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Data Clustering for Fitting Parameters of a Markov Chain Model of Multi-Game Playoff Series

机译:多游戏季后赛系列马尔可夫链模型拟合参数的数据聚类

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摘要

We propose a Markov chain model of a best-of-7 game playoff series that involves game-to-game dependence on the current status of the series. To create a relatively parsimonious model, we seek to group transition probabilities of the Markov chain into clusters of similar game-winning frequency. To do so, we formulate a binary optimization problem to minimize several measures of cluster dissimilarity. We apply these techniques on Major League Baseball (MLB) data and test the goodness of fit to historical playoff outcomes. These state-dependent Markov models improve significantly on probability models based solely on home-away game dependence. It turns out that a better two-parameter model ignores where the games are played and instead focuses simply on, for each possible series status, whether or not the team with home-field advantage in the series has been the historical favorite - the more likely winner - in the next game of the series.
机译:我们提出了7个最佳季后赛系列的马尔可夫链模型,该模型涉及游戏对系列当前状态的依赖。为了创建相对简约的模型,我们试图将马尔可夫链的转移概率分组为具有相似获胜频率的集群。为此,我们制定了一个二进制优化问题,以最大程度地减少聚类差异的几种度量。我们将这些技术应用于美国职棒大联盟(MLB)数据,并测试与历史季后赛结果的契合度。这些基于状态的马尔可夫模型在仅基于客场比赛依赖性的概率模型上有显着改善。事实证明,对于每个可能的系列赛状态,一个更好的两参数模型会忽略在哪里玩游戏,而是只关注于该系列赛,而该系列赛中拥有主场优势的球队是否一直是历史上的最爱?获胜者-系列赛的下一场比赛。

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