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  1. Using Category Structures to Test Iterated Learning as a Method for Identifying Inductive Biases.Thomas L. Griffiths, Brian R. Christian & Michael L. Kalish - 2008 - Cognitive Science 32 (1):68-107.
    Many of the problems studied in cognitive science are inductive problems, requiring people to evaluate hypotheses in the light of data. The key to solving these problems successfully is having the right inductive biases—assumptions about the world that make it possible to choose between hypotheses that are equally consistent with the observed data. This article explores a novel experimental method for identifying the biases that guide human inductive inferences. The idea behind this method is simple: This article uses the responses (...)
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  • Language Evolution by Iterated Learning With Bayesian Agents.Thomas L. Griffiths & Michael L. Kalish - 2007 - Cognitive Science 31 (3):441-480.
    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 (...)
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  • The faculty of language: What is it, who has it, and how did it evolve?Hauser Marc, D. Chomsky, Noam Fitch & W. Tecumseh - 2002 - Science 298 (22):1569-1579.
    We argue that an understanding of the faculty of language requires substantial interdisciplinary cooperation. We suggest how current developments in linguistics can be profitably wedded to work in evolutionary biology, anthropology, psychology, and neuroscience. We submit that a distinction should be made between the faculty of language in the broad sense (FLB)and in the narrow sense (FLN). FLB includes a sensory-motor system, a conceptual-intentional system, and the computational mechanisms for recursion, providing the capacity to generate an infinite range of expressions (...)
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  • Language as shaped by the brain.Morten H. Christiansen & Nick Chater - 2008 - Behavioral and Brain Sciences 31 (5):489-509.
    It is widely assumed that human learning and the structure of human languages are intimately related. This relationship is frequently suggested to derive from a language-specific biological endowment, which encodes universal, but communicatively arbitrary, principles of language structure (a Universal Grammar or UG). How might such a UG have evolved? We argue that UG could not have arisen either by biological adaptation or non-adaptationist genetic processes, resulting in a logical problem of language evolution. Specifically, as the processes of language change (...)
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  • Natural language and natural selection.Steven Pinker & Paul Bloom - 1990 - Behavioral and Brain Sciences 13 (4):707-27.
    Many people have argued that the evolution of the human language faculty cannot be explained by Darwinian natural selection. Chomsky and Gould have suggested that language may have evolved as the by-product of selection for other abilities or as a consequence of as-yet unknown laws of growth and form. Others have argued that a biological specialization for grammar is incompatible with every tenet of Darwinian theory – that it shows no genetic variation, could not exist in any intermediate forms, confers (...)
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  • The emergence of linguistic structure: An overview of the iterated learning model.Simon Kirby & James R. Hurford - 2002 - In Angelo Cangelosi & Domenico Parisi (eds.), Simulating the Evolution of Language. Springer Verlag. pp. 121--147.
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  • Iterated learning and the cultural ratchet.Aaron Beppu & Thomas L. Griffiths - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society. pp. 2089--2094.
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  • Iterated learning in populations of Bayesian agents.Kenny Smith - 2009 - In N. A. Taatgen & H. van Rijn (eds.), Proceedings of the 31st Annual Conference of the Cognitive Science Society. pp. 697--702.
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  • Eliminating unpredictable variation through iterated learning.Kenny Smith & Elizabeth Wonnacott - 2010 - Cognition 116 (3):444-449.
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  • The evolution of frequency distributions: Relating regularization to inductive biases through iterated learning.Florencia Reali & Thomas L. Griffiths - 2009 - Cognition 111 (3):317-328.
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  • Whose DAM account? Attentional learning explains Booth and Waxman.Linda B. Smith, Susan S. Jones, Hanako Yoshida & Eliana Colunga - 2003 - Cognition 87 (3):209-213.
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