广义信息下的动态多元学习

Praveen Kumar, James Yae
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引用次数: 0

摘要

智能体通常对驱动消费和金融回报的多个(可能是时变的)结构参数不确定,但通过嘈杂的相关信号(如总量或宏观经济新闻)进行学习。我们发现多元时变参数与相关信号的动态学习产生内生的长期风险,导致股票风险溢价较大且永不衰减。一般来说,风险溢价是由跨期共不确定性驱动的,即后验均值的动态协方差,而不是文献中强调的不确定性(即信念方差)。信号相关结构在信念和资产价格的动态中起着至关重要的作用,从而决定了股票溢价。信号相关性除了具有定量意义外,还会产生信息质量对股票溢价的非单调效应。我们还提出了高度相关信号普遍存在的经验证据。我们的一般学习框架强调了相关信号对贝叶斯学习的经济影响。
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Dynamic Multivariate Learning with Generalized Information
Agents are generally uncertain about multiple, and possibly time-varying, structural parameters that drive consumption and financial payoffs but learn through noisy correlated signals, such as aggregate or macroeconomic news. We find that dynamic learning of multivariate time-varying parameters with correlated signals generates endogenous long-run risks resulting in large and never-decaying equity risk premium. In general, the risk premium is driven by intertemporal co-uncertainty, that is, the dynamic covariance of posterior means, rather than uncertainty (i.e., variance of beliefs) that is highlighted in the literature. Signal correlation structure plays a crucial role in the dynamics of beliefs and asset prices and hence the determination of the equity premium. Apart from its quantitative implications, signal correlation generates non-monotone effects of information quality on the equity premium. We also present empirical evidence of the prevalence of highly correlated signals. Our general learning framework highlights the economic effects of correlated signals on Bayesian learning.
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