在数据丰富的环境下预测美联储的情绪

Özge Serbest
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引用次数: 0

摘要

本文研究了联邦公开市场委员会(FOMC)声明中所表达的美联储情绪的可预测性。首先,我们基于文本分析构建了美联储情绪指数。其次,我们通过使用大量宏观金融变量(一个数据丰富的环境)来预测美联储情绪指数。对于预测,我们采用了几种方法;OLS回归、因子模型和惩罚回归。在样本内分析中,我们发现大多数模型的表现优于基准AR(1),这表明使用大数据集可以提高预测性能。然而,在我们的样本外设置中,具有经济政策不确定性和工业生产的简单OLS模型是唯一优于基准的模型。此外,我们通过预测两个金融变量来评估预测美联储情绪的有用性。结果表明,预测的美联储情绪指数提供了比滞后更多的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the Fed Sentiment in a Data-Rich Environment
This paper examines the predictability of the Federal Reserve (Fed) sentiment conveyed by the words in the Federal Open Market Committee (FOMC) statements. First, we construct a Fed sentiment index based on textual analysis. Second, we predict the Fed sentiment index by using a large set of macro-finance variables (a data-rich environment). For the prediction, we employ several methods; OLS regressions, factor models, and penalized regressions. We find that most of the models outperform the benchmark, AR (1), in our in-sample analysis, suggesting that the use of a large dataset can improve forecasting performance. However, a simple OLS model with economic policy uncertainty and industrial production is the only model that beats the benchmark in our out-of-sample setting. Moreover, we assess the usefulness of the predicted Fed sentiment by forecasting two financial variables. The results suggest that the predicted Fed sentiment indices provide more information than its lag.
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