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Using a contextual entropy model to expand emotion words and their intensity for the sentiment classification of stock market news

机译:使用上下文熵模型扩展情感词及其强度,以进行股市新闻的情感分类

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Sentiment classification of stock market news involves identifying positive and negative news articles, and is an emerging technique for making stock trend predictions which can facilitate investor decision making. In this paper, we propose the presence and intensity of emotion words as features to classify the sentiment of stock market news articles. To identify such words and their intensity, a contextual entropy model is developed to expand a set of seed words generated from a small corpus of stock market news articles with sentiment annotation. The contextual entropy model measures the similarity between two words by comparing their contextual distributions using an entropy measure, allowing for the discovery of words similar to the seed words. Experimental results show that the proposed method can discover more useful emotion words and their corresponding intensity, thus improving classification performance. Performance was further improved by the incorporation of intensity into the classification, and the proposed method outperformed the previously-proposed pointwise mutual information (PMI)-based expansion methods.
机译:股票市场新闻的情绪分类涉及识别正面和负面新闻,是一种新兴的股票趋势预测技术,可以促进投资者的决策。在本文中,我们提出情感词的出现和强度作为对股市新闻文章的情绪进行分类的特征。为了识别此类单词及其强度,开发了上下文熵模型,以扩展从一小批带有情感注释的股市新闻文章生成的种子单词集。上下文熵模型通过使用熵测度比较两个单词的上下文分布来测量两个单词之间的相似性,从而可以发现与种子单词相似的单词。实验结果表明,该方法可以发现更多有用的情感词及其对应的强度,从而提高分类性能。通过将强度合并到分类中,可以进一步提高性能,并且所提出的方法优于先前提出的基于点向互信息(PMI)的扩展方法。

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