AI-based betting anomaly detection system to ensure fairness in sports and prevent illegal gambling
Changgyun Kim,
Jae-Hyeon Park,
Ji-Yong Lee
Abstract:This study develops a solution to sports match-fixing using various machine-learning models to detect match-fixing anomalies, based on betting odds. We use five models to distinguish between normal and abnormal matches: logistic regression (LR), random forest (RF), support vector machine (SVM), the k-nearest neighbor (KNN) classification, and the ensemble model—a model optimized from the previous four. The models classify normal and abnormal matches by learning their patterns using sports betting odds data. Th… Show more
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