Temporal Match Analysis and Recommending Substitutions in Live Soccer Games

Yuval Berman,Sajib Mistry, Joby Mathew,Aneesh Krishna

2022 IEEE International Conference on Web Services (ICWS)(2022)

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摘要
Soccer is one of the most complex and dynamic games. It is challenging to figure out the game’s pattern in real-time. We propose a novel network metric and entropy-based live soccer analytic framework (NMELSA) that identifies the opponent team’s tactics in a live soccer match by observing all the events until the specified minute of the game. We design a live game replacement model which recommends substitute players based on the on-field players’ live game ratings. Experimental results on a real-world dataset demonstrate the efficiency of our proposed approach.
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关键词
Feature detection,Live soccer analysis,Event stream data,Forest Deep Neural Network,Temporal Clustering
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