LAX-Score

Author:

Jung Woosub1,Watson Amanda2,Kuehn Scott3,Korem Erik4,Koltermann Ken5,Sun Minglong5,Wang Shuangquan6,Liu Zhenming5,Zhou Gang5

Affiliation:

1. Computer Science, William & Mary, Williamsburg, Virginia

2. PRECISE Center, University of Pennsylvania, Philadelphia, Pennsylvania

3. Strength & Conditioning, University of Arizona, Tucson, Arizona

4. CEO, AIM7 Inc. Houston, Texas

5. Computer Science, William & Mary

6. Computer Science, Salisbury University, Salisbury, Maryland

Abstract

For the past several decades, machine learning has played an important role in sports science with regard to player performance and result prediction. However, it is still challenging to quantify team-level game performance because there is no strong ground truth. Thus, a team cannot receive feedback in a standardized way. The aim of this study was twofold. First, we designed a metric called LAX-Score to quantify a collegiate lacrosse team's athletic performance. Next, we explored the relationship between our proposed metric and practice sensing features for performance enhancement. To derive the metric, we utilized feature selection and weighted regression. Then, the proposed metric was statistically validated on over 700 games from the last three seasons of NCAA Division I women's lacrosse. We also explored our biometric sensing dataset obtained from a collegiate team's athletes over the course of a season. We then identified the practice features that are most correlated with high-performance games. Our results indicate that LAX-Score provides insight into athletic performance beyond wins and losses. Moreover, though COVID-19 has stalled implementation, the collegiate team studied applied our feature outcomes to their practices, and the initial results look promising with regard to better performance.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

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