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鸣禽的统计学习:从自我训练到鸣唱文化

Statistical learning in songbirds: from self-tutoring to song culture.

作者信息

Fehér Olga, Ljubičić Iva, Suzuki Kenta, Okanoya Kazuo, Tchernichovski Ofer

机构信息

School of Philosophy, Psychology and Language Sciences, University of Edinburgh, 3 Charles Street, Edinburgh EH8 9AD, UK

Psychology Department, Hunter College, 695 Park Avenue, New York, NY 10065, USA.

出版信息

Philos Trans R Soc Lond B Biol Sci. 2017 Jan 5;372(1711). doi: 10.1098/rstb.2016.0053.

Abstract

At the onset of vocal development, both songbirds and humans produce variable vocal babbling with broadly distributed acoustic features. Over development, these vocalizations differentiate into the well-defined, categorical signals that characterize adult vocal behaviour. A broadly distributed signal is ideal for vocal exploration, that is, for matching vocal production to the statistics of the sensory input. The developmental transition to categorical signals is a gradual process during which the vocal output becomes differentiated and stable. But does it require categorical input? We trained juvenile zebra finches with playbacks of their own developing song, produced just a few moments earlier, updated continuously over development. Although the vocalizations of these self-tutored (ST) birds were initially broadly distributed, birds quickly developed categorical signals, as fast as birds that were trained with a categorical, adult song template. By contrast, siblings of those birds that received no training (isolates) developed phonological categories much more slowly and never reached the same level of category differentiation as their ST brothers. Therefore, instead of simply mirroring the statistical properties of their sensory input, songbirds actively transform it into distinct categories. We suggest that the early self-generation of phonological categories facilitates the establishment of vocal culture by making the song easier to transmit at the micro level, while promoting stability of shared vocabulary at the group level over generations.This article is part of the themed issue 'New frontiers for statistical learning in the cognitive sciences'.

摘要

在发声发育开始时,鸣禽和人类都会发出具有广泛分布声学特征的可变发声咿呀声。在发育过程中,这些发声会分化为表征成年发声行为的明确、分类信号。广泛分布的信号对于发声探索非常理想,也就是说,用于使发声产生与感觉输入的统计数据相匹配

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f230/5124078/d852da7b7d06/rstb20160053-g1.jpg

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