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Exploiting sports-betting market using machine learning
Affiliation:1. Institute of Sport, Exercise and Active Living, Victoria University, PO Box 14428, Melbourne 8001, VIC, Australia;2. Sport Science and Medicine Unit, Tennis Australia, PO Box 6060, Richmond South 3121, VIC, Australia;1. Physical Education College, Hunan First Normal University, Changsha, China;2. Physical Education Institute, Hunan University, Changsha, China;3. Physical Education College, Hunan University of Arts and Science, Changsde, China
Abstract:We introduce a forecasting system designed to profit from sports-betting market using machine learning. We contribute three main novel ingredients. First, previous attempts to learn models for match-outcome prediction maximized the model’s predictive accuracy as the single criterion. Unlike these approaches, we also reduce the model’s correlation with the bookmaker’s predictions available through the published odds. We show that such an optimized model allows for better profit generation, and the approach is thus a way to ‘exploit’ the bookmaker. The second novelty is in the application of convolutional neural networks for match outcome prediction. The convolution layer enables to leverage a vast number of player-related statistics on its input. Thirdly, we adopt elements of the modern portfolio theory to design a strategy for bet distribution according to the odds and model predictions, trading off profit expectation and variance optimally. These three ingredients combine towards a betting method yielding positive cumulative profits in experiments with NBA data from seasons 2007–2014 systematically, as opposed to alternative methods tested.
Keywords:Decision making  Evaluating forecasts  Neural networks  Sports forecasting  Probability forecasting
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