Abstract

The prediction of sport event results has always drawn attention from a vast variety of different groups of people, such as club managers, coaches, betting companies, and the general population. The specific nature of each sport has an important role in the adaption of various predictive techniques founded on different mathematical and statistical models. In this paper, a common approach of modeling sports with a strongly defined structure and a rigid scoring system that relies on an assumption of independent and identical point distributions is challenged. It is demonstrated that such models can be improved by introducing dynamics into the match models in the form of sport momentums. Formal mathematical models for implementing these momentums based on conditional probability and empirical Bayes estimation are proposed, which are ultimately combined through a unifying hybrid approach based on the Monte Carlo simulation. Finally, the method is applied to real-life volleyball data demonstrating noticeable improvements over the previous approaches when it comes to predicting match outcomes. The method can be implemented into an expert system to obtain insight into the performance of players at different stages of the match or to study field scenarios that may arise under different circumstances.

Highlights

  • Predicting the outcome of sporting events has always been of great interest to people, it has gained even more popularity with the advancement of the Internet and the introduction of live betting

  • With the increase in the processor power and storage capacities of modern information systems coupled with the developments in the field of predictive data analytics, computers are taking over the main role in predicting the outcomes of sports events— regarding the final results, and concerning various events occurring during the match

  • One histogram shows the real distribution of the total number of points played in a group of matches/handicap obtained from the real data, while the other represents the simulated total points/handicap distribution

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Summary

Introduction

Predicting the outcome of sporting events has always been of great interest to people, it has gained even more popularity with the advancement of the Internet and the introduction of live betting. Domain experts have had the main role in producing such predictions. Domain familiarity, and currently available data, domain experts would manually come up with predictions. Domain experts are usually not able to produce predictions in a time-critical fashion. With the increase in the processor power and storage capacities of modern information systems coupled with the developments in the field of predictive data analytics, computers are taking over the main role in predicting the outcomes of sports events— regarding the final results, and concerning various events occurring during the match

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