发展基于国家的高尔夫训练推荐系统

Kelly Rohrer, Jacob Ziller, Alanna Flores, W. Scherer, Christopher Kaylor, Orlando Jimenez, Stephen Adams
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引用次数: 0

摘要

NBA、MLB、NFL和其他职业联盟都使用体育分析,但职业高尔夫分析的潜力在很大程度上尚未开发。训练方案通常基于传统智慧,而不是使用数据驱动的方法将练习与比赛表现联系起来。如何使用数据来推荐训练方案,以提高高尔夫球手的表现?我们与高尔夫分析公司GameForge合作,开发高尔夫分析工具和方法,以占领这些市场,包括开发基于州的培训推荐系统。我们使用Gameforge、PGA和LPGA数据来使用k-means聚类和线性模型构建马尔可夫模型。这两种模型类型构成了我们推荐系统的基础。在未来,这些方法可以用来为培训决策提供信息,特别是当收集到更多数据时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing State-Based Recommendation Systems for Golf Training
The NBA, MLB, NFL and other professional leagues utilize sports analytics, but the potential of professional golf analytics is largely untapped. Instead of using data-driven methods connecting practice to tournament performance, training regimens are often based on conventional wisdom. How can data be used to recommend training regimens for golfers to improve performance? We partnered with golf analytics company, GameForge, to develop tools and methods for golf analytics to capture these markets, including the development of a state-based training recommendation system. We used Gameforge, PGA, and LPGA data to build markov models using k-means clustering, and linear models. These two model types form the basis of our recommendation system. In the future, these methods can be used to inform training decisions, particularly as more data is collected.
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