High-Frequency News Sentiment and Its Application to Forex Market Prediction

Frank Xing, D. Hoang, Dinh-Vinh Vo
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引用次数: 9

Abstract

Financial news has been identified as an important alternative information source for modeling market dynamics in recent years. While most of the attention goes to stock markets, the foreign exchange (Forex) market, in contrast, is much less studied. Most of the existing text mining research for the Forex market combine news sentiment with other text features, making the contribution of each factor unclear. To this end, we want to study the role of news sentiment exclusively. In particular, we propose a FinBERT-based model to extract high-frequency news sentiment as a 4-dimensional time series. We examine the efficacy of this news sentiment for Forex market prediction without involving any other semantic feature. Experiments show that our model outperforms alternative sentiment analysis approaches and confirm that news sentiment alone may have predictive power for Forex price movements. The sentiment analysis method seems to have a big potential to improve despite that the current predictive power is still weak. The results deepen our understanding of financial text processing systems.
高频新闻情绪及其在外汇市场预测中的应用
近年来,财经新闻已被确定为市场动态建模的重要替代信息源。虽然大多数注意力都集中在股票市场,但相比之下,对外汇市场的研究要少得多。大多数现有的外汇市场文本挖掘研究将新闻情绪与其他文本特征结合起来,使得每个因素的贡献不明确。为此,我们想专门研究新闻情绪的作用。特别地,我们提出了一个基于finbert的模型来提取高频新闻情绪作为一个四维时间序列。我们在不涉及任何其他语义特征的情况下检验这种新闻情绪对外汇市场预测的功效。实验表明,我们的模型优于其他情绪分析方法,并证实新闻情绪本身可能对外汇价格走势具有预测能力。虽然目前的预测能力还很弱,但情绪分析方法似乎有很大的改进潜力。研究结果加深了我们对金融文本处理系统的理解。
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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