Player Rating & Matchmaking via Bayesian Inference

Player Rating & Matchmaking via Bayesian Inference

Player rating systems are essential nearly to any game situated in different contexts (video games, sports etc). This need arises from the fact that an unbalanced match is not enjoyable to any of it’s competitors. In this project we assume a generative model responsible for creation of past match results and we attempt to infer approximate posterior skills distributions by using three different algorithms: Metropolis-Hastings, Gibbs Sampler and Expectation Propagation.

Project Poster: 

Project Members: 

Mustafa Onur Eken

Project Advisor: 

Ali Taylan Cemgil

Project Status: 

Project Year: 

2016
  • Spring

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Department of Computer Engineering, Boğaziçi University,
34342 Bebek, Istanbul, Turkey

  • Phone: +90 212 359 45 23/24
  • Fax: +90 212 2872461
 

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