• Media type: Report; E-Book
  • Title: A Dynamic Bivariate Poisson Model for Analysing and Forecasting Match Results in the English Premier League
  • Contributor: Koopman, Siem Jan [Author]; Lit, Rutger [Author]
  • Published: Amsterdam and Rotterdam: Tinbergen Institute, 2012
  • Language: English
  • Keywords: Non-Gaussian multivariate time series models ; C32 ; Zustandsraummodell ; Stochastischer Prozess ; Betting ; C35 ; Sport statistics ; England ; Kalman filter smoother ; Importance sampling ; Zeitreihenanalyse ; Professioneller Sport ; Prognoseverfahren ; Fußballsport
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  • Description: Attack and defense strengths of football teams vary over time due to changes in the teams of players or their managers. We develop a statistical model for the analysis and forecasting of football match results which are assumed to come from a bivariate Poisson distribution with intensity coefficients that change stochastically over time. This development presents a novelty in the statistical time series analysis of match results from football or other team sports. Our treatment is based on state space and importance sampling methods which are computationally efficient. The out-of-sample performance of our methodology is verified in a betting strategy that is applied to the match outcomes from the 2010/11 and 2011/12 seasons of the English Premier League. We show that our statistical modeling framework can produce a significant positive return over the bookmaker's odds.
  • Access State: Open Access