相互依赖的LSTM:棒球比赛首发和结束阵容预测

Sungjin Chun, C. Son, Hyunseung Choo
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引用次数: 3

摘要

棒球比赛是最受欢迎的运动之一,随着棒球比赛历史数据的广泛可用性,高精度的赢家预测已成为统计分析和机器学习的重要目标。然而,由于首发阵容和换人名单不完整,现有的赛前预测技术的准确性很低。利用长短期记忆(LSTM)识别时间序列数据隐藏模式的能力,提出了仅使用首发阵容信息进行相互依赖的LSTM棒球比赛预测。特别是,我们对历史数据进行预处理,为每场棒球比赛生成一对赛前和赛后记录。赛前记录表示首发阵容中不完整的球员名单,赛后记录包含所有参加比赛的球员名单。相互依赖的LSTM模型利用对的依赖性来预测只有赛前输入的比赛结果。实验结果表明,该模型比现有模型的准确率提高了12%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inter-dependent LSTM: Baseball Game Prediction with Starting and Finishing Lineups
With the wide availability of historical data from baseball games, one of the most popular sports, high accurate winner prediction has become a significant target of statistical analysis and machine learning. However, existing techniques for a pre-game prediction yield poor accuracies due to the incomplete player lists given in starting lineups and substitutions occurring during the game. We exploit the capability of Long Short-Term Memory (LSTM) in identifying hidden patterns of time series data to propose inter-dependent LSTM baseball game prediction with only the starting lineup information. Particularly, we preprocess historical data to generate a pair of pre-game and post-game records for each baseball game. The pre-game record indicates the incomplete player lists given in starting lineups, and the post-game one contains the list of all players who participated in the game. The inter-dependent LSTM model exploits the dependencies of the pairs to predict a game result with only pre-game input. Our experiment results show that the proposed model achieves up to 12% higher accuracy than the existing ones.
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