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Domain adaptation using stock market prices to refine sentiment dictionaries

机译:使用股票市场价格进行领域调整以完善情感词典

摘要

As part of a larger project where we are examining the relationship and influence of news and social media on stock price, here we investigate the potential links between the sentiment of news articles about companies and stock price change of those companies. We describe a method to adapt sentiment word lists based on news articles about specific companies, in our case downloaded from the Guardian. Our novel approach here is to adapt word lists in sentiment classifiers for news articles based on the relevant stock price change of a company at the time of web publication of the articles. This adaptable word list approach is compared against the financial lexicon from Loughran and McDonald (2011) as well as the more general MPQA word list (Wilson et al., 2005). Our experiments investigate the need for domain specific word lists and demonstrate how general word lists miss indicators of sentiment by not creating or adapting lists that come directly from news about the company. The companies in our experiments are BP, Royal Dutch Shell and Volkswagen.
机译:作为一个较大的项目的一部分,我们在其中研究新闻和社交媒体对股票价格的关系和影响,在这里我们调查有关公司的新闻报道的情绪与这些公司的股价变动之间的潜在联系。我们描述了一种基于有关特定公司的新闻文章来改编情感词表的方法,在本例中是从《卫报》下载的。我们在这里的新颖方法是,根据文章在网络上发布时公司的相关股价变化,将情感分类器中的单词列表应用于新闻文章。将该适应性单词列表方法与Loughran和McDonald(2011)的金融词典以及更一般的MPQA单词列表进行比较(Wilson等,2005)。我们的实验调查了针对特定领域的单词列表的需求,并通过不创建或改编直接来自公司新闻的列表来证明通用单词列表是如何缺少情感指标的。我们进行实验的公司是BP,荷兰皇家壳牌公司和大众汽车公司。

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