长期预测能力的迷思

The Myth of Long-Horizon Predictability

Review of Financial Studies · 2005
被引 2
人大 AFT50UTD24ABS 4*

中文导读

证明,在无预测能力的原假设下,由于预测变量的持续性和重叠收益,不同期限的估计量几乎完全相关,导致长期预测的统计证据被夸大。

Abstract

The prevailing view in finance is that the evidence for long-horizon stock return predictability is significantly stronger than that for short horizons. We show that for persistent regressors, a characteristic of most of the predictive variables used in the literature, the estimators are almost perfectly correlated across horizons under the null hypothesis of no predictability. For example, for the persistence levels of dividend yields, the analytical correlation is 99% between the 1- and 2-year horizon estimators and 94 % between the 1- and 5-year horizons, due to the combined effects of overlapping returns and the persistence of the predictive variable. Common sampling error across equations leads to ordinary least squares coefficient estimates and R2s that are roughly proportional to the horizon under the null hypothesis. This is the precise pattern found in the data. The asymptotic theory is corroborated, and the analysis extended by extensive simulation evidence. We perform joint tests across horizons for a variety of explanatory variables, and provide an alternative view of the existing evidence. 1

长期收益可预测性预测变量持续性重叠收益联合检验