IJSREG Trion Studio

No Publication Cost

Vol 5, No 2 :

openaccess

A Statistical Analysis for Predicting the Top Performing Players during the ODI Cricket World Cup 2019 using Principal Component Analysis
G. Kumarapandiyan , S. Keerthivarman
Abstract

Cricket is a hugely popular sport around the world. Every day forms of cricketing culture were invisible in every walk real life and were well represented through various forms of media in the wake of the world cup. Performance analysis of cricket players is always a complicated task due to the interrelated character of the variables used to enumerate contributions to the team. Lack of precision of current methods, due to viable confidentiality, creates a requirement for new and transparent evaluative methods. Here, we present a simple, yet straightforward, method for analyzing the performance of players in the recent international matches, domestic competitions around the globe for predicting the top performers during the ODI World cup 2019 that can be easily adapted to other team sports.
Full Text
PDF
References

J. Bennet; Statistics in Sports, Oxford University Press Inc., 93-95 (1998).
Vani K. Borooah; John E. Mangan; The "Bradman Class": An Exploration of Some Issues in the Evaluation of Batsmen for Test Matches, 1877-2006, Journal of Quantitative Analysis in Sports, 6(3), Article 14 (2010).
P. Lakkaraju; S Sethi; Correlating the Analysis of Opinionated Texts Using SASĀ® Text Analytics with Application of Sabermetrics to Cricket Statistics, Proceedings of SAS Global Forum 2012 (2012).
B. W. Manage Ananda; Stephen M. Scariano; Cecil R. Hallum; Performance Analysis of T20-World Cup Cricket 2012 (2012).
Alboukadel Kassambara, Practical Guide to Principal Component Methods in R, STHDA (2017).
Rene Vidal; Yi Ma; Shankar Sastry, Generalized Principal Component Analysis, Springer (2016).
Richard A. Johanson; Dean W Wichern, Applied Multivariate Statistical Analysis, Pearson (2008).
https://www.cricbuzz.com/cricket-scorecard-archives

ISSN(P) 2350-0174

ISSN(O) 2456-2378

Journal Content
Browser