Identifying prototypical components in behaviour using clustering algorithms.

Quantitative analysis of animal behaviour is a requirement to understand the task solving strategies of animals and the underlying control mechanisms. The identification of repeatedly occurring behavioural components is thereby a key element of a structured quantitative description. However, the com...

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Main Authors: Elke Braun, Bart Geurten, Martin Egelhaaf
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2010-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC2825265?pdf=render
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spelling doaj-ee98b41b7e0246beb8abd8211f96fc8c2020-11-25T01:48:09ZengPublic Library of Science (PLoS)PLoS ONE1932-62032010-01-0152e936110.1371/journal.pone.0009361Identifying prototypical components in behaviour using clustering algorithms.Elke BraunBart GeurtenMartin EgelhaafQuantitative analysis of animal behaviour is a requirement to understand the task solving strategies of animals and the underlying control mechanisms. The identification of repeatedly occurring behavioural components is thereby a key element of a structured quantitative description. However, the complexity of most behaviours makes the identification of such behavioural components a challenging problem. We propose an automatic and objective approach for determining and evaluating prototypical behavioural components. Behavioural prototypes are identified using clustering algorithms and finally evaluated with respect to their ability to represent the whole behavioural data set. The prototypes allow for a meaningful segmentation of behavioural sequences. We applied our clustering approach to identify prototypical movements of the head of blowflies during cruising flight. The results confirm the previously established saccadic gaze strategy by the set of prototypes being divided into either predominantly translational or rotational movements, respectively. The prototypes reveal additional details about the saccadic and intersaccadic flight sections that could not be unravelled so far. Successful application of the proposed approach to behavioural data shows its ability to automatically identify prototypical behavioural components within a large and noisy database and to evaluate these with respect to their quality and stability. Hence, this approach might be applied to a broad range of behavioural and neural data obtained from different animals and in different contexts.http://europepmc.org/articles/PMC2825265?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Elke Braun
Bart Geurten
Martin Egelhaaf
spellingShingle Elke Braun
Bart Geurten
Martin Egelhaaf
Identifying prototypical components in behaviour using clustering algorithms.
PLoS ONE
author_facet Elke Braun
Bart Geurten
Martin Egelhaaf
author_sort Elke Braun
title Identifying prototypical components in behaviour using clustering algorithms.
title_short Identifying prototypical components in behaviour using clustering algorithms.
title_full Identifying prototypical components in behaviour using clustering algorithms.
title_fullStr Identifying prototypical components in behaviour using clustering algorithms.
title_full_unstemmed Identifying prototypical components in behaviour using clustering algorithms.
title_sort identifying prototypical components in behaviour using clustering algorithms.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2010-01-01
description Quantitative analysis of animal behaviour is a requirement to understand the task solving strategies of animals and the underlying control mechanisms. The identification of repeatedly occurring behavioural components is thereby a key element of a structured quantitative description. However, the complexity of most behaviours makes the identification of such behavioural components a challenging problem. We propose an automatic and objective approach for determining and evaluating prototypical behavioural components. Behavioural prototypes are identified using clustering algorithms and finally evaluated with respect to their ability to represent the whole behavioural data set. The prototypes allow for a meaningful segmentation of behavioural sequences. We applied our clustering approach to identify prototypical movements of the head of blowflies during cruising flight. The results confirm the previously established saccadic gaze strategy by the set of prototypes being divided into either predominantly translational or rotational movements, respectively. The prototypes reveal additional details about the saccadic and intersaccadic flight sections that could not be unravelled so far. Successful application of the proposed approach to behavioural data shows its ability to automatically identify prototypical behavioural components within a large and noisy database and to evaluate these with respect to their quality and stability. Hence, this approach might be applied to a broad range of behavioural and neural data obtained from different animals and in different contexts.
url http://europepmc.org/articles/PMC2825265?pdf=render
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