细粒度财经新闻情绪分析

B. Meyer, M. Bikdash, Xiangfeng Dai
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引用次数: 19

摘要

24小时不间断的新闻周期和网络媒体的密集轰炸是一种持续不断的鼓声。积极和消极的消息总是在不断变化,影响着我们当前的观点,并重新评估我们对未来的展望。这一点在资本市场上体现得最为明显,资本市场的资产定价和风险评估都是基于未来的预期。虽然有许多因素会影响交易者购买或出售资产的决定,但可以认为,24小时新闻周期的情绪极大地影响了他们对资产未来价值的看法。本文提出了预测财经新闻正面或负面情绪的新方法。我们的分析发现,当代文档级情感分析方法在细粒度级别上失效。细粒度的分析方法是至关重要的,因为小文本的速度和影响,如tweets和新闻片段,增加了它们对决策过程的影响。我们使用自然语言处理方法从财经新闻标题中提取句法句式。从这些模式中,我们使用词典和机器学习情感分析方法进行实验来预测情绪。我们发现我们的情感预测方法能够始终优于词典方法。我们强大的技术为金融从业者提供了一种方法,将细粒度的新闻情绪因素折叠到他们的定价或风险预测模型中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-grained financial news sentiment analysis
The 24-hour news cycle and barrage of online media is a constant drum beat. The flow of positive and negative news is always in flux, influencing our current perspective and reassessing our future outlook. Nowhere is this more true than in the capital markets where assets are priced and risk assessed based on future expectations. While many factors influence a trader's decision to buy or sell an asset it can be argued that the sentiment from the 24-hour news cycle greatly impacts their outlook on the future value of an asset. In this paper we propose new methods to predict the positive or negative sentiment of financial news. Our analysis has found that contemporary document level sentiment analysis methods break down at fine-grained levels. Fine-grained analysis methods are vitally important as the velocity and impact of small texts, such as tweets and news flashes, increase their influence over the decision process. Using Natural Language Processing methods we extract syntactic sentence patterns from financial news headlines. From these patterns we conduct experiments using both lexicon and machine learning sentiment analysis approaches to predict sentiment. We find that our sentiment prediction methods are able to consistently out perform lexicon methods. Our robust techniques give the financial practitioner a method to fold a fine-grained news sentiment factor into their pricing or risk prediction models.
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