Targeted aspect-based emotion analysis to detect opportunities and precaution in financial Twitter messages

Silvia García-Méndez, Francisco de Arriba-Pérez, Ana Barros-Vila, Francisco J. González-Castaño
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Abstract

Microblogging platforms, of which Twitter is a representative example, are valuable information sources for market screening and financial models. In them, users voluntarily provide relevant information, including educated knowledge on investments, reacting to the state of the stock markets in real-time and, often, influencing this state. We are interested in the user forecasts in financial, social media messages expressing opportunities and precautions about assets. We propose a novel Targeted Aspect-Based Emotion Analysis (TABEA) system that can individually discern the financial emotions (positive and negative forecasts) on the different stock market assets in the same tweet (instead of making an overall guess about that whole tweet). It is based on Natural Language Processing (NLP) techniques and Machine Learning streaming algorithms. The system comprises a constituency parsing module for parsing the tweets and splitting them into simpler declarative clauses; an offline data processing module to engineer textual, numerical and categorical features and analyse and select them based on their relevance; and a stream classification module to continuously process tweets on-the-fly. Experimental results on a labelled data set endorse our solution. It achieves over 90% precision for the target emotions, financial opportunity, and precaution on Twitter. To the best of our knowledge, no prior work in the literature has addressed this problem despite its practical interest in decision-making, and we are not aware of any previous NLP nor online Machine Learning approaches to TABEA.
基于方面的定向情感分析,发现金融推特信息中的机遇和预防措施
微博平台是市场筛选和金融模型的宝贵信息来源,Twitter 就是其中的代表。在这些平台上,用户自愿提供相关信息,包括有关投资的知识,对股票市场的状态做出实时反应,并经常影响这种状态。我们感兴趣的是用户在金融、社交媒体信息中的预测,这些信息表达了有关资产的机会和注意事项。我们提出了一种新颖的基于方面的情感分析(Targeted Aspect-Based EmotionAnalysis,TABEA)系统,该系统可以单独识别同一条推文中不同股市资产的金融情感(正面和负面预测)(而不是对整条推文进行整体猜测)。该系统基于自然语言处理(NLP)技术和机器学习流算法。该系统包括一个选区解析模块,用于解析推文并将其拆分成更简单的陈述句;一个离线数据处理模块,用于设计文本、数字和分类特征,并根据其相关性进行分析和选择;以及一个流分类模块,用于持续即时处理推文。在标签数据集上的实验结果证明了我们的解决方案。它对目标情绪、金融机会和推特上的预防措施的准确率超过了 90%。据我们所知,尽管该问题在决策中具有实际意义,但之前的文献中并没有解决该问题的工作,而且我们也没有发现任何针对 TABEA 的 NLP 或在线机器学习方法。
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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