The Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs sampler

Football is one of the most, if not <i>the</i> most, popular sporting games in the world, both played and watched by millions of people from all over the world almost daily, certainly weekly. Though most of those who place weekly bets on match outcomes have made up their...

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Main Author: Ellefsrød, Martin Belgau
Format: Others
Language:English
Published: Norges teknisk-naturvitenskapelige universitet, Institutt for datateknikk og informasjonsvitenskap 2013
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:no:ntnu:diva-22996
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spelling ndltd-UPSALLA1-oai-DiVA.org-ntnu-229962013-10-13T04:36:55ZThe Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs samplerengEllefsrød, Martin BelgauNorges teknisk-naturvitenskapelige universitet, Institutt for datateknikk og informasjonsvitenskapInstitutt for datateknikk og informasjonsvitenskap2013Football is one of the most, if not <i>the</i> most, popular sporting games in the world, both played and watched by millions of people from all over the world almost daily, certainly weekly. Though most of those who place weekly bets on match outcomes have made up their minds on the abilities on competing teams, many have nevertheless attempted to assess the abilities of sporting teams using different statistical approaches, assigning objective, quantitative values to each team. From that standing point, one can then try to predict the future results of games. This paper researches the existing methods used by Maher (1982) and Dixon & Coles (1997) on modeling team strengths, and how these models are used for prediction.The study then proceeds to compare the two methods of Maher (1982) and Dixon & Coles (1997) by experimenting with the models, finding that the latter seems to provide the most promising results. Tests are run by constructing the models and collecting empirical evidence on the accuracy on the models when using them to bet on matches.We then continue with constructing our own model, which utilizes more detailed data from the current season's football matches, retrieved from several football and betting sites on the internet, and compare our results with how the older models performed on the same season.Our study finds that the current data we were able to retrieve does not significantly increase the return of investments when betting on matches over the course of a season. Though our model performs slightly better than the two methods of Maher(1982) and Dixon & Coles(1997), it is not able to perform better than the bookmakers it is betting against.The study is concluded by a section on what further work should be done to attempt to improve the models, focusing on using extensive data on matches that we did not manage to find, such as where on the pitch most passes were made, or where shots where fired from, and whether important players were available. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:no:ntnu:diva-22996Local ntnudaim:9589application/pdfinfo:eu-repo/semantics/openAccess
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description Football is one of the most, if not <i>the</i> most, popular sporting games in the world, both played and watched by millions of people from all over the world almost daily, certainly weekly. Though most of those who place weekly bets on match outcomes have made up their minds on the abilities on competing teams, many have nevertheless attempted to assess the abilities of sporting teams using different statistical approaches, assigning objective, quantitative values to each team. From that standing point, one can then try to predict the future results of games. This paper researches the existing methods used by Maher (1982) and Dixon & Coles (1997) on modeling team strengths, and how these models are used for prediction.The study then proceeds to compare the two methods of Maher (1982) and Dixon & Coles (1997) by experimenting with the models, finding that the latter seems to provide the most promising results. Tests are run by constructing the models and collecting empirical evidence on the accuracy on the models when using them to bet on matches.We then continue with constructing our own model, which utilizes more detailed data from the current season's football matches, retrieved from several football and betting sites on the internet, and compare our results with how the older models performed on the same season.Our study finds that the current data we were able to retrieve does not significantly increase the return of investments when betting on matches over the course of a season. Though our model performs slightly better than the two methods of Maher(1982) and Dixon & Coles(1997), it is not able to perform better than the bookmakers it is betting against.The study is concluded by a section on what further work should be done to attempt to improve the models, focusing on using extensive data on matches that we did not manage to find, such as where on the pitch most passes were made, or where shots where fired from, and whether important players were available.
author Ellefsrød, Martin Belgau
spellingShingle Ellefsrød, Martin Belgau
The Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs sampler
author_facet Ellefsrød, Martin Belgau
author_sort Ellefsrød, Martin Belgau
title The Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs sampler
title_short The Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs sampler
title_full The Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs sampler
title_fullStr The Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs sampler
title_full_unstemmed The Betting Machine : Using in-depth match statistics to compute future probabilities of football match outcomes using the Gibbs sampler
title_sort betting machine : using in-depth match statistics to compute future probabilities of football match outcomes using the gibbs sampler
publisher Norges teknisk-naturvitenskapelige universitet, Institutt for datateknikk og informasjonsvitenskap
publishDate 2013
url http://urn.kb.se/resolve?urn=urn:nbn:no:ntnu:diva-22996
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