Robust Test of Long Run Risk and Valuation Risk Model

G. Gopalakrishna
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Abstract

This paper tests the long run risk and valuation risk model using a robust estimation procedure. The persistent long run component of consumption growth process is proxied by a news based index that is created using a random forest algorithm. This news index is shown to predict aggregate long term consumption growth with an R-square of 57% and is robust to inclusion of other commonly used predictors. I theoretically derive an estimatable bias term in adjusted Euler equation of the model that arises due to measurement error in consumption data and show that this bias term is non-zero. Using a three pass estimation procedure that accounts for this bias, I show that the long run risk and valuation risk model fails to explain cross section of equity returns. This contrasts to the results from regular two pass Fama-MacBeth estimation procedure that implies that the same model explains the cross section of asset returns with statistically significant risk premia estimates.
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长期风险与估值风险模型的稳健性检验
本文采用稳健估计方法对长期风险和估值风险模型进行了检验。消费增长过程的持久长期组件由使用随机森林算法创建的基于新闻的索引来代理。该新闻指数预测总长期消费增长的r平方为57%,并且对包含其他常用预测指标具有稳健性。从理论上推导出由于消费数据测量误差引起的模型调整欧拉方程中的可估计偏差项,并表明该偏差项不为零。使用三次评估程序来解释这种偏差,我表明长期风险和估值风险模型无法解释股权回报的横截面。这与常规的两次Fama-MacBeth估计程序的结果形成对比,后者意味着相同的模型解释了具有统计显著风险溢价估计的资产回报的横截面。
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