A deep learning-based sports player evaluation model based on game statistics and news articles

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摘要

Player evaluation is a key component of the question-answering (QA) system in sports. Since existing player evaluation methods heavily rely on game statistics, they cannot capture the qualitative impact of each player during a game, which can be exploited using news articles after the game. In this paper, we propose a deep learning-based player evaluation model by combining both quantitative game statistics and the qualitative analyses provided by news articles. Players are classified as positive or negative based on their performance during certain periods, and news articles in the same period are annotated using the player's class. Then, the relationship between news articles and the annotated polarity is investigated by a deep neural network, which can deal with the high dimensionality of the text data. Since there is no explicit polarity label for news articles, we use the change in game statistics in target periods to annotate related sentences. The proposed system is applied to a Korean professional baseball league (KBO) and it is shown to be capable of understanding the sentence polarity of news articles on player performances.

论文关键词:Sports player evaluation,Deep neural network,Sentence polarity,Baseball

论文评审过程:Received 2 August 2016, Revised 10 July 2017, Accepted 21 September 2017, Available online 29 September 2017, Version of Record 13 November 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.09.028