Robust tests of stock return predictability under heavy-tailed innovations

被引:0
|
作者
WONG HsinChieh [1 ]
CHUNG MengHua [2 ]
FUH ChengDer [2 ]
PANG Tianxiao [3 ]
机构
[1] Department of Statistics & Fintech and Green Finance Center, Taipei University
[2] Graduate Institute of Statistics, Central University
[3] School of Mathematical Sciences, Zhejiang
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中图分类号
O212.1 [一般数理统计]; F831.51 [];
学科分类号
摘要
This paper provides a robust test of predictability under the predictive regression model with possible heavy-tailed innovations assumption, in which the predictive variable is persistent and its innovations are highly correlated with returns. To this end, we propose a robust test which can capture empirical phenomena such as heavy tails, stationary, and local to unity. Moreover, we develop related asymptotic results without the second-moment assumption between the predictive variable and returns. To make the proposed test reasonable, we propose a generalized correlation and provide theoretical support. To illustrate the applicability of the test, we perform a simulation study for the impact of heavy-tailed innovations on predictability,as well as direct and/or indirect implementation of heavy-tailed innovations to predictability via the unit root phenomenon. Finally, we provide an empirical study for further illustration,to which the proposed test is applied to a U.S. equity data set.
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页码:149 / 168
页数:20
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