Login / Signup

Recommendations for marathon runners: on the application of recommender systems and machine learning to support recreational marathon runners.

Barry SmythAonghus LawlorJakim BerndsenCiara Feely
Published in: User modeling and user-adapted interaction (2021)
Every year millions of people, from all walks of life, spend months training to run a traditional marathon. For some it is about becoming fit enough to complete the gruelling 26.2 mile (42.2 km) distance. For others, it is about improving their fitness, to achieve a new personal-best finish-time. In this paper, we argue that the complexities of training for a marathon, combined with the availability of real-time activity data, provide a unique and worthwhile opportunity for machine learning and for recommender systems techniques to support runners as they train, race, and recover. We present a number of case studies-a mix of original research plus some recent results-to highlight what can be achieved using the type of activity data that is routinely collected by the current generation of mobile fitness apps, smart watches, and wearable sensors.
Keyphrases
  • machine learning
  • big data
  • electronic health record
  • physical activity
  • body composition
  • artificial intelligence
  • virtual reality
  • clinical practice
  • deep learning
  • heart rate
  • high speed