Of power and despair in cetacean conservation: estimation and detection of trend in abundance with noisy and short time-series
Author(s) -
Matthieu Authier,
Anders Galatius,
Anita Gilles,
Jérôme Spitz
Publication year - 2020
Publication title -
peerj
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.927
H-Index - 70
ISSN - 2167-8359
DOI - 10.7717/peerj.9436
Subject(s) - statistics , statistical power , magnitude (astronomy) , abundance (ecology) , estimation , series (stratigraphy) , type i and type ii errors , population , confidence interval , econometrics , population size , noise (video) , sample size determination , mathematics , ecology , computer science , biology , demography , physics , artificial intelligence , economics , paleontology , management , astronomy , sociology , image (mathematics)
Many conservation instruments rely on detecting and estimating a population decline in a target species to take action. Trend estimation is difficult because of small sample size and relatively large uncertainty in abundance/density estimates of many wild populations of animals. Focusing on cetaceans, we performed a prospective analysis to estimate power, type-I, sign (type-S) and magnitude (type-M) error rates of detecting a decline in short time-series of abundance estimates with different signal-to-noise ratio. We contrasted results from both unregularized (classical) and regularized approaches. The latter allows to incorporate prior information when estimating a trend. Power to detect a statistically significant estimates was in general lower than 80%, except for large declines. The unregularized approach (status quo) had inflated type-I error rates and gave biased (either over- or under-) estimates of a trend. The regularized approach with a weakly-informative prior offered the best trade-off in terms of bias, statistical power, type-I, type-S and type-M error rates and confidence interval coverage. To facilitate timely conservation decisions, we recommend to use the regularized approach with a weakly-informative prior in the detection and estimation of trend with short and noisy time-series of abundance estimates.
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