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Stream-based active learning for sentiment analysis in the financial domain

机译:基于流的主动学习,用于金融领域的情绪分析

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摘要

Studying the relationship between public sentiment and stock prices has been the focus of several studies. This paper analyzes whether the sentiment expressed in Twitter feeds, which discuss selected companies and their products, can indicate their stock price changes. To address this problem, an active learning approach was developed and applied to sentiment analysis of tweet streams in the stock market domain. The paper first presents a static Twitter data analysis problem, explored in order to determine the best Twitter-specific text preprocessing setting for training the Support Vector Machine (SVM) sentiment classifier. In the static setting, the Granger causality test shows that sentiments in stockrelated tweets can be used as indicators of stock price movements a few days in advance, where improved results were achieved by adapting the SVM classifier to categorize Twitter posts into three sentiment categories of positive, negative and neutral (instead of positive and negative only). These findings were adopted in the development of a new streambased active learning approach to sentiment analysis, applicable in incremental learning from continuously changing financial tweet streams. To this end, a series of experiments was conducted to determine the best querying strategy for active learning of the SVM classifier adapted to sentiment analysis of financial tweet streams. The experiments in analyzing stock market sentiments of a particular company show that changes in positive sentiment probability can be used as indicators of the changes in stock closing prices.
机译:研究公众情绪与股价之间的关系一直是几项研究的重点。本文分析了讨论特定公司及其产品的Twitter feed中表达的情绪是否可以表明其股价变化。为了解决这个问题,开发了一种主动学习方法,并将其应用于股票市场领域中推文流的情感分析。本文首先提出了一个静态的Twitter数据分析问题,对其进行了探讨,以确定用于训练支持向量机(SVM)情感分类器的最佳Twitter特定文本预处理设置。在静态设置中,格兰杰因果关系测试显示,与股票相关的推文中的情绪可以提前几天用作股票价格走势的指标,通过调整SVM分类器将Twitter帖子分类为三个积极的情绪类别,可以提高结果,负面和中性(仅正面和负面)。这些发现被用于情感分析的一种新的基于流的主动学习方法的开发中,该方法适用于从不断变化的金融推文流中进行增量学习。为此,进行了一系列实验以确定主动学习SVM分类器的最佳查询策略,该分类器适用于金融推文流的情感分析。分析特定公司的股票市场情绪的实验表明,积极情绪概率的变化可用作股票收盘价变化的指标。

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