The tests are applied to a large panel of stocks listed at the New York Stock Exchange. The results suggest that while the predictive slopes tend to average to zero, in case of book-to-market and cash flow-to-price the variance of the slopes is positive, which we take as evidence of predictability.
History
Journal
Journal of Financial EconometricsVolume
13Pagination
605-664Location
Oxford, Eng.ISSN
1479-8409eISSN
1479-8417Language
EnglishPublication classification
C1 Refereed article in a scholarly journal, C Journal articleCopyright notice
2015, Oxford University PressIssue
3Publisher
OXFORD UNIV PRESSUsage metrics
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Keywords
Social SciencesBusiness, FinanceEconomicsBusiness & Economicspanel datapredictive regressionstock return predictabilityBOOK-TO-MARKETTIME-SERIESCASH FLOWSREGRESSIONINFERENCEACCRUALSMODELSREALFORECASTSSAMPLE140304 Panel Data Analysis970115 Expanding Knowledge in CommerceCentre for Economics and Financial Econometrics Research
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