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POSTERIOR-PREDICTIVE EVIDENCE ON US INFLATION USING EXTENDED NEW KEYNESIAN PHILLIPS CURVE MODELS WITH NON-FILTERED DATA

机译:使用扩展的具有未过滤数据的新凯恩斯菲利普曲线模型对美国通货膨胀进行后验预测

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摘要

Changing time series properties of US inflation and economic activity, measured as marginal costs, are modeled within a set of extended New Keynesian Phillips curve (NKPC) models. It is shown that mechanical removal or modeling of simple low-frequency movements in the data may yield poor predictive results which depend on the model specification used. Basic NKPC models are extended to include structural time series models that describe typical time-varying patterns in levels and volatilities. Forward- and backward-looking expectation components for inflation are incorporated and their relative importance is evaluated. Survey data on expected inflation are introduced to strengthen the information in the likelihood. Use is made of simulation-based Bayesian techniques for the empirical analysis. No credible evidence is found on endogeneity and long-run stability between inflation and marginal costs. Backward-looking inflation appears stronger than forward-looking inflation. Levels and volatilities of inflation are estimated more precisely using rich NKPC models. The extended NKPC structures compare favorably with existing basic Bayesian vector autoregressive and stochastic volatility models in terms of fit and prediction. Tails of the complete predictive distributions indicate an increase in the probability of deflation in recent years.
机译:在一组扩展的新凯恩斯主义菲利普斯曲线(NKPC)模型中,建模了以边际成本计量的美国通货膨胀和经济活动的时间序列属性变化。结果表明,对数据中的简单低频运动进行机械去除或建模可能会产生不良的预测结果,具体取决于所使用的模型规格。基本的NKPC模型已扩展为包括结构时间序列模型,这些模型描述了水平和波动率的典型时变模式。合并了通货膨胀的前瞻性和后瞻性预期组成部分,并评估了它们的相对重要性。引入了有关预期通货膨胀的调查数据,以增强可能性方面的信息。利用基于仿真的贝叶斯技术进行经验分析。没有关于通货膨胀和边际成本之间的内生性和长期稳定性的可靠证据。后向通胀似乎比前向通胀强。使用丰富的NKPC模型可以更精确地估算通胀水平和波动率。在拟合和预测方面,扩展的NKPC结构与现有的基本贝叶斯矢量自回归和随机波动率模型相比具有优势。完整的预测分布的尾巴表明近年来通缩的可能性有所增加。

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  • 来源
    《Journal of applied econometrics》 |2014年第7期|1164-1182|共19页
  • 作者单位

    Department of Quantitative Economics, Maastricht University;

    Department of Economics, Koc University Istanbul, Rumelifeneri Yolu, 34450 Sariyer, Istanbul, Turkey,Department of Quantitative Economics, University of Amsterdam;

    Econometric Institute, Erasmus University Rotterdam,Tinbergen Institute;

    Econometric Institute, Erasmus University Rotterdam,Tinbergen Institute,Department of Econometrics, VU University Amsterdam;

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  • 入库时间 2022-08-17 23:48:18

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