Statistical applications in sports have long centered on how to best separate signal (e.g. team talent) from random noise. However, most of this work has concentrated on a single sport, and the development of meaningful cross-sport comparisons has been impeded by the difficulty of translating luck from one sport to another. In this manuscript, we develop Bayesian state-space models using betting market data that can be uniformly applied across sporting organizations to better understand the role of randomness in game outcomes. These models can be used to extract estimates of team strength, the between-season, within-season, and game-to-game variability of team strengths, as well each team\u27s home advantage. We implement our approach acros...
International audienceThere seems to be an upper limit to predicting the outcome of matches in (semi...
Background: The comparison of team sports based on luck has a long tradition and remains unsolved. A...
In this paper we discuss a simulation/probability model that identifies the team that is most likely...
Statistical applications in sports have long centered on how to best separate signal (e.g. team tale...
We present an extensive statistical analysis of the results of all sports competitions in five major...
This study served as a preliminary test of the Sports Team Effectiveness (STE) Model developed by De...
Bayesian methods are becoming increasingly popular in sports analytics. Identified advantages of the...
Thesis advisor: Christopher MaxwellUncertainty is a key part of any sports game; without it, there i...
The National Basketball Association claims to sell entertainment. Part of that entertainment is dos...
We study the effects of randomness on competitions based on an elementary random process in which th...
Although analytics has become commonplace within the sports industry and is growing within the Natio...
Various parts of the question concerning how random and deterministic attributes intertwine during t...
In this paper, we will discuss a method of building a predictive model for Major League Baseball Gam...
This thesis investigates whether state space models have the potential to pre- dict the outcome of A...
Computing and machine learning advancements have led to the creation of many cutting-edge predictive...
International audienceThere seems to be an upper limit to predicting the outcome of matches in (semi...
Background: The comparison of team sports based on luck has a long tradition and remains unsolved. A...
In this paper we discuss a simulation/probability model that identifies the team that is most likely...
Statistical applications in sports have long centered on how to best separate signal (e.g. team tale...
We present an extensive statistical analysis of the results of all sports competitions in five major...
This study served as a preliminary test of the Sports Team Effectiveness (STE) Model developed by De...
Bayesian methods are becoming increasingly popular in sports analytics. Identified advantages of the...
Thesis advisor: Christopher MaxwellUncertainty is a key part of any sports game; without it, there i...
The National Basketball Association claims to sell entertainment. Part of that entertainment is dos...
We study the effects of randomness on competitions based on an elementary random process in which th...
Although analytics has become commonplace within the sports industry and is growing within the Natio...
Various parts of the question concerning how random and deterministic attributes intertwine during t...
In this paper, we will discuss a method of building a predictive model for Major League Baseball Gam...
This thesis investigates whether state space models have the potential to pre- dict the outcome of A...
Computing and machine learning advancements have led to the creation of many cutting-edge predictive...
International audienceThere seems to be an upper limit to predicting the outcome of matches in (semi...
Background: The comparison of team sports based on luck has a long tradition and remains unsolved. A...
In this paper we discuss a simulation/probability model that identifies the team that is most likely...