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NBA All-Star Prediction Using Twitter Sentiment Analysis

机译:NBA全星预测使用Twitter情绪分析

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As Web 2.0 services become more popular, social network analysis related research have received more attention. Typically, most Internet users contact others through a variety of social media, such as Facebook or Twitter. This research explores human behavior by conducting opinion mining on Twitter to predict the final voting results of NBA All-Star 2013. The termfeature model is proposed to filter out noise for enhancing the quality of the tweet corpus. Tweenator, an emotion detector, assists to decide whether the emotion tag for each gathered article is positive or negative. Two factors are counted in this research: the number of tweets and the ratio of positive tweets for each candidate player. According to experimental result, the positive tweets has direct ratio with the number of votes in the NBA All-Star Game, a result suggesting that sentiment analysis is an effective tool for predicting human voting outcomes.
机译:由于Web 2.0服务变得更加流行,社会网络分析相关的研究得到了更多的关注。通常,大多数互联网用户通过各种社交媒体联系别人,例如Facebook或Twitter。本研究通过在Twitter上进行意见挖掘来预测NBA全星2013年的最终投票结果来探讨人类行为。提出了术语,以滤除噪音以提高推文语料库的质量。 Tweenator,一个情感探测器,有助于决定每个聚集的文章的情绪标签是否是正的或负面的。这项研究中有两个因素:每次候选者的发布次数和正推特的比率。根据实验结果,阳性推文与NBA全明星游戏中的投票数量直接比例,结果表明情感分析是预测人类投票结果的有效工具。

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