Modeling T20I cricket bowling effectiveness: A quantile regression approach with a Bayesian extension

Author:

Bowala Sulalitha M.B.1,Manage Ananda B.W.2,Scariano Stephen M.3

Affiliation:

1. Department of Mathematics, Faculty of Science, University of Peradeniya, Peradeniya, Sri Lanka

2. Mathematics and Statistics, Sam Houston State University, Huntsville, Texas, USA

3. StatData Consulting, LLC, Huntsville, Texas, USA

Abstract

Bowling effectiveness is a key factor in winning cricket matches. The team captain should decide when to use the right bowler at the right moment so that the team can optimize the outcome of the game. In this study, we investigate the effectiveness of different types of bowlers at different stages of the game, based on the conceded percentage of runs from the innings total, for each over. Bowlers are generally categorized into three types: fast bowlers, medium-fast bowlers, and spinners. In this article, the authors divided the twenty over spell of a T20I match into four stages; namely, Stage 1: overs 1-6 (PowerPlay), Stage 2: overs 7-10, Stage 3: overs 11-15, and Stage 4: overs 16-20. To understand the broad spectrum of the behavior of game variables, a Quantile Regression methodology is used for statistical analysis. Following that, a Bayesian approach to Quantile Regression is undertaken, and it confirms the initial results.

Publisher

IOS Press

Reference14 articles.

1. Rating players in test match cricket;Akhtar,;Journal of the Operational Research Society,2015

2. bayesQR: A Bayesian approach to quantile regression;Benoit,;Journal of Statistical Software,2017

3. Is the home-field advantage in limited overs one-day international cricket only for day matches?;Fernando,;South African Statistical Journal,2013

4. Using heteroskedasticity-consistent standard error estimators in OLS regression: An introduction and software implementation;Hayes,;Behavior Research Methods,2013

5. A graphical display for comparing bowlers in cricket;Kimber,;Teaching Statistics,1993

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