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Behavioral discrimination and time-series phenotyping of birdsong performance
Authors:Avishek Paul  Helen McLendon  Veronica Rally  Jon T. Sakata  Sarah C. Woolley
Affiliation:1. Dept. Electrical & Computer Engineering, McGill University, Montreal, Canada;2. Dept. Biology, McGill University, Montreal, Canada;3. Keck Center for Integrative Neuroscience, University of California, San Francisco, San Francisco, California, United States of America;4. Centre for Research on Brain, Language, and Music, McGill University, Montreal, Canada;University of California at Berkeley, UNITED STATES
Abstract:Variation in the acoustic structure of vocal signals is important to communicate social information. However, relatively little is known about the features that receivers extract to decipher relevant social information. Here, we took an expansive, bottom-up approach to delineate the feature space that could be important for processing social information in zebra finch song. Using operant techniques, we discovered that female zebra finches can consistently discriminate brief song phrases (“motifs”) from different social contexts. We then applied machine learning algorithms to classify motifs based on thousands of time-series features and to uncover acoustic features for motif discrimination. In addition to highlighting classic acoustic features, the resulting algorithm revealed novel features for song discrimination, for example, measures of time irreversibility (i.e., the degree to which the statistical properties of the actual and time-reversed signal differ). Moreover, the algorithm accurately predicted female performance on individual motif exemplars. These data underscore and expand the promise of broad time-series phenotyping to acoustic analyses and social decision-making.
Keywords:
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