Combining regional habitat selection models for large-scale prediction : circumpolar habitat selection of southern ocean humpback whales

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dc.contributor.author Reisinger, Ryan Rudolf
dc.contributor.author Friedlaender, Ari S.
dc.contributor.author Zerbini, Alexandre N.
dc.contributor.author Palacios, Daniel M.
dc.contributor.author Andrews-Goff, Virginia
dc.contributor.author Rosa, Luciano Dalla
dc.contributor.author Double, Mike
dc.contributor.author Findlay, Kenneth Pierce
dc.contributor.author Garrigue, Claire
dc.contributor.author How, Jason
dc.contributor.author Jenner, Curt
dc.contributor.author Jenner, Micheline-Nicole
dc.contributor.author Mate, Bruce
dc.contributor.author Rosenbaum, Howard C.
dc.contributor.author Seakamela, S. Mduduzi
dc.contributor.author Constantine, Rochelle
dc.date.accessioned 2022-11-03T11:00:46Z
dc.date.available 2022-11-03T11:00:46Z
dc.date.issued 2021-05-25
dc.description SUPPLEMENTARY MATERIALS : Table S1: Tracking data. Table summarizing the tracking data collated for this study. Supplementary Figure S1: Partial dependence plots. Relationship between the regional model predictions and the four most important environmental covariates, in order of decreasing mean importance: ICEDIST, SLOPEDIST, SST, and SHELFDIST. Partial dependence plots show the predicted response probability, here p(Observed track), on the vertical axis, over values of the environmental covariate in question while accounting for the average effect of the other predictors in the model [114]. en_US
dc.description DATA AVAILABILITY STATEMENT : Computer code and derived data are in the paper’s Github repository: https://github.com/ryanreisinger/megaPrediction (accessed on 21 May 2021) en_US
dc.description.abstract Machine learning algorithms are often used to model and predict animal habitat selection— the relationships between animal occurrences and habitat characteristics. For broadly distributed species, habitat selection often varies among populations and regions; thus, it would seem preferable to fit region- or population-specific models of habitat selection for more accurate inference and prediction, rather than fitting large-scale models using pooled data. However, where the aim is to make range-wide predictions, including areas for which there are no existing data or models of habitat selection, how can regional models best be combined? We propose that ensemble approaches commonly used to combine different algorithms for a single region can be reframed, treating regional habitat selection models as the candidate models. By doing so, we can incorporate regional variation when fitting predictive models of animal habitat selection across large ranges. We test this approach using satellite telemetry data from 168 humpback whales across five geographic regions in the Southern Ocean. Using random forests, we fitted a large-scale model relating humpback whale locations, versus background locations, to 10 environmental covariates, and made a circumpolar prediction of humpback whale habitat selection. We also fitted five regional models, the predictions of which we used as input features for four ensemble approaches: an unweighted ensemble, an ensemble weighted by environmental similarity in each cell, stacked generalization, and a hybrid approach wherein the environmental covariates and regional predictions were used as input features in a new model. We tested the predictive performance of these approaches on an independent validation dataset of humpback whale sightings and whaling catches. These multiregional ensemble approaches resulted in models with higher predictive performance than the circumpolar naive model. These approaches can be used to incorporate regional variation in animal habitat selection when fitting range-wide predictive models using machine learning algorithms. This can yield more accurate predictions across regions or populations of animals that may show variation in habitat selection. en_US
dc.description.department Mammal Research Institute en_US
dc.description.department Zoology and Entomology en_US
dc.description.librarian am2022 en_US
dc.description.sponsorship Funding for data collation, analysis, and write-up was provided by the International Whaling Commission Southern Ocean Research Partnership. en_US
dc.description.uri https://www.mdpi.com/journal/remotesensing en_US
dc.identifier.citation Reisinger, R.R.; Friedlaender, A.S.; Zerbini, A.N.; Palacios, D.M.; Andrews-Goff, V.; Dalla Rosa, L.; Double, M.; Findlay, K.; Garrigue, C.; How, J.; et al. Combining Regional Habitat Selection Models for Large-Scale Prediction: Circumpolar Habitat Selection of Southern Ocean Humpback Whales. Remote Sensing 2021, 13, 2074. https://doi.org/10.3390/rs13112074. en_US
dc.identifier.issn 2072-4292
dc.identifier.other 10.3390/rs13112074
dc.identifier.uri https://repository.up.ac.za/handle/2263/88126
dc.language.iso en en_US
dc.publisher MDPI en_US
dc.rights © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license. en_US
dc.subject Ensembles en_US
dc.subject Habitat selection en_US
dc.subject Machine learning en_US
dc.subject Prediction en_US
dc.subject Resource selection functions en_US
dc.subject Telemetry en_US
dc.subject Megaptera novaeangliae en_US
dc.subject Humpback whale (Megaptera novaeangliae) en_US
dc.title Combining regional habitat selection models for large-scale prediction : circumpolar habitat selection of southern ocean humpback whales en_US
dc.type Article en_US


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