ORCID ID
Wenbing Zhao: https://orcid.org/0000-0002-3202-1127
Document Type
Article
Publication Date
4-29-2025
Publication Title
Information
Abstract
In this article, we provide a comprehensive review of machine learning-based sports analytics in baseball. This review is primarily guided by the following three research questions: (1) What baseball analytics problems have been studied using machine learning? (2) What data repositories have been used? (3) What and how machine learning techniques have been employed for these studies? The findings of these research questions lead to several research contributions. First, we provide a taxonomy for baseball analytics problems. According to the proposed taxonomy, machine learning has been employed to (1) predict individual game plays; (2) determine player performance; (3) estimate player valuation; (4) predict future player injuries; and (5) project future game outcomes. Second, we identify a set of data repositories for baseball analytics studies. The most popular data repositories are Baseball Savant and Baseball Reference. Third, we conduct an in-depth analysis of the machine learning models applied in baseball analytics. The most popular machine learning models are random forest and support vector machine. Furthermore, only a small fraction of studies have rigorously followed the best practices in data preprocessing, machine learning model training, testing, and prediction outcome interpretation.
Repository Citation
Zhao, Wenbing; Akella, Vyaghri Seetharamayya; Yang, Shunkun; and Luo, Xiong, "Machine Learning in Baseball Analytics: Sabermetrics and Beyond" (2025). Electrical and Computer Engineering Faculty Publications. 542.
https://engagedscholarship.csuohio.edu/enece_facpub/542
DOI
10.3390/info16050361
Version
Publisher's PDF
Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.
Volume
16
Issue
5
Comments
This work was supported in part by the US NSF grant 2215388.