NFL Play Prediction
Based on NFL game data we try to predict the outcome of a play in multiple different ways. An application of this is the following: by plugging in various play options one could determine the best play for a given situation in real time. While the outcome of a play can be described in many ways we h...
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creator | Teich, Brendan Lutz, Roman Kassarnig, Valentin |
description | Based on NFL game data we try to predict the outcome of a play in multiple
different ways. An application of this is the following: by plugging in various
play options one could determine the best play for a given situation in real
time. While the outcome of a play can be described in many ways we had the most
promising results with a newly defined measure that we call "progress". We see
this work as a first step to include predictive analysis into NFL playcalling. |
doi_str_mv | 10.48550/arxiv.1601.00574 |
format | Article |
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different ways. An application of this is the following: by plugging in various
play options one could determine the best play for a given situation in real
time. While the outcome of a play can be described in many ways we had the most
promising results with a newly defined measure that we call "progress". We see
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different ways. An application of this is the following: by plugging in various
play options one could determine the best play for a given situation in real
time. While the outcome of a play can be described in many ways we had the most
promising results with a newly defined measure that we call "progress". We see
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different ways. An application of this is the following: by plugging in various
play options one could determine the best play for a given situation in real
time. While the outcome of a play can be described in many ways we had the most
promising results with a newly defined measure that we call "progress". We see
this work as a first step to include predictive analysis into NFL playcalling.</abstract><doi>10.48550/arxiv.1601.00574</doi><oa>free_for_read</oa></addata></record> |
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subjects | Computer Science - Learning |
title | NFL Play Prediction |
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