Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors
We uncover extensive evidence of out-of-sample return predictability for industry portfolios based on a principal component approach that incorporates information from a large number of predictors. Moreover, we find substantial differences in the degree of return predictability across industries. To...
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sg-smu-ink.lkcsb_research-28022015-04-28T09:27:05Z Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors Rapach, David E. Strauss, Jack K. TU, Jun Zhou, Guofu We uncover extensive evidence of out-of-sample return predictability for industry portfolios based on a principal component approach that incorporates information from a large number of predictors. Moreover, we find substantial differences in the degree of return predictability across industries. To understand these differences, we propose a decomposition of out-of-sample industry return predictability into beta and alpha shares, where the former corresponds to a conditional beta pricing model. A conditional version of the popular Fama-French three-factor model accounts for nearly all out-of-sample industry return predictability, with exposures to time-varying market and size risk premiums especially important for explaining differences in return predictability across industries. We also show that out-of-sample return predictability is economically important from an asset allocation perspective and can be exploited to improve portfolio performance for industry-rotation investment strategies. 2011-02-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/lkcsb_research/1803 https://ink.library.smu.edu.sg/context/lkcsb_research/article/2802/viewcontent/TuJunOutofSampleIndustryReturn.pdf Research Collection Lee Kong Chian School Of Business eng Institutional Knowledge at Singapore Management University out-of-sample return predictability industry portfolios conditional beta pricing model alpha predictability Fama-French factors industry-rotation strategy Finance and Financial Management Portfolio and Security Analysis |
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out-of-sample return predictability industry portfolios conditional beta pricing model alpha predictability Fama-French factors industry-rotation strategy Finance and Financial Management Portfolio and Security Analysis Rapach, David E. Strauss, Jack K. TU, Jun Zhou, Guofu Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors |
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We uncover extensive evidence of out-of-sample return predictability for industry portfolios based on a principal component approach that incorporates information from a large number of predictors. Moreover, we find substantial differences in the degree of return predictability across industries. To understand these differences, we propose a decomposition of out-of-sample industry return predictability into beta and alpha shares, where the former corresponds to a conditional beta pricing model. A conditional version of the popular Fama-French three-factor model accounts for nearly all out-of-sample industry return predictability, with exposures to time-varying market and size risk premiums especially important for explaining differences in return predictability across industries. We also show that out-of-sample return predictability is economically important from an asset allocation perspective and can be exploited to improve portfolio performance for industry-rotation investment strategies. |
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text |
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Rapach, David E. Strauss, Jack K. TU, Jun Zhou, Guofu |
author_facet |
Rapach, David E. Strauss, Jack K. TU, Jun Zhou, Guofu |
author_sort |
Rapach, David E. |
title |
Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors |
title_short |
Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors |
title_full |
Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors |
title_fullStr |
Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors |
title_full_unstemmed |
Out-of-Sample Industry Return Predictability: Evidence from A Large Number of Predictors |
title_sort |
out-of-sample industry return predictability: evidence from a large number of predictors |
publisher |
Institutional Knowledge at Singapore Management University |
publishDate |
2011 |
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https://ink.library.smu.edu.sg/lkcsb_research/1803 https://ink.library.smu.edu.sg/context/lkcsb_research/article/2802/viewcontent/TuJunOutofSampleIndustryReturn.pdf |
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