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Topic-Dependent Sentiment Analysis of Financial Blogs

机译:金融博客的主题相关情感分析

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摘要

While most work in sentiment analysis in the financial domain has focused on the use of content from traditional finance news, in this work we concentrate on more subjective sources of information, blogs. We aim to automatically determine the sentiment of financial bloggers towards companies and their stocks. To do this we develop a corpus of financial blogs, annotated with polarity of sentiment with respect to a number of companies. We conduct an analysis of the annotated corpus, from which we show there is a significant level of topic shift within this collection, and also illustrate the difficulty that human annotators have when annotating certain sentiment categories. To deal with the problem of topic shift within blog articles, we propose text extraction techniques to create topic-specific sub-documents, which we use to train a sentiment classifier. We show that such approaches provide a substantial improvement over full documentclassification and that word-based approaches perform better than sentence-based or paragraph-based approaches.
机译:尽管在金融领域中,情感分析的大多数工作都集中在传统金融新闻内容的使用上,但在这项工作中,我们集中于更主观的信息来源,博客。我们旨在自动确定金融博客作者对公司及其股票的看法。为此,我们开发了一系列金融博客,并在许多公司中标出了情感极性。我们对带注释的语料库进行了分析,从中我们可以看出在该集合中主题转移的水平很高,并且还说明了人类注释者在注释某些情感类别时遇到的困难。为了解决博客文章中主题转移的问题,我们提出了文本提取技术来创建特定于主题的子文档,我们将其用于训练情感分类器。我们表明,这种方法相对于完整的文档分类提供了实质性的改进,并且基于单词的方法比基于句子或基于段落的方法表现更好。

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