Classification of group-specific variations in songs within House Wren species using machine learning models
•In this purely data-driven approach we use machine learning models to perform classification of group-specific variations within the House Wren complex.•Additionally, we investigate geographical divergence in song characteristics within House Wren conspecifics by controlling for latitude.•We find o...
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Veröffentlicht in: | Ecological informatics 2023-05, Vol.74, p.101946, Article 101946 |
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Sprache: | eng |
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Zusammenfassung: | •In this purely data-driven approach we use machine learning models to perform classification of group-specific variations within the House Wren complex.•Additionally, we investigate geographical divergence in song characteristics within House Wren conspecifics by controlling for latitude.•We find out that our models are able to classify the variations with a high accuracy.•In order to provide reliable estimates of performance we employ a randomised approach to curate the dataset by drawing sound samples from different locations.•The results confirm an earlier field study of divergence in song characteristics in House Wren species.•The approach could be applied to other bird species in the database in order to discover or confirm variations in songs.
Songbirds have shown variation in vocalizations across different populations and different geographical ranges. Such variations can over time lead to divergence in song characteristics, sometimes referred to as dialects. House Wren (Troglodytes aedon) is one such widely distributed bird species that has shown variation in its song characteristics within different populations. Traditionally, such studies have been conducted using manual approaches for classification. In this work we explore the use of machine learning models that can assist in performing classification of bird songs at a conspecific level. Two machine learning techniques, the random forest and a shallow feed forward neural network, are fed with pre-computed sound features to classify vocal variation in House Wren species across different reported population groups and latitudinal areas. A randomized approach is employed to create balanced subsets of sounds from different locations for repeated classification runs in order to provide a reliable estimate of performance. It is observed that such an automated approach is able to classify variations in songs within House Wren with high accuracy. We were also able to confirm the latitudinal variation of House Wren songs reported in previous studies. Given these results, we believe, such a purely data-driven way of analyzing bird songs in general can provide useful hints to biologists on where to look for interesting patterns in order to understand the evolutionary divergence in song characteristics. |
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ISSN: | 1574-9541 |
DOI: | 10.1016/j.ecoinf.2022.101946 |