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Applied Mathematics-A Journal of Chinese Universities  2018, Vol. 33 Issue (2): 127-    DOI: 10.1007/s11766-018-3590-0
    
A perspective on recent methods on testing predictability of asset returns
LIAO Xiao-sai$^1$ ,  CAI Zong-wu$^{2,1,*}$ ,  CHEN Hai-qiang$^{1}$
$^1$ The Wang Yanan Institute for Studies in Economics, MOE Key Laboratory of Econometrics (Xiamen University), Fujian Provincial Key Laboratory of Statistical Science, Xiamen University, Xiamen 361005, China. 
$^2$ Department of Economics, University of Kansas, Lawrence, KS 66045, USA.
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Abstract  This paper highlights some recent developments in testing predictability of asset returns with focuses on linear mean regressions, quantile regressions and nonlinear regression models. For these models, when predictors are highly persistent and their innovations are contemporarily correlated with dependent variable, the ordinary least squares estimator has a finite-sample bias, and its limiting distribution relies on some unknown nuisance parameter, which is not consistently estimable. Without correcting these issues, conventional test statistics are subject to a serious size distortion and generate a misleading conclusion in testing predictability of asset returns in real applications. In the past two decades, sequential studies have contributed to this subject and proposed various kinds of solutions, including, but not limit to, the bias-correction procedures, the linear projection approach, the IVX filtering idea, the variable addition approaches, the weighted empirical likelihood method, and the double-weight robust approach. Particularly, to catch up with the fast-growing literature in the recent decade, we offer a selective overview of these methods. Finally, some future research topics, such as the econometric theory for predictive regressions with structural changes, and nonparametric predictive models, and predictive models under a more general data setting, are also discussed.

Key wordsasset returns, Heteroskedasticity       high persistency       nonlinearity       predictability       quantile regressions     
Published: 02 July 2018
CLC:  62M20  
  62M10  
  62G35  
Cite this article:

LIAO Xiao-sai, CAI Zong-wu, CHEN Hai-qiang. A perspective on recent methods on testing predictability of asset returns. Applied Mathematics-A Journal of Chinese Universities, 2018, 33(2): 127-.

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http://www.zjujournals.com/amjcub/10.1007/s11766-018-3590-0     OR     http://www.zjujournals.com/amjcub/Y2018/V33/I2/127


A perspective on recent methods on testing predictability of asset returns

This paper highlights some recent developments in testing predictability of asset returns with focuses on linear mean regressions, quantile regressions and nonlinear regression models. For these models, when predictors are highly persistent and their innovations are contemporarily correlated with dependent variable, the ordinary least squares estimator has a finite-sample bias, and its limiting distribution relies on some unknown nuisance parameter, which is not consistently estimable. Without correcting these issues, conventional test statistics are subject to a serious size distortion and generate a misleading conclusion in testing predictability of asset returns in real applications. In the past two decades, sequential studies have contributed to this subject and proposed various kinds of solutions, including, but not limit to, the bias-correction procedures, the linear projection approach, the IVX filtering idea, the variable addition approaches, the weighted empirical likelihood method, and the double-weight robust approach. Particularly, to catch up with the fast-growing literature in the recent decade, we offer a selective overview of these methods. Finally, some future research topics, such as the econometric theory for predictive regressions with structural changes, and nonparametric predictive models, and predictive models under a more general data setting, are also discussed.

关键词: asset returns, Heteroskedasticity ,  high persistency ,  nonlinearity ,  predictability ,  quantile regressions 
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