Skip to main content
U.S. flag

An official website of the United States government

Marginalizing time in habitat selection and species distribution models improves inference

May 8, 2025

Aim

Recent methodological advances for studying how animals move and use space with telemetry data have focused on fine-scale, more mechanistic inference. However, in many cases, researchers and managers remain interested in larger scale questions regarding species distribution and habitat use across study areas, landscapes, or seasonal ranges. Point processes offer a unified framework for many methods applied in studies of species distribution and resource selection; however, challenges remain in terms of dealing with temporal autocorrelation common in many types of telemetry data collected from animal locations.

Innovation

Space–time point processes (STPPs) have a unique property, in that marginalising time offers a connection between individual animal movement and broader point processes, yet this property has seen little attention in both statistical and applied research. In this paper, we first present some of the details of this marginalisation property and methods for applying marginalised STPPs (mSTTPs) to autocorrelated telemetry data and then apply a mSTTP in a case study on the summer space use and habitat selection of female caribou (Rangifer tarandus) in Denali National Park and Preserve, Alaska.

Main Conclusions

The case study demonstrated that an mSTPP approach can improve inference over other commonly used methods in terms of its ability to account for temporal autocorrelation and offers greater precision in parameter estimates and improved predictions of space use. As this method fits conveniently into the existing point process frameworks, it offers a practical solution to dealing with temporal autocorrelation inherent to many types of telemetry data when research questions center around broader scale patterns of animal habitat selection and space use.

Publication Year 2025
Title Marginalizing time in habitat selection and species distribution models improves inference
DOI 10.1111/ddi.70028
Authors Joseph Michael Eisaguirre, Layne G. Adams, Bridget Borg, Heather E. Johnson
Publication Type Article
Publication Subtype Journal Article
Series Title Diversity and Distributions
Index ID 70266525
Record Source USGS Publications Warehouse
USGS Organization Alaska Science Center Ecosystems
Was this page helpful?