Simple bagged movement models for telemetry data
Determining which statistical methods are appropriate for data is both user and data dependent and prone to change as new methodology becomes available. This process encompasses model ideation, model selection, and determining appropriate use of statistical methods. Literature on models for animal movement emerging in the past two decades has yielded a rich collection of statistical methods garnering much deserved positive attention. Among such efforts, there is limited investigation of the broader place for simple machine learning methodology in animal movement modeling. We propose a bagged (i.e., bootstrap aggregated) animal movement model using simple, off-the-shelf machine learning algorithms. The model is intuitive, retains statistical inference about characteristics of animal movement (i.e., estimated from model-based summary statistics), and only requires knowledge of elementary statistical and machine learning analysis to understand. We show by simulation that our model can provide unbiased estimates of pertinent characteristics of animal movement (e.g., daily displacement) in the presence of large and realistic location error. We believe that increasing accessible literature on simple machine learning animal movement models provides valuable pedagogical and practical support for researchers using statistical models to study animal movement.
Citation Information
| Publication Year | 2025 |
|---|---|
| Title | Simple bagged movement models for telemetry data |
| DOI | 10.1002/ece3.72060 |
| Authors | Andrew B. Whetten, Trevor J. Hefley, David A. Haukos, Dustin E. Brewer |
| Publication Type | Article |
| Publication Subtype | Journal Article |
| Series Title | Ecology and Evolution |
| Index ID | 70272292 |
| Record Source | USGS Publications Warehouse |
| USGS Organization | Coop Res Unit Atlanta |