Fast fitting of non-Gaussian state-space models to animal movement data via Template Model Builder

被引:50
|
作者
Albertsen, Christoffer Moesgaard [1 ]
Whoriskey, Kim [2 ]
Yurkowski, David [3 ]
Nielsen, Anders [1 ]
Flemming, Joanna Mills [2 ]
机构
[1] Tech Univ Denmark, Natl Inst Aquat Resources, DK-2920 Charlottenlund, Denmark
[2] Dalhousie Univ, Dept Math & Stat, Halifax, NS B3H4R2, Canada
[3] Univ Windsor, Great Lakes Inst Environm Res, Windsor, ON N9B 3P4, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
animal movement; Argos system; Laplace approximation; outliers; state-space models; Template Model Builder;
D O I
10.1890/14-2101.1.sm
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
State-space models (SSM) are often used for analyzing complex ecological processes that are not observed directly, such as marine animal movement. When outliers are present in the measurements, special care is needed in the analysis to obtain reliable location and process estimates. Here we recommend using the Laplace approximation combined with automatic differentiation (as implemented in the novel R package Template Model Builder; TMB) for the fast fitting of continuous-time multivariate non-Gaussian SSMs. Through Argos satellite tracking data, we demonstrate that the use of continuous-time t-distributed measurement errors for error-prone data is more robust to outliers and improves the location estimation compared to using discretized-time t-distributed errors (implemented with a Gibbs sampler) or using continuous-time Gaussian errors (as with the Kalman filter). Using TMB, we are able to estimate additional parameters compared to previous methods, all without requiring a substantial increase in computational time. The model implementation is made available through the R package argosTrack.
引用
收藏
页码:2598 / 2604
页数:7
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