Bayesian Methods for Estimating Animal Abundance at Large Spatial Scales Using Data from Multiple Sources

被引:0
作者
Soumen Dey
Mohan Delampady
Ravishankar Parameshwaran
N. Samba Kumar
Arjun Srivathsa
K. Ullas Karanth
机构
[1] Indian Statistical Institute,Statistics and Mathematics Unit
[2] Bangalore Centre,Department of Wildlife Ecology and Conservation
[3] Centre for Wildlife Studies,undefined
[4] Wildlife Conservation Society,undefined
[5] India Program,undefined
[6] School of Natural Resources and Environment,undefined
[7] University of Florida,undefined
[8] University of Florida,undefined
[9] National Centre for Biological Sciences,undefined
[10] Tata Institute of Fundamental Research,undefined
来源
Journal of Agricultural, Biological and Environmental Statistics | 2017年 / 22卷
关键词
Capture–recapture survey; CAR model; Hierarchical Bayes; Model selection; Occupancy survey; Spatial confounding;
D O I
暂无
中图分类号
学科分类号
摘要
Estimating animal distributions and abundances over large regions is of primary interest in ecology and conservation. Specifically, integrating data from reliable but expensive surveys conducted at smaller scales with cost-effective but less reliable data generated from surveys at wider scales remains a central challenge in statistical ecology. In this study, we use a Bayesian smoothing technique based on a conditionally autoregressive (CAR) prior distribution and Bayesian regression to address this problem. We illustrate the utility of our proposed methodology by integrating (i) abundance estimates of tigers in wildlife reserves from intensive photographic capture–recapture methods, and (ii) estimates of tiger habitat occupancy from indirect sign surveys, conducted over a wider region. We also investigate whether the random effects which represent the spatial association due to the CAR structure have any confounding effect on the fixed effects of the regression coefficients.
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页码:111 / 139
页数:28
相关论文
共 159 条
[1]  
Banerjee S(2010)Hierarchical spatial process models for multiple traits in large genetic trials Journal of the American Statistical Association 105 506-521
[2]  
Finley AO(2008)Gaussian predictive process models for large spatial data sets Journal of the Royal Statistical Society: Series B (Statistical Methodology) 70 825-848
[3]  
Waldmann P(2002)Integrating mark-recapture-recovery and census data to estimate animal abundance and demographic parameters Biometrics 58 540-547
[4]  
Ericsson T(2014)Improving abundance estimation by combining capture-recapture and occupancy data: example with a large carnivore Journal of Applied Ecology 51 1733-1739
[5]  
Banerjee S(2008)Spatially Explicit Maximum Likelihood Methods for Capture-Recapture Studies Biometrics 64 377-385
[6]  
Gelfand AE(2015)Multivariate spatio-temporal models for high-dimensional areal data with application to longitudinal employer-household dynamics The Annals of Applied Statistics 9 1761-1791
[7]  
Finley AO(2004)A Bayesian approach to combining animal abundance and demographic data Animal Biodiversity and Conservation 27 515-529
[8]  
Sang H(1994)Multivariate spatial interpolation and exposure to air pollutants Canadian Journal of Statistics 22 489-509
[9]  
Besbeas P(2004)State-space models for the dynamics of wild animal populations Ecological Modelling 171 157-175
[10]  
Freeman SN(2003)Hierarchical multivariate CAR models for spatio-temporally correlated survival data Bayesian statistics 7 45-63