Performance prediction of basketball players using automated personality mining with twitter data

Purpose: The purpose of this paper is to use Twitter data to mine personality traits of basketball players to predict their performance in the National Basketball Association (NBA). Design/methodology/approach: Automated personality mining and robotic process automation were used to gather data (player statistics and big five personality traits) of n = 185 professional basketball players. Correlation analysis and multiple linear regressions were computed to predict the performance of their NBA careers based on previous college performance and personality traits. Findings: Automated personality mining of Tweets can be used to gather additional information about basketball players. Extraversion, agreeableness and conscientiousness correlate with basketball performance and can be used, in combination with previous game statistics, to predict future performance. Originality/value: The study presents a novel approach to use automated personality mining of Twitter data as a predictor for future basketball performance. The contribution advances the understanding of the importance of personality for sports performance and the use of cognitive systems (automated personality mining) and the social media data for predictions. Scouts can use our findings to enhance their recruiting criteria in a multi-million dollar business, such as the NBA.
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Bibliographic Details
Subjects:
Notations:sport games
Tagging:soziale Medien Social Media
Published in:Sport, Business and Management
Language:English
Published: 2023
Online Access:https://doi.org/10.1108/SBM-10-2021-0119
Volume:13
Issue:2
Pages:228-247
Document types:article
Level:advanced