Real-time prediction to support decision-making in soccer

研究成果: Conference contribution

2 引用 (Scopus)

抄録

Data analysis in sports has been developing for many years. However, to date, a system that provides tactical prediction in real time and promotes ideas for increasing the chance of winning has not been reported in the literature. Especially, in soccer, components of plays and games are more complicated than in other sports. This study proposes a method to predict the course of a game and create a strategy for the second half. First, we summarize other studies and propose our method. Then, data are collected using the proposed system. From past games, games to similar to a target game are extracted depending on data from their first half. Next, similar games are classified by features depending on data of their second half. Finally, a target game is predicted and tactical ideas are derived. The practicability of the method is demonstrated through experiments. However, further improvements such as increasing the number of past games and types of data are still required.

元の言語English
ホスト出版物のタイトルKDIR
出版者SciTePress
ページ218-225
ページ数8
1
ISBN(印刷物)9789897581588
出版物ステータスPublished - 2015
イベント7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management, IC3K 2015 - Lisbon, Portugal
継続期間: 2015 11 122015 11 14

Other

Other7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management, IC3K 2015
Portugal
Lisbon
期間15/11/1215/11/14

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Sports
Decision making
Experiments

ASJC Scopus subject areas

  • Software

これを引用

Saito, Y., Kimura, M., & Ishizaki, S. (2015). Real-time prediction to support decision-making in soccer. : KDIR (巻 1, pp. 218-225). SciTePress.

Real-time prediction to support decision-making in soccer. / Saito, Yasuo; Kimura, Masaomi; Ishizaki, Satoshi.

KDIR. 巻 1 SciTePress, 2015. p. 218-225.

研究成果: Conference contribution

Saito, Y, Kimura, M & Ishizaki, S 2015, Real-time prediction to support decision-making in soccer. : KDIR. 巻. 1, SciTePress, pp. 218-225, 7th International Joint Conference on Knowledge Discovery, Knowledge Engineering and Knowledge Management, IC3K 2015, Lisbon, Portugal, 15/11/12.
Saito Y, Kimura M, Ishizaki S. Real-time prediction to support decision-making in soccer. : KDIR. 巻 1. SciTePress. 2015. p. 218-225
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