产出增长与通胀的可预测性:一种多期限调查方法

Predictability of Output Growth and Inflation: A Multi-Horizon Survey Approach

Journal of Business & Economic Statistics · 2010
被引 64
人大 AABS 4

中文导读

提出一种未观测成分模型,利用美国GDP增长和通胀的多期限调查预测数据,分析预测误差来源和变量可预测性,发现通胀比GDP增长更可预测且测量误差更小。

Abstract

We develop an unobserved-components approach to study surveys of forecasts containing multiple forecast horizons. Under the assumption that forecasters optimally update their beliefs about past, current, and future state variables as new information arrives, we use our model to extract information on the degree of predictability of the state variable and the importance of measurement errors in the observables. Empirical estimates of the model are obtained using survey forecasts of annual GDP growth and inflation in the United States with forecast horizons ranging from 1 to 24 months, and the model is found to closely match the joint realization of forecast errors at different horizons. Our empirical results suggest that professional forecasters face severe measurement error problems for GDP growth in real time, while this is much less of a problem for inflation. Moreover, inflation exhibits greater persistence, and thus is predictable at longer horizons, than GDP growth and the persistent component of both variables is well approximated by a low-order autoregressive specification.

产出增长可预测性通胀可预测性多期调查预测未观测成分模型