Athlytics: Winning in Sports with Data

K. Pelechrinis, E. Papalexakis
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引用次数: 2

Abstract

Data and analytics have been part of the sports industry from as early as the 1870s, when the first boxscore in baseball was recorded. However, it is only recently that advanced data mining and machine learning techniques have been utilized for facilitating the operations of sports franchises. While part of the reason is related with the ability to collect more fine-grained data, an equally important factor for this turn to analytics is the huge success and competitive advantage that early adopters of investment in analytics enjoyed(popularized by the best-seller -Moneyball? that described the success that Oakland Athletics had with analytics). Draft selection, game-day decision making and player evaluation are just a few of the applications where sports analytics play a crucial role today. Apart from the sports clubs, other stakeholders in the industry(e.g., the leagues' offices, media, etc.) invest in analytics. The leagues increasingly rely on data in order to decide on potential rule changes. For instance, the most recent rule change in NFL, i.e., the kickoff touchback, was a result of thorough data analysis of concussion instances. In this tutorial we will review the literature in data mining and machine learning techniques for sports analytics. We will introduce the audience to the design and methodologies behind advanced metrics such as the adjusted plus/minus for evaluating basketball players, spatial metrics for evaluating the ability of a player to spread the defense in basketball, and the Player Efficiency Rating(PER). We will also go in depth in advanced data mining methods, and in particular tensor mining, that can analyze heterogenous data similar to the ones available in today's sports world.
体育:用数据赢得运动
数据和分析早在19世纪70年代就已经成为体育产业的一部分,当时棒球的第一个比分被记录下来。然而,直到最近,先进的数据挖掘和机器学习技术才被用于促进体育特许经营的运营。虽然部分原因与收集更细粒度数据的能力有关,但转向分析的另一个同样重要的因素是,早期投资于分析的人所取得的巨大成功和竞争优势(由畅销书《点球成金》(moneyball)推广开来)。描述了奥克兰运动家队在分析方面的成功)。选秀、比赛日决策和球员评估只是当今体育分析发挥关键作用的几个应用。除体育俱乐部外,业界其他持份者(例如:(联盟办公室,媒体等)投资于分析。各联盟越来越依赖数据来决定潜在的规则变更。例如,美国国家橄榄球联盟最近的规则变化,即开球触地,是对脑震荡实例进行彻底数据分析的结果。在本教程中,我们将回顾数据挖掘和机器学习技术在体育分析方面的文献。我们将向观众介绍高级指标背后的设计和方法,如用于评估篮球运动员的调整正负,用于评估球员在篮球中分散防守能力的空间指标,以及球员效率评级(PER)。我们还将深入研究高级数据挖掘方法,特别是张量挖掘,它可以分析类似于当今体育世界中可用的异构数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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