Pacing Patterns of Half-Marathon Runners: An analysis of ten years of results from Gothenburg Half Marathon
Journal article, 2023

The Gothenburg half Marathon is one of the word's largest half maratho races with over 40 000 participants each year. In order to reduce the number of runners risking over-straining, injury, or collapse, we would like to provide runners with advice to appropriately plan their pacing. Many participants are older or without extensive training experience and may particularly benefit from such pacing assistance. Our aim is to provide this with the help of machine learning. We first analyze a large publicly available dataset of results from the years 2010-2019 (n = 423 496) to identify pacing patterns related to age, sex, ability, and temperature of the race day. These features are then used to train machine learning models for predicting runner's finish time and to identify which runners are at risk of making severe pacing errors and which ones seem set to pace well. We finf that predictiong of finish time improves over the current baseline, while identification of pacing patterns correctly identifies over 70% of runners at risk of severe slowdowns, albeit with many false positives.

MACHINE LEARNING

HALF-MARATHON

RESULTS DATA

RUNNING

PACING PATTERNS

Author

Moa Johansson

Chalmers, Computer Science and Engineering (Chalmers), Formal methods

Johan Atterfors

Chalmers, Computer Science and Engineering (Chalmers), Formal methods

Johan Lamm

Chalmers, Computer Science and Engineering (Chalmers), Formal methods

International Journal of Computer Science in Sport

16844769 (eISSN)

Vol. 22 1 124-138

Areas of Advance

Information and Communication Technology

Health Engineering

Subject Categories

Computer and Information Science

Other Medical Sciences not elsewhere specified

Sport and Fitness Sciences

Public Health, Global Health, Social Medicine and Epidemiology

DOI

10.2478/ijcss-2023-0014

More information

Latest update

2/16/2024