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COGSCI
2007

Language Evolution by Iterated Learning With Bayesian Agents

13 years 4 months ago
Language Evolution by Iterated Learning With Bayesian Agents
Languages are transmitted from person to person and generation to generation via a process of iterated learning: people learn a language from other people who once learned that language themselves. We analyze the consequences of iterated learning for learning algorithms based on the principles of Bayesian inference, assuming that learners compute a posterior distribution over languages by combining a prior (representing their inductive biases) with the evidence provided by linguistic data. We show that when learners sample languages from this posterior distribution, iterated learning converges to a distribution over languages that is determined entirely by the prior. Under these conditions, iterated learning is a form of Gibbs sampling, a widely-used Markov chain Monte Carlo algorithm. The consequences of iterated learning are more complicated when learners choose the language with maximum posterior probability, being affected by both the prior of the learners and the amount of inform...
Thomas L. Griffiths, Michael L. Kalish
Added 12 Dec 2010
Updated 12 Dec 2010
Type Journal
Year 2007
Where COGSCI
Authors Thomas L. Griffiths, Michael L. Kalish
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