The advantage of lefties in one-on-one sports

Author:

Fagan Francois1,Haugh Martin1,Cooper Hal2

Affiliation:

1. Department of Industrial Engineering and Operations Research , Columbia University , 500 W. 120th Street, Mudd 315 , New York, NY , USA

2. Imperial College Business School , Imperial College , London , UK

Abstract

Abstract Left-handers comprise approximately 15% of professional tennis players, but only 11% of the general population. In boxing, baseball, fencing, table-tennis and specialist batting positions in cricket the contrast is even starker, with 30% or more of top players often being left-handed. In this paper we propose a model for identifying the advantage of being left-handed in one-on-one interactive sports (as well as the inherent skill of each player). We construct a Bayesian latent ability model in the spirit of the classic Glicko model but with the additional complication of having a latent factor, i.e. the advantage of left-handedness, that we need to estimate. Inference is further complicated by the truncated nature of data-sets that arise from only having data of the top players. We show how to infer the advantage of left-handedness when only the proportion of top left-handed players is available. We use this result to develop a simple dynamic model for inferring how the advantage of left-handedness varies through time. We also extend the model to cases where we have ranking or match-play data. We test these models on 2014 match-play data from top male professional tennis players, and the dynamic model on data from 1985 to 2016.

Publisher

Walter de Gruyter GmbH

Subject

Decision Sciences (miscellaneous),Social Sciences (miscellaneous)

Reference61 articles.

1. Abrams, D. M. and M. J. Panaggio. 2012. “A Model Balancing Cooperation and Competition can Explain our Right-Handed World and the Dominance of Left-Handed Athletes.” Journal of the Royal Society Interface 9:2718–2722.

2. Aggleton, J. P. and C. J. Wood. 1990. “Is There a Left-Handed Advantage in ’Ballistic’ Sports?” International Journal of Sport Psychology 21:46–57.

3. Akpinar, S., R. L. Sainburg, S. Kirazci, and A. Przybyla. 2015. “Motor Asymmetry in Elite Fencers.” Journal of Motor Behavior, 47:302–311.

4. Bačić, B. and A. H. Gazala. 2016. “Left-Handed Representation in top 100 Male Professional Tennis Players: Multi-Disciplinary Perspectives.” http://tmg.aut.ac.nz/tmnz2016/papers/Boris2016.pdf, accessed: 2017-06-15.

5. Barber, D. 2012. Bayesian Reasoning and Machine Learning. New York, NY, USA: Cambridge University Press.

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