Pairwise Comparisons with Flexible Time-Dynamics
Inspired by applications in sports where the skill of players or teams competing against each other varies over time, we propose a probabilistic model of pairwise-comparison outcomes that can capture a wide range of time dynamics. We achieve this by replacing the static parameters of a class of popu...
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Zusammenfassung: | Inspired by applications in sports where the skill of players or teams
competing against each other varies over time, we propose a probabilistic model
of pairwise-comparison outcomes that can capture a wide range of time dynamics.
We achieve this by replacing the static parameters of a class of popular
pairwise-comparison models by continuous-time Gaussian processes; the
covariance function of these processes enables expressive dynamics. We develop
an efficient inference algorithm that computes an approximate Bayesian
posterior distribution. Despite the flexbility of our model, our inference
algorithm requires only a few linear-time iterations over the data and can take
advantage of modern multiprocessor computer architectures. We apply our model
to several historical databases of sports outcomes and find that our approach
outperforms competing approaches in terms of predictive performance, scales to
millions of observations, and generates compelling visualizations that help in
understanding and interpreting the data. |
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DOI: | 10.48550/arxiv.1903.07746 |