Learning auditory discriminations from observation is efficient but less robust than learning from experience


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Date

2018-08-13

Publication Type

Journal Article

ETH Bibliography

yes

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Data

Abstract

Social learning enables complex societies. However, it is largely unknown how insights obtained from observation compare with insights gained from trial-and-error, in particular in terms of their robustness. Here, we use aversive reinforcement to train “experimenter” zebra finches to discriminate between auditory stimuli in the presence of an “observer” finch. We show that experimenters are slow to successfully discriminate the stimuli, but immediately generalize their ability to a new set of similar stimuli. By contrast, observers subjected to the same task are able to discriminate the initial stimulus set, but require more time for successful generalization. Drawing on concepts from machine learning, we suggest that observer learning has evolved to rapidly absorb sensory statistics without pressure to minimize neural resources, whereas learning from experience is endowed with a form of regularization that enables robust inference.

Publication status

published

Editor

Book title

Volume

9

Pages / Article No.

3218

Publisher

Nature

Event

Edition / version

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Geographic location

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Date created

Subject

Organisational unit

03774 - Hahnloser, Richard H.R. / Hahnloser, Richard H.R. check_circle

Notes

Funding

156976 - Vocal tuning and sequencing in songbirds and in humans (SNF)

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