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Combining Textual Pre-game Reports and Statistical Data for Predicting Success in the National Hockey League

机译:结合文本赛前报告和统计数据来预测全国曲棍球联赛的成功

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In this paper, we create meta-classifiers to forecast success in the National Hockey League. We combine three classifiers that use various types of information. The first one uses as features numerical data and statistics collected during previous games. The last two classifiers use pre-game textual reports: one classifier uses words as features (unigrams, bigrams and trigrams) in order to detect the main ideas expressed in the texts and the second one uses features based on counts of positive and negative words in order to detect the opinions of the pre-game report writers. Our results show that meta classifiers that use the two data sources combined in various ways obtain better prediction accuracies than classifiers that use only numerical data or only textual data.
机译:在本文中,我们创建了Meta-Classifiers预测国家曲棍球联盟的成功。我们组合三个使用各种类型的信息的分类器。第一个用作以前在以前的游戏中收集的数值数据和统计数据。最后两个分类器使用预先游戏前文本报告:一个分类器使用单词作为特征(Unigrams,Bigrams和Trigrams),以便检测文本中表达的主要思想,而第二个是基于正面和负字数的特征为了检测游戏前报告编写者的意见。我们的结果表明,使用两个数据源以各种方式组合的元分类器可以获得比仅使用数值数据或仅供图片的分类器获得更好的预测准确性。

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