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Using Markov Models to Learn the Sentiment of Soccer Fans from Bets and the Result of Matches

机译:使用马尔可夫模型从投注中了解足球迷的情绪和比赛结果

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In this paper we investigate variations of Hidden Markov Models (HMM) as a viable tool for predicting the sentiment of soccer fans based on information regarding the result of matches. The models were constructed from data collected from a social network where fans of a soccer team periodically express feelings towards their team. Our claim is that the change in a fan's sentiment is analogous to a Markovian process of change of state through time. A comparative evaluation performed between variations of the proposed models showed that a second order HMM, considering the match results and fan's gambling information, is the most accurate model.
机译:在本文中,我们研究了隐马尔可夫模型(HMM)的变化,它是一种基于有关比赛结果的信息来预测足球迷情绪的可行工具。这些模型是根据从社交网络收集的数据构建的,在该社交网络中,足球队的球迷会定期向他们的球队表达自己的感受。我们的主张是,球迷情绪的变化类似于状态随时间变化的马尔可夫过程。在提议的模型的变体之间进行的比较评估表明,考虑到比赛结果和粉丝的赌博信息,二阶HMM是最准确的模型。

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