Journal article
Combined influences of model choice, data quality, and data quantity when estimating population trends
P Rueda-Cediel, KE Anderson, TJ Regan, J Franklin, HM Regan
Plos One | Published : 2015
Open access
Abstract
Estimating and projecting population trends using population viability analysis (PVA) are central to identifying species at risk of extinction and for informing conservation management strategies. Models for PVA generally fall within two categories, scalar (count-based) or matrix (demographic). Model structure, process error, measurement error, and time series length all have known impacts in population risk assessments, but their combined impact has not been thoroughly investigated.We tested the ability of scalar and matrix PVA models to predict percent decline over a ten-year interval, selected to coincide with the IUCN Red List criterion A.3, using data simulated for a hypothetical, short..
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Awarded by National Science Foundation
Funding Acknowledgements
This research was supported by the National Science Foundation (www.nsf.gov; DEB-0824708, and EF-1065753) and the California Landscape Conservation Cooperative (californialcc.org; 5288768) through grants to HMR, JF and KEA. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.