Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models

Occupancy models allow assessing species occurrence while accounting for imperfect detection. As with any statistical models, occupancy models rely on several assumptions amongst which (i) there should be no unmodelled heterogeneity in the detection probability and (ii) the species should not be det...

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Main Authors: Louvrier, Julie, Chambert, Thierry, Marboutin, Eric, Gimenez, Olivier
Format: Article in Journal/Newspaper
Language:unknown
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S0304380018302904
id ftrepec:oai:RePEc:eee:ecomod:v:387:y:2018:i:c:p:61-69
record_format openpolar
spelling ftrepec:oai:RePEc:eee:ecomod:v:387:y:2018:i:c:p:61-69 2024-04-14T08:10:12+00:00 Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models Louvrier, Julie Chambert, Thierry Marboutin, Eric Gimenez, Olivier http://www.sciencedirect.com/science/article/pii/S0304380018302904 unknown http://www.sciencedirect.com/science/article/pii/S0304380018302904 article ftrepec 2024-03-19T10:29:39Z Occupancy models allow assessing species occurrence while accounting for imperfect detection. As with any statistical models, occupancy models rely on several assumptions amongst which (i) there should be no unmodelled heterogeneity in the detection probability and (ii) the species should not be detected when absent from a site, in other words there should be no false positives (e.g., due to misidentification). In the real world, these two assumptions are often violated. To date, models accounting simultaneously for both detection heterogeneity and false positives are yet to be developed. Here, we first show how occupancy models with false positives can be formulated as hidden Markov models (HMM). Second, benefiting from the HMM framework flexibility, we extend models with false positives to account for heterogeneity with finite mixtures. First, using simulations, we demonstrate that, as the level of heterogeneity increases, occupancy models accounting for both heterogeneity and misidentification perform better in terms of bias and precision than models accounting for misidentification only. Next, we illustrate the implementation of our new model to a real case study with grey wolves (Canis lupus) in France. We demonstrate that heterogeneity in wolf detection (false negatives) is mainly due to a heterogeneous sampling effort across space. In addition to providing a novel modeling formulation, this work illustrates the flexibility of HMM framework to formulate complex ecological models and relax important assumptions that are not always likely to hold. In particular, we show how to decompose the model structure in several simple components, in a way that provides much clearer ecological interpretation. Occupancy models; Detection heterogeneity; Species imperfect detection; False-positives; Finite-mixture models; Article in Journal/Newspaper Canis lupus RePEc (Research Papers in Economics)
institution Open Polar
collection RePEc (Research Papers in Economics)
op_collection_id ftrepec
language unknown
description Occupancy models allow assessing species occurrence while accounting for imperfect detection. As with any statistical models, occupancy models rely on several assumptions amongst which (i) there should be no unmodelled heterogeneity in the detection probability and (ii) the species should not be detected when absent from a site, in other words there should be no false positives (e.g., due to misidentification). In the real world, these two assumptions are often violated. To date, models accounting simultaneously for both detection heterogeneity and false positives are yet to be developed. Here, we first show how occupancy models with false positives can be formulated as hidden Markov models (HMM). Second, benefiting from the HMM framework flexibility, we extend models with false positives to account for heterogeneity with finite mixtures. First, using simulations, we demonstrate that, as the level of heterogeneity increases, occupancy models accounting for both heterogeneity and misidentification perform better in terms of bias and precision than models accounting for misidentification only. Next, we illustrate the implementation of our new model to a real case study with grey wolves (Canis lupus) in France. We demonstrate that heterogeneity in wolf detection (false negatives) is mainly due to a heterogeneous sampling effort across space. In addition to providing a novel modeling formulation, this work illustrates the flexibility of HMM framework to formulate complex ecological models and relax important assumptions that are not always likely to hold. In particular, we show how to decompose the model structure in several simple components, in a way that provides much clearer ecological interpretation. Occupancy models; Detection heterogeneity; Species imperfect detection; False-positives; Finite-mixture models;
format Article in Journal/Newspaper
author Louvrier, Julie
Chambert, Thierry
Marboutin, Eric
Gimenez, Olivier
spellingShingle Louvrier, Julie
Chambert, Thierry
Marboutin, Eric
Gimenez, Olivier
Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models
author_facet Louvrier, Julie
Chambert, Thierry
Marboutin, Eric
Gimenez, Olivier
author_sort Louvrier, Julie
title Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models
title_short Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models
title_full Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models
title_fullStr Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models
title_full_unstemmed Accounting for misidentification and heterogeneity in occupancy studies using hidden Markov models
title_sort accounting for misidentification and heterogeneity in occupancy studies using hidden markov models
url http://www.sciencedirect.com/science/article/pii/S0304380018302904
genre Canis lupus
genre_facet Canis lupus
op_relation http://www.sciencedirect.com/science/article/pii/S0304380018302904
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