Classifying player positions in second-tier Australian football competitions using technical skill indicators

Author:

Barake Adrian J12,Mitchell Heather12,Stavros Constantino12,Stewart Mark F12ORCID,Srivastava Preety12

Affiliation:

1. School of Economics, Finance and Marketing, RMIT University, Melbourne, Australia

2. Reviewers: Ross Booth (Monash University, Australia) Job Fransen (University of Technology Sydney, Australia) Sam McIntosh (Victoria University, Australia)

Abstract

Efficient recruitment to Australia’s most popular professional sporting competition, the Australian Football League (AFL), requires evaluators to assess athlete performances in many lower tier leagues that serve as pathways. These competitions and their games are frequent, widespread, and challenging to track. Therefore, independent, and reliable player performance statistics from these leagues are paramount. This data, however, is only meaningful to recruiters from AFL teams if accurate player positions are known, which was not the case for the competitions from which most players were recruited. This paper explains how this problem was recently solved, demonstrating a process of knowledge translation from academia to industry, that bridged an important gap between sports science, coaching and recruiting. Positional information which is only available from the AFL competition was used to benchmark and develop scientific classification methods using only predictor variables that are also measured in lower tier competitions. Specifically, a Multinomial Logistic model was constructed to allocate players into four primary positions, followed by a Binary Logit model for further refinement. This novel technique of using more complete data from top tier competitions to help fill informational deficiencies in lower leagues could be extended to other sports that face similar issues.

Funder

This research was supported by Champion Data who provided a PhD scholarship for the lead author. Champion Data has recently given permission for this work to be submitted for review for publication.

Publisher

SAGE Publications

Subject

Social Sciences (miscellaneous)

Reference18 articles.

1. Kwek GA. AFL Leaves other codes in the dust. Sydney Morning Hearld, 26 March 2013. www.smh.com.au/data-point/afl-leaves-other-codes-in-the-dust-20130326-2grkp.html

2. Mitchell G. Love it or hate it, the AFL is top dog of Australian sport. The Roar, 16 February 2017. www.theroar.com.au/2017/02/17/love-hate-afl-top-dog-australian-sport/

3. THE ECONOMICS OF ACHIEVING COMPETITIVE BALANCE IN THE AUSTRALIAN FOOTBALL LEAGUE, 1897-2004

4. Did the AFL equalization policy achieve the evenness of the league?

5. Like Father, Like Son: Analyzing Australian Football’s Unique Recruitment Process

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