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Sentiment analysis on tweets for social events

机译:社会事件推文的情感分析

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摘要

Sentiment analysis or opinion mining is an important type of text analysis that aims to support decision making by extracting and analyzing opinion oriented text, identifying positive and negative opinions, and measuring how positively or negatively an entity (i.e., people, organization, event, location, product, topic, etc.) is regarded. As more and more users express their political and religious views on Twitter, tweets become valuable sources of people's opinions. Tweets data can be efficiently used to infer people's opinions for marketing or social studies. This paper proposes a Tweets Sentiment Analysis Model (TSAM) that can spot the societal interest and general people's opinions in regard to a social event. In this paper, Australian federal election 2010 event was taken as an example for sentiment analysis experiments. We are primarily interested in the sentiment of the specific political candidates, i.e., two primary minister candidates - Julia Gillard and Tony Abbot. Our experimental results demonstrate the effectiveness of the system.
机译:情感分析或观点挖掘是一种重要的文本分析类型,旨在通过提取和分析面向观点的文本,确定正面和负面的观点以及衡量一个实体(例如,人,组织,事件,位置)的正面或负面来支持决策制定。 ,产品,主题等)。随着越来越多的用户在Twitter上表达其政治和宗教观点,推文成为人们观点的宝贵来源。推文数据可以有效地用于推断人们对市场营销或社会研究的看法。本文提出了一种推文情感分析模型(TSAM),该模型可以发现有关社交事件的社会兴趣和一般民众的观点。在本文中,以2010年澳大利亚联邦大选事件为例,进行了情绪分析实验。我们主要对特定政治候选人,即两名总理候选人朱莉亚·吉拉德和托尼·阿伯特的观点感兴趣。我们的实验结果证明了该系统的有效性。

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