预测离散度与预测不确定性之间的关系:来自调查数据—ARCH模型的证据

The relationship between forecast dispersion and forecast uncertainty: Evidence from a survey data—arch model

Journal of Applied Econometrics · 1992
被引 46
人大 AABS 3

中文导读

利用Livingston和SRC调查数据,通过ARCH模型衡量通胀不确定性,发现预测离散度与不确定性正相关,但作为代理变量的适用性因调查系列而异。

Abstract

Abstract This paper examines empirically the relationship between measures of forecast dispersion and forecast uncertainty from data on inflation expectations from the Livingston survey series and the Survey Research Center (SRC) survey series. Because the survey series do not provide probabilistic forecasts of inflation, we derive measures of inflation uncertainty by modelling the conditional variance of the inflation forecast errors from the survey series as an autoregressive conditional heteroscedastic (ARCH) process. The analysis is complicated by the fact that the overlap of forecast horizons for the survey series does not preclude the model's disturbance terms from displaying autocorrelation, and also places a restriction on the specification for the ARCH measures of inflation uncertainty. We estimate the model using Hansen's (1982) generalized method of moments (GMM) procedure to account for the presence of serial correlation and conditional heteroscedasticity in the disturbance terms. The results generally support the hypothesis that the measures of forecast dispersion across survey respondents are positively and statistically significantly associated with the measures of inflation uncertainty. However, the appropriateness of using forecast dispersion measures as proxies for inflation uncertainty is sensitive to the choice of the survey series.

预测离散度预测不确定性通货膨胀预期ARCH模型