Physical performance in daily life and sports: bridging the data analytics gap

Research output: Ph.D. ThesisPhD Research external, graduation external

Abstract

Physical activity is crucial in human life, whether in everyday activities or elite sports. It is important to maintain or improve physical performance, which depends on various factors such as the amount of physical activity, the capability, and the capacity of the individual. In daily life, it is significant to be physically active to maintain good health, intense exercise is not necessary, as simple daily activities contribute enough. In sports, it is essential to balance capacity, workload, and recovery to prevent performance decline or injury.
With the introduction of wearable technology, it has become easier to monitor and analyse physical activity and performance data in daily life and sports. However, extracting personalised insights and predictions from the vast and complex data available is still a challenge.
The study identified four main problems in data analytics related to physical activity and performance: limited personalised prediction due to data constraints, vast data complexity, need for sensitive performance measures, overly simplified models, and missing influential variables. We proposed end investigated potential solutions for each issue. These solutions involve leveraging personalised data from wearables, combining sensitive performance measures with various machine learning algorithms, incorporating causal modelling, and addressing the absence of influential variables in the data.
Personalised data, machine learning, sensitive performance measures, advanced statistics, and causal modelling can help bridge the data analytics gap in understanding physical activity and performance. The research findings pave the way for more informed interventions and provide a foundation for future studies to further reduce this gap.
Original languageEnglish
QualificationDoctor of Philosophy
Awarding Institution
  • Rijksuniversiteit Groningen
Supervisors/Advisors
  • Lemmink, Koen, Supervisor, External person
  • Aiello, Marco, Supervisor, External person
  • Velthuijsen, Hugo, Supervisor
Award date7 Feb 2024
Publisher
DOIs
Publication statusPublished - 7 Feb 2024

Keywords

  • human physical performance
  • machine learning
  • predicting

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