Literature DB >> 26485953

Objective classification of latent behavioral states in bio-logging data using multivariate-normal hidden Markov models.

Joe Scutt Phillips, Toby A Patterson, Bruno Leroy, Graham M Pilling, Simon J Nicol.   

Abstract

Analysis of complex time-series data from ecological system study requires quantitative tools for objective description and classification. These tools must take into account largely ignored problems of bias in manual classification, autocorrelation, and noise. Here we describe a method using existing estimation techniques for multivariate-normal hidden Markov models (HMMs) to develop such a classification. We use high-resolution behavioral data from bio-loggers attached to free-roaming pelagic tuna as an example. Observed patterns are assumed to be generated by an unseen Markov process that switches between several multivariate-normal distributions. Our approach is assessed in two parts. The first uses simulation experiments, from which the ability of the HMM to estimate known parameter values is examined using artificial time series of data consistent with hypotheses about pelagic predator foraging ecology. The second is the application to time series of continuous vertical movement data from yellowfin and bigeye tuna taken from tuna tagging experiments. These data were compressed into summary metrics capturing the variation of patterns in diving behavior and formed into a multivariate time series used to estimate a HMM. Each observation was associated with covariate information incorporating the effect of day and night on behavioral switching. Known parameter values were well recovered by the HMMs in our simulation experiments, resulting in mean correct classification rates of 90-97%, although some variance-covariance parameters were estimated less accurately. HMMs with two distinct behavioral states were selected for every time series of real tuna data, predicting a shallow warm state, which was similar across all individuals, and a deep colder state, which was more variable. Marked diurnal behavioral switching was predicted, consistent with many previous empirical studies on tuna. HMMs provide easily interpretable models for the objective classification of many different types of noisy autocorrelated data, as typically found across a range of ecological systems. Summarizing time-series data into a multivariate assemblage of dimensions relevant to the desired classification provides a means to examine these data in an appropriate behavioral space. We discuss how outputs of these models can be applied to bio-logging and other imperfect behavioral data, providing easily interpretable models for hypothesis testing.

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Year:  2015        PMID: 26485953     DOI: 10.1890/14-0862.1

Source DB:  PubMed          Journal:  Ecol Appl        ISSN: 1051-0761            Impact factor:   4.657


  7 in total

1.  Revisiting the vulnerability of juvenile bigeye (Thunnus obesus) and yellowfin (T. albacares) tuna caught by purse-seine fisheries while associating with surface waters and floating objects.

Authors:  Joe Scutt Phillips; Graham M Pilling; Bruno Leroy; Karen Evans; Thomas Usu; Chi Hin Lam; Kurt M Schaefer; Simon Nicol
Journal:  PLoS One       Date:  2017-06-29       Impact factor: 3.240

2.  Coupling spectral analysis and hidden Markov models for the segmentation of behavioural patterns.

Authors:  Karine Heerah; Mathieu Woillez; Ronan Fablet; François Garren; Stéphane Martin; Hélène De Pontual
Journal:  Mov Ecol       Date:  2017-09-22       Impact factor: 3.600

3.  State-space modeling reveals habitat perception of a small terrestrial mammal in a fragmented landscape.

Authors:  Riana Gardiner; Rowena Hamer; Vianey Leos-Barajas; Cesar Peñaherrera-Palma; Menna E Jones; Chris Johnson
Journal:  Ecol Evol       Date:  2019-08-16       Impact factor: 3.167

4.  Identifying resting locations of a small elusive forest carnivore using a two-stage model accounting for GPS measurement error and hidden behavioral states.

Authors:  Dalton J Hance; Katie M Moriarty; Bruce A Hollen; Russell W Perry
Journal:  Mov Ecol       Date:  2021-04-06       Impact factor: 3.600

Review 5.  Uncovering ecological state dynamics with hidden Markov models.

Authors:  Brett T McClintock; Roland Langrock; Olivier Gimenez; Emmanuelle Cam; David L Borchers; Richard Glennie; Toby A Patterson
Journal:  Ecol Lett       Date:  2020-10-19       Impact factor: 9.492

6.  Classifying behavior from short-interval biologging data: An example with GPS tracking of birds.

Authors:  Silas Bergen; Manuela M Huso; Adam E Duerr; Melissa A Braham; Todd E Katzner; Sara Schmuecker; Tricia A Miller
Journal:  Ecol Evol       Date:  2022-02-07       Impact factor: 2.912

7.  Scaling marine fish movement behavior from individuals to populations.

Authors:  Christopher A Griffiths; Toby A Patterson; Julia L Blanchard; David A Righton; Serena R Wright; Jon W Pitchford; Paul G Blackwell
Journal:  Ecol Evol       Date:  2018-06-25       Impact factor: 2.912

  7 in total

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