Predictive Modeling of 4th Down Selection in Power 5 Conference: Data Analytics
Description
Predictive analytics have been used in a wide variety of settings, including healthcare,
sports, banking, and other disciplines. We use predictive analytics and modeling to
determine the impact of certain factors that increase the probability of a successful
fourth down conversion in the Power 5 conferences. The logistic regression models
predict the likelihood of going for fourth down with a 64% or more probability based on
2015-17 data obtained from ESPN’s college football API. Offense type though important
but non-measurable was incorporated as a random effect. We found that distance to go,
play type, field position, and week of the season were key leading covariates in
predictability. On average, our model performed as much as 14% better than coaches
in 2018.
sports, banking, and other disciplines. We use predictive analytics and modeling to
determine the impact of certain factors that increase the probability of a successful
fourth down conversion in the Power 5 conferences. The logistic regression models
predict the likelihood of going for fourth down with a 64% or more probability based on
2015-17 data obtained from ESPN’s college football API. Offense type though important
but non-measurable was incorporated as a random effect. We found that distance to go,
play type, field position, and week of the season were key leading covariates in
predictability. On average, our model performed as much as 14% better than coaches
in 2018.
Date Created
The date the item was original created (prior to any relationship with the ASU Digital Repositories.)
2019-05
Agent
- Co-author: Blinkoff, Joshua Ian
- Co-author: Voeller, Michael
- Thesis director: Wilson, Jeffrey
- Committee member: Graham, Scottie
- Contributor (ctb): Dean, W.P. Carey School of Business
- Contributor (ctb): Department of Information Systems
- Contributor (ctb): Department of Management and Entrepreneurship
- Contributor (ctb): Barrett, The Honors College