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Leveraging Sentiment Analysis for Topic Detection

机译:利用主题检测的情感分析

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摘要

The emergence of new social media such as blogs, message boards, news, and web content in general has dramatically changed the ecosystems of corporations. Consumers, non-profit organizations, and other forms of communities are extremely vocal about their opinions and perceptions on companies and their brands on the web. The ability to leverage such "voice of the web" to gain consumer, brand, and market insights can be truly differentiating and valuable to today’s corporations. In particular, one important form of insights can be derived from sentiment analysis on web content. Sentiment analysis traditionally emphasizes on classification of web comments into positive, neutral, and negative categories. This paper goes beyond sentiment classification by focusing on techniques that could detect the topics that are highly correlated with the positive and negative opinions. Such techniques, when coupled with sentiment classification, can help the business analysts to understand both the overall sentiment scope as well as the drivers behind the sentiment. In this paper, we describe our overall sentiment analysis system that consists of such sentiment analysis techniques. We then detail a novel topic detection method using point-wise mutual information and term frequency distribution. We demonstrate the effectiveness of our overall approaches via several case studies on different social media data sets.
机译:博客,留言板,新闻和网上内容等新社交媒体的出现大大改变了公司的生态系统。消费者,非营利组织和其他形式的社区对他们的意见和对网上公司和他们的品牌的看法具有极大的声音。利用这种“网络之声”的能力来获取消费者,品牌和市场洞察力可以真正差异,对今天的公司有价值。特别地,可以从网上内容的情绪分析中导出一种重要形式的见解。情感分析传统上强调了网页评论分为积极,中性和负数。本文通过专注于可以检测到与正面和负面意见高度相关的主题的技术来超越情绪分类。这种技术在与情感分类相结合时,可以帮助业务分析师了解整体情绪范围以及情绪背后的司机。在本文中,我们描述了我们的整体情绪分析系统,包括这种情绪分析技术。然后,我们使用点亮互信息和术语频率分布详细介绍了一种新颖的主题检测方法。我们通过多个关于不同社交媒体数据集的案例研究证明了我们整体方法的有效性。

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