应用经济理论对原油市场基于变压器的情绪分析模型进行微调

Himmet Kaplan, R. Mundani, Heiko Rölke, A. Weichselbraun
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引用次数: 0

摘要

基于新闻媒体情绪预测市场走势在数据分析中有着悠久的传统。随着自然语言处理的进步,转换器架构已经出现,可以实现上下文感知的情感分类。然而,目前为一般金融市场(如FinBERT)建立的方法无法区分特定资产的价值驱动因素。本文通过提出一种在大量相关新闻标题中识别和分类影响原油市场供需的事件的方法来解决这一缺点。然后,我们引入了一个新的情绪分析模型CrudeBERT,该模型利用这些事件来背景化和微调FinBERT,从而对与原油期货市场相关的头条新闻产生改进的情绪分类。一项广泛的评估表明,在原油领域,CrudeBERT优于专有和开源解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CrudeBERT: Applying Economic Theory towards fine-tuning Transformer-based Sentiment Analysis Models to the Crude Oil Market
Predicting market movements based on the sentiment of news media has a long tradition in data analysis. With advances in natural language processing, transformer architectures have emerged that enable contextually aware sentiment classification. Nevertheless, current methods built for the general financial market such as FinBERT cannot distinguish asset-specific value-driving factors. This paper addresses this shortcoming by presenting a method that identifies and classifies events that impact supply and demand in the crude oil markets within a large corpus of relevant news headlines. We then introduce CrudeBERT, a new sentiment analysis model that draws upon these events to contextualize and fine-tune FinBERT, thereby yielding improved sentiment classifications for headlines related to the crude oil futures market. An extensive evaluation demonstrates that CrudeBERT outperforms proprietary and open-source solutions in the domain of crude oil.
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