Footballonomics: The Anatomy of American Football; Evidence from 7 years of NFL game data
Konstantinos Pelechrinis, Evangelos Papalexakis

TL;DR
This paper analyzes NFL game data over seven years to evaluate decision-making rationality, identify key factors influencing game outcomes, and develop a predictive model with accuracy comparable to advanced systems.
Contribution
It challenges the assumption of rational coaching decisions, identifies significant game factors, and creates a simple yet effective prediction engine for NFL games.
Findings
Avoiding turnovers is crucial for winning.
Longer possession times can offset turnovers.
Prediction accuracy of 63% is achieved, outperforming some experts.
Abstract
Do NFL teams make rational decisions? What factors potentially affect the probability of wining a game in NFL? How can a team come back from a demoralizing interception? In this study we begin by examining the hypothesis of rational coaching, that is, coaching decisions are always rational with respect to the maximization of the expected points scored. We reject this hypothesis by analyzing the decisions made in the past 7 NFL seasons for two particular plays; (i) the Point(s) After Touchdown (PAT) and (ii) the fourth down decisions. Having rejected the rational coaching hypothesis we move on to examine how the detailed game data collected can potentially inform game-day decisions. While NFL teams personnel definitely have an intuition on which factors are crucial for winning a game, in this work we take a data-driven approach and provide quantifiable evidence using a large dataset of…
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