COSINT: Mining Reasons for Sentiment Variation on Twitter using Cosine Similarity Measurement

Savitha Mathapati, Anil D, Tanuja R, S. Manjula, V. R.
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引用次数: 3

Abstract

An advanced domain has evolved in the field of research over the past decade, called Sentiment Analysis on Social Media. Twitter has made huge impact with more than 500 million Tweets each day. People share their opin- ion in the form of Tweets on many topics. In this paper, we employ Foreground and Background LDA (FB-LDA) and Reason Candidate and Background LDA (RCB-LDA) model to extract the reasons for sentiment variation. Emerging topics or Foreground topics within the sentiment variation period are highly related to the reasons for sentiment variation, whereas Background topics are discussed from long time and does not add to the sentiment variation. FB-LDA model filter out Background topics from the Foreground tweet set and extract the required Foreground topics that contribute for the reason for sentiment variation. RCB-LDA model finds more relevant tweets of the Foreground topic that are extracted in FB- LDA model and rank them to get Reason Candidates. To extract Reason more precisely from Reason Candidates, in this paper we propose COsine SImilarity MesuremeNT (COSINT) using Latent Semantic Analysis methods. This methods mine specific reason for sentiment variation.
COSINT:使用余弦相似度度量挖掘Twitter上情绪变化的原因
在过去的十年里,研究领域发展了一个高级领域,称为社交媒体情感分析。Twitter每天发布的推文超过5亿条,影响巨大。人们在许多话题上以推特的形式分享他们的观点。本文采用前景和背景LDA (FB-LDA)和原因候选和背景LDA (RCB-LDA)模型来提取情绪变化的原因。情绪变化周期内的新兴话题或前景话题与情绪变化的原因高度相关,而背景话题的讨论时间较长,不会增加情绪变化。FB-LDA模型从前景推文集中过滤出背景主题,并提取出导致情绪变化的必要前景主题。RCB-LDA模型找到FB- LDA模型中提取的更多与前景主题相关的推文,并对它们进行排序以获得Reason candidate。为了从候选推理中更精确地提取推理,本文提出了使用潜在语义分析方法的余弦相似性度量(COSINT)。该方法挖掘情绪变化的具体原因。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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