用光谱分析确定NBA阵容中的群体贡献

IF 0.6 Q4 HOSPITALITY, LEISURE, SPORT & TOURISM Journal of Sports Analytics Pub Date : 2020-06-25 DOI:10.3233/jsa-200407
Stephen Devlin, D. Uminsky
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引用次数: 1

摘要

我们解决了如何量化球员群体对球队成功的贡献的问题。我们的方法是基于谱分析,一种来自代数信号处理的技术,它有几个吸引人的特点。首先,我们的分析将团队成功信号分解为若干要素,这些要素自然被理解为特定规模的玩家群体的贡献:个人、双人、三人组、四人组和完整的五人组。其次,分解是正交的,因此玩家群体的贡献可以被认为是纯粹的:例如,归因于三人组的贡献已经与组成对和个人的低阶贡献分开。我们使用NBA比赛数据进行了详细的光谱分析,并展示了它如何成为理解阵容组成和利用的实用工具。
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Identifying group contributions in NBA lineups with spectral analysis
We address the question of how to quantify the contributions of groups of players to team success. Our approach is based on spectral analysis, a technique from algebraic signal processing, which has several appealing features. First, our analysis decomposes the team success signal into components that are naturally understood as the contributions of player groups of a given size: individuals, pairs, triples, fours, and full five-player lineups. Secondly, the decomposition is orthogonal so that contributions of a player group can be thought of as pure: Contributions attributed to a group of three, for example, have been separated from the lower-order contributions of constituent pairs and individuals. We present detailed a spectral analysis using NBA play-by-play data and show how this can be a practical tool in understanding lineup composition and utilization.
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9.10%
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