新凯恩斯模型中的行为学习均衡

IF 1.9 3区 经济学 Q2 ECONOMICS Quantitative Economics Pub Date : 2023-01-01 DOI:10.3982/qe1533
Cars Hommes, Kostas Mavromatis, Tolga Özden, Mei Zhu
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引用次数: 2

摘要

我们将行为学习均衡(BLE)引入多元线性框架,并将其应用于新凯恩斯DSGE模型。在BLE中,有界理性智能体使用简单但最优的AR(1)预测规则,其参数与观测到的样本均值和过去数据的自相关性一致。我们在标准的三方程新凯恩斯模型中研究了BLE概念,并为标准的Smets和Wouters(2007)模型开发了一种估计方法。理性预期(REE)、BLE和恒增益学习模型之间的竞赛表明,BLE模型优于REE基准,并且在样本内和样本外适应度方面与恒增益学习模型具有竞争力。当在估计中考虑到通货膨胀预期的短期调查数据时,最优AR(1)信念的样本自相关学习提供了最佳拟合。作为一个政策应用,我们证明了AR(1)预期下的最优泰勒规则继承了历史依赖,并且比REE需要更低的利率平滑度。
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Behavioral learning equilibria in New Keynesian models
We introduce Behavioral Learning Equilibria (BLE) into a multivariate linear framework and apply it to New Keynesian DSGE models. In a BLE, boundedly rational agents use simple, but optimal AR(1) forecasting rules whose parameters are consistent with the observed sample mean and autocorrelation of past data. We study the BLE concept in a standard 3‐equation New Keynesian model and develop an estimation methodology for the canonical Smets and Wouters (2007) model. A horse race between Rational Expectations (REE), BLE, and constant gain learning models shows that the BLE model outperforms the REE benchmark and is competitive with constant gain learning models in terms of in‐sample and out‐of‐sample fitness. Sample‐autocorrelation learning of optimal AR(1) beliefs provides the best fit when short‐term survey data on inflation expectations are taken into account in the estimation. As a policy application, we show that optimal Taylor rules under AR(1) expectations inherit history dependence and require a lower degrees of interest rate smoothing than REE.
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来源期刊
CiteScore
4.10
自引率
5.60%
发文量
28
审稿时长
52 weeks
期刊最新文献
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