样本外股票溢价的可预测性和样本分裂不变推断

Gueorgui I. Kolev, R. Karapandža
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引用次数: 15

摘要

对于21个股票溢价预测指标的综合集,我们发现样本外可预测性结果的极端变化取决于样本分割日期的选择。为了解决这个问题,我们建议以图形形式报告每个可能的样本分裂的样本外可预测性标准,以及两个对样本分裂选择不变的样本外测试。我们提供了蒙特卡洛证据,证明我们基于自举的推理是有效的。我们提出的样本内、样本分裂不变样本外均值和最大值检验是广泛一致的。最后,我们演示了如何构建样本分割不变样本外可预测性测试,同时控制跨多个变量的数据挖掘。
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Out-of-Sample Equity Premium Predictability and Sample Split Invariant Inference
For a comprehensive set of 21 equity premium predictors we find extreme variation in out-of-sample predictability results depending on the choice of the sample split date. To resolve this issue we propose reporting in graphical form the out-of-sample predictability criteria for every possible sample split, and two out-of-sample tests that are invariant to the sample split choice. We provide Monte Carlo evidence that our bootstrap-based inference is valid. The in-sample, and the sample split invariant out-of-sample mean and maximum tests that we propose, are in broad agreement. Finally we demonstrate how one can construct sample split invariant out-of-sample predictability tests that simultaneously control for data mining across many variables.
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