Cargando…

Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire

SIMPLE SUMMARY: The description of the vocal repertoire represents a critical step before deepening other aspects of animal behaviour. Repertoires may contain both discrete vocalizations—acoustically distinct and distinguishable from each other—or graded ones, with a less rigid acoustic structure. T...

Descripción completa

Detalles Bibliográficos
Autores principales: Valente, Daria, De Gregorio, Chiara, Torti, Valeria, Miaretsoa, Longondraza, Friard, Olivier, Randrianarison, Rose Marie, Giacoma, Cristina, Gamba, Marco
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6562776/
https://www.ncbi.nlm.nih.gov/pubmed/31096675
http://dx.doi.org/10.3390/ani9050243
_version_ 1783426398583521280
author Valente, Daria
De Gregorio, Chiara
Torti, Valeria
Miaretsoa, Longondraza
Friard, Olivier
Randrianarison, Rose Marie
Giacoma, Cristina
Gamba, Marco
author_facet Valente, Daria
De Gregorio, Chiara
Torti, Valeria
Miaretsoa, Longondraza
Friard, Olivier
Randrianarison, Rose Marie
Giacoma, Cristina
Gamba, Marco
author_sort Valente, Daria
collection PubMed
description SIMPLE SUMMARY: The description of the vocal repertoire represents a critical step before deepening other aspects of animal behaviour. Repertoires may contain both discrete vocalizations—acoustically distinct and distinguishable from each other—or graded ones, with a less rigid acoustic structure. The gradation level is one of the causes that make repertoires challenging to be objectively quantified. Indeed, the higher the level of gradation in a system, the higher the complexity in grouping its components. A large sample of Indri indri calls was divided into ten putative categories from the acoustic similarity among them. We extracted frequency and duration parameters and then performed two different analyses that were able to group the calls accordingly to the a priori categories, indicating the presence of ten robust vocal classes. The analyses also showed a neat grouping of discrete vocalizations and a weaker classification of graded ones. ABSTRACT: Although there is a growing number of researches focusing on acoustic communication, the lack of shared analytic approaches leads to inconsistency among studies. Here, we introduced a computational method used to examine 3360 calls recorded from wild indris (Indri indri) from 2005–2018. We split each sound into ten portions of equal length and, from each portion we extracted spectral coefficients, considering frequency values up to 15,000 Hz. We submitted the set of acoustic features first to a t-distributed stochastic neighbor embedding algorithm, then to a hard-clustering procedure using a k-means algorithm. The t-distributed stochastic neighbor embedding (t-SNE) mapping indicated the presence of eight different groups, consistent with the acoustic structure of the a priori identification of calls, while the cluster analysis revealed that an overlay between distinct call types might exist. Our results indicated that the t-distributed stochastic neighbor embedding (t-SNE), successfully been employed in several studies, showed a good performance also in the analysis of indris’ repertoire and may open new perspectives towards the achievement of shared methodical techniques for the comparison of animal vocal repertoires.
format Online
Article
Text
id pubmed-6562776
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-65627762019-06-17 Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire Valente, Daria De Gregorio, Chiara Torti, Valeria Miaretsoa, Longondraza Friard, Olivier Randrianarison, Rose Marie Giacoma, Cristina Gamba, Marco Animals (Basel) Article SIMPLE SUMMARY: The description of the vocal repertoire represents a critical step before deepening other aspects of animal behaviour. Repertoires may contain both discrete vocalizations—acoustically distinct and distinguishable from each other—or graded ones, with a less rigid acoustic structure. The gradation level is one of the causes that make repertoires challenging to be objectively quantified. Indeed, the higher the level of gradation in a system, the higher the complexity in grouping its components. A large sample of Indri indri calls was divided into ten putative categories from the acoustic similarity among them. We extracted frequency and duration parameters and then performed two different analyses that were able to group the calls accordingly to the a priori categories, indicating the presence of ten robust vocal classes. The analyses also showed a neat grouping of discrete vocalizations and a weaker classification of graded ones. ABSTRACT: Although there is a growing number of researches focusing on acoustic communication, the lack of shared analytic approaches leads to inconsistency among studies. Here, we introduced a computational method used to examine 3360 calls recorded from wild indris (Indri indri) from 2005–2018. We split each sound into ten portions of equal length and, from each portion we extracted spectral coefficients, considering frequency values up to 15,000 Hz. We submitted the set of acoustic features first to a t-distributed stochastic neighbor embedding algorithm, then to a hard-clustering procedure using a k-means algorithm. The t-distributed stochastic neighbor embedding (t-SNE) mapping indicated the presence of eight different groups, consistent with the acoustic structure of the a priori identification of calls, while the cluster analysis revealed that an overlay between distinct call types might exist. Our results indicated that the t-distributed stochastic neighbor embedding (t-SNE), successfully been employed in several studies, showed a good performance also in the analysis of indris’ repertoire and may open new perspectives towards the achievement of shared methodical techniques for the comparison of animal vocal repertoires. MDPI 2019-05-15 /pmc/articles/PMC6562776/ /pubmed/31096675 http://dx.doi.org/10.3390/ani9050243 Text en © 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Valente, Daria
De Gregorio, Chiara
Torti, Valeria
Miaretsoa, Longondraza
Friard, Olivier
Randrianarison, Rose Marie
Giacoma, Cristina
Gamba, Marco
Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire
title Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire
title_full Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire
title_fullStr Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire
title_full_unstemmed Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire
title_short Finding Meanings in Low Dimensional Structures: Stochastic Neighbor Embedding Applied to the Analysis of Indri indri Vocal Repertoire
title_sort finding meanings in low dimensional structures: stochastic neighbor embedding applied to the analysis of indri indri vocal repertoire
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6562776/
https://www.ncbi.nlm.nih.gov/pubmed/31096675
http://dx.doi.org/10.3390/ani9050243
work_keys_str_mv AT valentedaria findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire
AT degregoriochiara findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire
AT tortivaleria findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire
AT miaretsoalongondraza findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire
AT friardolivier findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire
AT randrianarisonrosemarie findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire
AT giacomacristina findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire
AT gambamarco findingmeaningsinlowdimensionalstructuresstochasticneighborembeddingappliedtotheanalysisofindriindrivocalrepertoire