Visual analytics for team-based invasion sports with significant events and Markov reward process
Kun Zhao, Takayuki Osogami, Tetsuro Morimura

TL;DR
This paper introduces a novel visual analytics approach for invasion sports that models matches as Markov chains of significant events, enabling continuous parameter space evaluation and visualization.
Contribution
It proposes a new method to evaluate and visualize event values in sports matches using Markov reward processes without discretizing the continuous space.
Findings
Effective prediction of event values over the playing field
Successful application to real soccer data
Enhanced understanding of match dynamics
Abstract
In team-based invasion sports such as soccer and basketball, analytics is important for teams to understand their performance and for audiences to understand matches better. The present work focuses on performing visual analytics to evaluate the value of any kind of event occurring in a sports match with a continuous parameter space. Here, the continuous parameter space involves the time, location, score, and other parameters. Because the spatiotemporal data used in such analytics is a low-level representation and has a very large size, however, traditional analytics may need to discretize the continuous parameter space (e.g., subdivide the playing area) or use a local feature to limit the analysis to specific events (e.g., only shots). These approaches make evaluation impossible for any kind of event with a continuous parameter space. To solve this problem, we consider a whole match as…
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Taxonomy
TopicsData Visualization and Analytics · Sports Analytics and Performance · Video Analysis and Summarization
