Predicting the reaction of financial markets to Federal Open Market Committee post-meeting statements

Piotr Wójcik, Ewelina Osowska
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Abstract

Abstract This article examines the impact of Federal Open Market Committee (FOMC) statements on stock and foreign exchange markets with the use of text-mining and predictive models. We take into account a long period since March 2001 until June 2023. Unlike in most previous studies, both linear and non-linear methods were applied. We also take into account additional explanatory variables that control for the current corporate managers’ and retail customers’ assessment of the economic situation. The proposed methodology is based on calculating the FOMC statements’ tone (called sentiment) and incorporate it as a potential predictor in the modeling process. For the purpose of sentiment calculation, we utilized the FinBERT pre-trained NLP model. Fourteen event windows around the event are considered. We proved that the information content of FOMC statements is an important predictor of the financial markets’ reaction directly after the event. In the case of models explaining the reaction of financial markets in the first minute after the announcement of the FOMC statement, the sentiment score was the first or the second most important feature, after the market surprise component. We also showed that applying non-linear models resulted in better prediction of market reaction due to identified non-linearities in the relationship between the two most important predictors (surprise component and sentiment score) and returns just after the event. Last but not least, the predictive accuracy during the COVID pandemic was indeed lower than in the previous year.
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预测金融市场对联邦公开市场委员会会后声明的反应
本文利用文本挖掘和预测模型研究了联邦公开市场委员会(FOMC)声明对股票和外汇市场的影响。我们考虑的是自2001年3月至2023年6月的很长一段时间。与以往大多数研究不同的是,本研究同时采用了线性和非线性方法。我们还考虑了控制当前企业经理和零售客户对经济形势评估的其他解释变量。提出的方法是基于计算联邦公开市场委员会声明的基调(称为情绪),并将其作为建模过程中的潜在预测因素。为了进行情感计算,我们使用了FinBERT预训练的NLP模型。考虑围绕事件的14个事件窗口。我们证明了FOMC声明的信息含量是事件发生后金融市场直接反应的重要预测指标。在解释联邦公开市场委员会声明公布后第一分钟金融市场反应的模型中,情绪得分是第一或第二重要的特征,仅次于市场意外成分。我们还表明,应用非线性模型可以更好地预测市场反应,因为两个最重要的预测因子(惊喜成分和情绪得分)与事件发生后的回报之间的关系存在非线性。最后但并非最不重要的是,COVID大流行期间的预测准确性确实低于前一年。
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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