English

Website visits can predict angler presence using machine learning

Physics and Society 2025-04-21 v2 Machine Learning

Abstract

Understanding and predicting recreational angler effort is important for sustainable fisheries management. However, conventional methods of measuring angler effort, such as surveys, can be costly and limited in both time and spatial extent. Models that predict angler effort based on environmental or economic factors typically rely on historical data, which often limits their spatial and temporal generalizability due to data scarcity. In this study, high-resolution data from an online fishing platform and easily accessible auxiliary data were tested to predict daily boat presence and aerial counts of boats at almost 200 lakes over five years in Ontario, Canada. Lake-information website visits alone enabled predicting daily angler boat presence with 78% accuracy. While incorporating additional environmental, socio-ecological, weather and angler-reported features into machine learning models did not remarkably improve prediction performance of boat presence, they were substantial for the prediction of boat counts. Models achieved an R2 of up to 0.77 at known lakes included in the model training, but they performed poorly for unknown lakes (R2 = 0.21). The results demonstrate the value of integrating data from online fishing platforms into predictive models and highlight the potential of machine learning models to enhance fisheries management.

Keywords

Cite

@article{arxiv.2409.17425,
  title  = {Website visits can predict angler presence using machine learning},
  author = {Julia S. Schmid and Sean Simmons and Mark A. Lewis and Mark S. Poesch and Pouria Ramazi},
  journal= {arXiv preprint arXiv:2409.17425},
  year   = {2025}
}

Comments

52 pages

R2 v1 2026-06-28T18:57:30.771Z