Missing data patterns in runners’ careers: do they matter?

Author:

Stival Mattia1,Bernardi Mauro1,Cattelan Manuela1,Dellaportas Petros23

Affiliation:

1. Department of Statistical Sciences, University of Padova , Padova , Italy

2. Department of Statistical Science, University College London , London , UK

3. Department of Statistics, Athens University of Economics and Business , Athens , Greece

Abstract

AbstractPredicting the future performance of young runners is an important research issue in experimental sports science and performance analysis. We analyse a dataset with annual seasonal best performances of male middle distance runners for a period of 14 years and provide a modelling framework that accounts for both the fact that each runner has typically run in 3 distance events (800, 1,500, and 5,000 m) and the presence of periods of no running activities. We propose a latent class matrix-variate state space model and we empirically demonstrate that accounting for missing data patterns in runners’ careers improves the out of sample prediction of their performances over time. In particular, we demonstrate that for this analysis, the missing data patterns provide valuable information for the prediction of runner’s performance.

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

Reference34 articles.

1. A discrete time event-history approach to informative drop-out in mixed latent Markov models with covariates;Bartolucci;Biometrics,2015

2. A finite mixture latent trajectory model for modeling ultrarunners’ behavior in a 24-hour race;Bartolucci;Journal of Quantitative Analysis in Sports,2015

3. Career performance trajectories in track and field jumping events from youth to senior success: The importance of learning and development;Boccia;PLOS One,2017

4. How to prevent “dropout” in competitive sport;Bussmann;IAAF New Studies in Athletics,1999

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