4.7 Article

Citizen science and field survey observations provide comparable results for mapping Vancouver Island White-tailed Ptarmigan (Lagopus leucura saxatilis) distributions

Journal

BIOLOGICAL CONSERVATION
Volume 181, Issue -, Pages 162-172

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.biocon.2014.11.010

Keywords

Alpine; British Columbia; Citizen science; Species distribution modeling; Vancouver Island; White-tailed Ptarmigan

Funding

  1. Terre WEB fellowship program at the University of British Columbia
  2. NSERC
  3. Forest Renewal British Columbia and Environment Canada

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Wildlife in alpine ecosystems can be elusive and difficult to survey, yet knowledge of their distributions is critical as these habitats are threatened by climate change. Opportunistic citizen science observations submitted by hikers in remote alpine regions can be valuable, as coverage can be extensive compared to scientific field surveys. Here, we compare the performance of two regression and three machine learning statistical modeling approaches and an ensemble model to predict the distribution of the Vancouver Island subspecies of White-tailed Ptarmigan (Lagopus leucura saxatilis) based on two datasets: (1) field survey observations from radio-telemetry and call-playbacks, and (2) opportunistic citizen science observations submitted by hikers. Predictions of suitable habitat for the Vancouver Island subspecies varied from 370 to 1039 km(2) based on field survey observations and from 404 to 1354 km(2) based on public observations. All models had fair accuracy (kappa > 0.45) when tested on an independent dataset, but Generalized Linear Models and Generalized Additive Models tended to over-predict ptarmigan occurrence, had the lowest accuracy, and were most sensitive to the type of response data used. All the machine learning modeling techniques differed little between the datasets. These comparable results are encouraging for the continued use of citizen science monitoring programs, which can save both time and expense while involving and educating the public about threatened species. We advocate the use of opportunistic citizen science data and machine learning modeling techniques (Random Forest, Boosted Regression Trees, and Maxent) for predicting alpine vertebrate species distributions. (C) 2014 Elsevier Ltd. All rights reserved.

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