趋势通货膨胀备选模型的贝叶斯评价

Todd E. Clark, Tae-Yong Doh
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引用次数: 37

摘要

随着趋势通胀的概念现在被广泛理解为是衡量公众对央行通胀目标的看法的重要指标,对长期通胀预测的准确性也很重要,本文使用贝叶斯方法来评估趋势通胀的替代模型。为了反映简化形式的通货膨胀建模和预测中常见的模型,我们指定了一系列通货膨胀模型,包括:具有恒定趋势的AR;趋势等于上期通货膨胀率的应收帐款;局部级模型;随机游走趋势的AR;趋势与专业预测者调查的长期预期相等的AR;参数时变的AR。我们考虑具有恒定冲击方差和随机波动的模型版本。我们首先使用贝叶斯度量来比较备选模型的拟合。然后,我们使用贝叶斯模型平均方法来解释围绕趋势通货膨胀模型的不确定性,以获得对美国趋势通货膨胀的另一种估计,并生成中期通货膨胀的模型平均预测。我们的分析得出了两个广泛的结果。首先,在模型拟合和密度预测精度上,随机波动率模型始终优于恒定波动率模型。其次,对于趋势通货膨胀的规格,很难说一种趋势通货膨胀模型是最好的。在核心个人消费支出通胀趋势的替代模型中,Stock和Watson(2007)的地方水平规范和基于调查的趋势规范几乎同样好。在相互竞争的趋势GDP通胀模型中,有几个趋势指标似乎同样好。
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A Bayesian Evaluation of Alternative Models of Trend Inflation
With the concept of trend inflation now widely understood as to be important as a measure of the public's perception of the inflation goal of the central bank and important to the accuracy of longer-term inflation forecasts, this paper uses Bayesian methods to assess alternative models of trend inflation. Reflecting models common in reduced-form inflation modeling and forecasting, we specify a range of models of inflation, including: AR with constant trend; AR with trend equal to last period's inflation rate; local level model; AR with random walk trend; AR with trend equal to the long-run expectation from the Survey of Professional Forecasters; and AR with time-varying parameters. We consider versions of the models with constant shock variances and with stochastic volatility. We first use Bayesian metrics to compare the fits of the alternative models. We then use Bayesian methods of model averaging to account for uncertainty surrounding the model of trend inflation, to obtain an alternative estimate of trend inflation in the U.S. and to generate medium-term, model-average forecasts of inflation. Our analysis yields two broad results. First, in model fit and density forecast accuracy, models with stochastic volatility consistently dominate those with constant volatility. Second, for the specification of trend inflation, it is difficult to say that one model of trend inflation is the best. Among alternative models of the trend in core PCE inflation, the local level specification of Stock and Watson (2007) and the survey-based trend specification are about equally good. Among competing models of trend GDP inflation, several trend specifications seem to be about equally good.
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