Macro-Finance Decoupling: Robust Evaluations of Macro Asset Pricing Models

Xu Cheng, W. Dou, Z. Liao
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引用次数: 13

Abstract

This paper shows that robust inference under weak identification is important to the evaluation of many influential macro asset pricing models, including (time‐varying) rare‐disaster risk models and long‐run risk models. Building on recent developments in the conditional inference literature, we provide a novel conditional specification test by simulating the critical value conditional on a sufficient statistic. This sufficient statistic can be intuitively interpreted as a measure capturing the macroeconomic information decoupled from the underlying content of asset pricing theories. Macro‐finance decoupling is an effective way to improve the power of the specification test when asset pricing theories are difficult to refute because of a severe imbalance in the information content about the key model parameters between macroeconomic moment restrictions and asset pricing cross‐equation restrictions. We apply the proposed conditional specification test to the evaluation of a time‐varying rare‐disaster risk model and the construction of robust model uncertainty sets.
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宏观金融解耦:宏观资产定价模型的稳健评估
本文表明,弱识别下的稳健推理对于评估许多有影响力的宏观资产定价模型(包括(时变)罕见灾害风险模型和长期风险模型)非常重要。在条件推理文献最新进展的基础上,我们通过在充分统计量上模拟临界值条件,提供了一种新的条件规范检验。这个充分的统计数据可以直观地解释为捕获与资产定价理论的基本内容分离的宏观经济信息的度量。当资产定价理论由于宏观经济时刻约束和资产定价交叉方程约束之间的关键模型参数的信息含量严重不平衡而难以反驳时,宏观金融解耦是提高规范检验能力的有效方法。我们将提出的条件规范检验应用于时变罕见灾害风险模型的评估和鲁棒模型不确定性集的构建。
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