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Bayesian multi-factor model of instability in prices and quantities of risk in U.S. financial markets

机译:美国金融市场价格和风险量不稳定的贝叶斯多因素模型

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摘要

This paper analyzes the empirical performance of two alternative ways in which multi-factor models with time-varying risk exposures and premia may be estimated. The first method echoes the seminal two-pass approach advocated by Fama and MacBeth (1973). The second approach is based on a Bayesian approach to modelling the latent process followed by risk exposures and idiosynchratic volatility. Our application to monthly, 1979-2008 U.S. data for stock, bond, and publicly traded real estate returns shows that the classical, two-stage approach that relies on a nonparametric, rolling window modelling of time-varying betas yields results that are unreasonable. There is evidence that all the portfolios of stocks, bonds, and REITs have been grossly over-priced. On the contrary, the Bayesian approach yields sensible results as most portfolios do not appear to have been misspriced and a few risk premia are precisely estimated with a plausible sign. Real consumption growth risk turns out to be the only factor that is persistently priced throughout the sample.
机译:本文分析了两种可供选择的方法的经验性能,在这些方法中,可以估算出具有随时间变化的风险暴露和溢价的多因素模型。第一种方法呼应了Fama和MacBeth(1973)倡导的开创性的两遍方法。第二种方法基于贝叶斯方法,对潜在过程进行建模,然后进行风险敞口和特殊波动性建模。我们对1979-2008年美国月度股票,债券和公开交易的房地产收益数据的应用表明,经典的两阶段方法依赖于随时间变化的beta的非参数滚动窗口建模,得出的结果是不合理的。有证据表明,所有股票,债券和房地产投资信托基金的投资组合都严重高估了价格。相反,贝叶斯方法产生了明智的结果,因为大多数投资组合似乎并没有被定价过高,并且一些风险溢价被精确地估计为具有合理的征兆。事实证明,实际消费增长风险是整个样本中持续定价的唯一因素。

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