The use of machine learning in sport outcome prediction: A review

机器学习 人工智能 计算机科学 特征选择 分类 分割 过程(计算) 结果(博弈论) 人工神经网络 特征(语言学) 情报检索 数学 语言学 操作系统 哲学 数理经济学
作者
Tomislav Horvat,Josip Job
出处
期刊:Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery [Wiley]
卷期号:10 (5) 被引量:137
标识
DOI:10.1002/widm.1380
摘要

Abstract The increase in the volume of structured and unstructured data related to more than just sport events leads to the development and increased use of techniques that extract information and employ machine‐learning algorithms in predicting process outcomes based on input but not necessarily output data. Taking sports into consideration, predicting outcomes, and extracting valuable information has become appealing not only to sports workers but also to the wider audience, particularly in the areas of team management and sports betting. The aim of this article is to review the existing machine learning (ML) algorithms in predicting sport outcomes. Over 100 papers were analyzed and only some of these papers were taken into consideration. Almost all of the analyzed papers use some sort of feature selection and feature extraction, most often prior to using the machine‐learning algorithm. As an evaluation method of ML algorithms, researchers, in most cases, use data segmentation with data being chronologically distributed. In addition to data segmentation, researchers also use the k ‐cross‐evaluation method. Sport predictions are usually treated as a classification problem with one class being predicted and rare cases being predicted as numerical values. Mostly used ML models are neural networks using data segmentation. This article is categorized under: Technologies > Machine Learning Technologies > Prediction
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