Economic Prediction with the FOMC Minutes: An Application of Text Mining

Yu-Lieh Huang, Chung-Ming Kuan
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引用次数: 1

Abstract

Abstract We conduct a sentiment analysis of the FOMC (Federal Open Market Committee) minutes based on the text mining results and examine the predictive ability of the resulting sentiment indicators. An adaptive Bayesian approach is employed to build the sentiment indicator for each of the Fed's mandates. We also improve existing mining techniques by identifying economics-related compound words and terminology in the minutes. Our empirical study shows that the mandate-specific indicators exhibit distinct patterns which help illustrate the FOMC's policy emphasis in different periods. It is also shown that these indicators are useful in predicting economic variables and generating superior out-of-sample forecasts. These results support the existing findings that the Fed possesses valuable information about the U.S. economy.
经济预测与FOMC会议记录:文本挖掘的应用
本文基于文本挖掘结果对FOMC(联邦公开市场委员会)会议纪要进行情绪分析,并检验所得情绪指标的预测能力。采用自适应贝叶斯方法为美联储的每项任务建立信心指标。我们还通过在会议记录中识别与经济相关的复合词和术语来改进现有的挖掘技术。我们的实证研究表明,具体任务指标表现出不同的模式,这有助于说明FOMC在不同时期的政策重点。还表明这些指标在预测经济变量和产生更好的样本外预测方面是有用的。这些结果支持了现有的发现,即美联储拥有有关美国经济的宝贵信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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