Publication: Who is calling? Optimizing source identification from marmoset vocalizations with hierarchical machine learning classifiers
Who is calling? Optimizing source identification from marmoset vocalizations with hierarchical machine learning classifiers
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Phaniraj, N., Wierucka, K., Zürcher, Y., & Burkart, J. M. (2023). Who is calling? Optimizing source identification from marmoset vocalizations with hierarchical machine learning classifiers. Journal of the Royal Society Interface, 20, 20230399. https://doi.org/10.1098/rsif.2023.0399
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With their highly social nature and complex vocal communication system, marmosets are important models for comparative studies of vocal communication and, eventually, language evolution. However, our knowledge about marmoset vocalizations predominantly originates from playback studies or vocal interactions between dyads, and there is a need to move towards studying group-level communication dynamics. Efficient source identification from marmoset vocalizations is essential for this challenge, and machine learning algorithms (MLAs) can
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Phaniraj, N., Wierucka, K., Zürcher, Y., & Burkart, J. M. (2023). Who is calling? Optimizing source identification from marmoset vocalizations with hierarchical machine learning classifiers. Journal of the Royal Society Interface, 20, 20230399. https://doi.org/10.1098/rsif.2023.0399