分解宏观金融期限结构模型中的不确定性

IF 2.2 Q2 BUSINESS, FINANCE
Joseph P Byrne, Shuo Cao
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引用次数: 0

摘要

本文研究了宏观金融期限结构模型易受预测不确定性影响的程度。我们提出了无套利模型的一般形式,并量化了不可预测的定价风险方差以及宏观金融模型不确定性和学习不确定性在可预测性中的相对重要性。基于贝叶斯方法对预测性能和不确定性源的相对贡献进行了动态测量,揭示了不同时间点上占主导地位的定价风险方差和其他重要的不确定性源。宏观金融模型对近期远期利差预测的不确定性很高,在经济衰退前对预测不确定性的贡献率高达 87%,这意味着在形成近期货币政策预期时,宏观变量的信息含量具有很强的分散性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decomposing Uncertainty in Macro-Finance Term Structure Models
This paper studies the extent to which macro-finance term structure models are susceptible to predictive uncertainty. We propose a general form of arbitrage-free models and quantify the relative importance of unpredictable priced risk variance, as well as macro-finance model uncertainty and learning uncertainty in predictability. Predictive performance and relative contributions of uncertainty sources are dynamically measured based on Bayesian methods, revealing dominating priced risk variance and other important uncertainty sources at different points in time. Macro-finance model uncertainty is high for near-term forward spread forecasts and contributes up to 87% of predictive uncertainty prior to recessions, implying strong dispersion in the information content of macro variables when forming near-term monetary policy expectations.
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来源期刊
Review of Asset Pricing Studies
Review of Asset Pricing Studies BUSINESS, FINANCE-
CiteScore
19.80
自引率
0.80%
发文量
17
期刊介绍: The Review of Asset Pricing Studies (RAPS) is a journal that aims to publish high-quality research in asset pricing. It evaluates papers based on their original contribution to the understanding of asset pricing. The topics covered in RAPS include theoretical and empirical models of asset prices and returns, empirical methodology, macro-finance, financial institutions and asset prices, information and liquidity in asset markets, behavioral investment studies, asset market structure and microstructure, risk analysis, hedge funds, mutual funds, alternative investments, and other related topics. Manuscripts submitted to RAPS must be exclusive to the journal and should not have been previously published. Starting in 2020, RAPS will publish three issues per year, owing to an increasing number of high-quality submissions. The journal is indexed in EconLit, Emerging Sources Citation IndexTM, RePEc (Research Papers in Economics), and Scopus.
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