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Friday, June 10
Practice and Applications
Methods and Studies to Identify Important Variables
Fri, Jun 10, 11:30 AM - 1:00 PM
Butler
 

Partially Constrained Group Variable Selection to Adjust for Complementary Unit Performance in American College Football (310084)

*Andrey Skripnikov, New College of Florida 

Keywords: group penalty, LASSO, natural splines, regularized estimation, reverse causality, sports statistics

Given the importance of accurate team rankings in American college football (CFB) - due to heavy title and playoff implications - strides have been made to improve evaluation metrics across statistical categories, going from basic averages (e.g. points scored per game) to metrics that adjust for a team's strength of schedule, but one aspect that hasn't been emphasized is the complementary nature of American football. Despite the same team's offensive and defensive units typically consisting of separate player sets, some aspects of your team's defensive (offensive) performance may affect the complementary side: turnovers forced by your defense could lead to easier scoring chances for your offense, while your offense's ability to control the clock may help your defense. For the game-by-game data from 2009-2019 CFB seasons, we incorporate natural splines with group penalty approaches to identify the most consistently influential features of complementary football in a data-driven way, conducting partially constrained optimization in order to additionally guarantee the full adjustment for strength of schedule and homefield factor. Moreover, we touch on the issue of reverse-causality for American football's within-game dynamics, and proceed to address it via leveraging the more detailed sequential play-by-play data.