Testing for Granger Causality with Mixed Frequency Data

Eric Ghysels, Jonathan B. Hill, Kaiji Motegi
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引用次数: 93

Abstract

We develop Granger causality tests that apply directly to data sampled at different frequencies. We show that taking advantage of mixed frequency data allows us to better recover causal relationships when compared to the conventional common low frequency approach. We also show that the new causality tests have higher local asymptotic power as well as more power in finite samples compared to conventional tests. In an empirical application involving U.S. macroeconomic indicators, we show that the mixed frequency approach and the low frequency approach produce very different causal implications, with the former yielding more intuitively appealing result.
混合频率数据格兰杰因果关系检验
我们开发格兰杰因果检验,直接适用于不同频率采样的数据。我们表明,与传统的常见低频方法相比,利用混合频率数据可以更好地恢复因果关系。我们还表明,与传统检验相比,新的因果检验在有限样本中具有更高的局部渐近幂和更高的幂。在涉及美国宏观经济指标的实证应用中,我们表明混合频率方法和低频方法产生了非常不同的因果含义,前者产生了更直观的结果。
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