Using meta-regression data mining to improve predictions of performance based on heart rate dynamics for Australian football

Herbert F. Jelinek, Andrei Kelarev, Dean J. Robinson, Andrew Stranieri, David J. Cornforth

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

This work investigates the effectiveness of using computer-based machine learning regression algorithms and meta-regression methods to predict performance data for Australian football players based on parameters collected during daily physiological tests. Three experiments are described. The first uses all available data with a variety of regression techniques. The second uses a subset of features selected from the available data using the Random Forest method. The third used meta-regression with the selected feature subset. Our experiments demonstrate that feature selection and meta-regression methods improve the accuracy of predictions for match performance of Australian football players based on daily data of medical tests, compared to regression methods alone. Meta-regression methods and feature selection were able to obtain performance prediction outcomes with significant correlation coefficients. The best results were obtained by the additive regression based on isotonic regression for a set of most influential features selected by Random Forest. This model was able to predict athlete performance data with a correlation coefficient of 0.86 (p < 0.05).

Original languageBritish English
Pages (from-to)81-87
Number of pages7
JournalApplied Soft Computing Journal
Volume14
Issue numberPART A
DOIs
StatePublished - 2014

Keywords

  • Australian football
  • Data mining
  • Feature selection
  • Heart rate dynamics
  • Meta regression
  • Regression

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