Iterated learning: Intergenerational knowledge transmission reveals inductive biases

被引:0
|
作者
Michael L. Kalish
Thomas L. Griffiths
Stephan Lewandowsky
机构
[1] University of Louisiana at Lafayette,Institute of Cognitive Science
[2] University of California,undefined
[3] University of Western Australia,undefined
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关键词
Positive Slope; Iterate Learning; Cultural Transmission; Function Learning; Bayesian Learner;
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摘要
Cultural transmission of information plays a central role in shaping human knowledge. Some of the most complex knowledge that people acquire, such as languages or cultural norms, can only be learned from other people, who themselves learned from previous generations. The prevalence of this process of “iterated learning” as a mode of cultural transmission raises the question of how it affects the information being transmitted. Analyses of iterated learning utilizing the assumption that the learners are Bayesian agents predict that this process should converge to an equilibrium that reflects the inductive biases of the learners. An experiment in iterated function learning with human participants confirmed this prediction, providing insight into the consequences of intergenerational knowledge transmission and a method for discovering the inductive biases that guide human inferences.
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页码:288 / 294
页数:6
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