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Nonparametric testing for long-horizon predictability with persistent covariates

机译:具有持久协变量的长期预测性的非参数检验

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摘要

We propose a testing procedure for long-horizon predictability via kernel-based nonparametric estimators of long-run covariances between multiperiod returns and persistent covariates. Asymptotic properties of the proposed tests are studied. As for implementation of the test, sieve bootstrap methods are employed to obtain reasonable approximation to the sample distribution of the test statistics. Monte Carlo simulations are conducted to verify the theoretical conjecture. Empirical analysis, using US monthly data from 1929 to 2011, are presented for testing stock return predictability of some forecasting financial variables. Long-term interest rates, unlike default spreads or price-earning ration, are found to show some forecasting power.
机译:我们提出了通过多周期收益和持续协变量之间长期协方差的基于核的非参数估计量来实现长期可预测性的测试程序。研究了拟议测试的渐近性质。对于测试的实施,采用筛网自举方法来合理估计测试统计量的样本分布。进行了蒙特卡洛模拟以验证理论推测。利用美国从1929年到2011年的月度数据,进行了经验分析,以检验某些预测财务变量的股票收益可预测性。人们发现,与默认息差或市盈率不同,长期利率具有一定的预测能力。

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