Affiliation:
1. Virginia Bioinformatics Institute, Virginia Polytechnic Institute and State University,
2. Graduate School for Library and Information Science, and Department of Computer Science, University of Illinois at Urbana-Champaign,
Abstract
The iterated classification game (ICG) combines the classification game with the iterated learning model (ILM) to create a more realistic model of the cultural transmission of language through generations. It includes both learning from parents and learning from peers. Further, it eliminates some of the chief criticisms of the ILM: that it does not study grounded languages, that it does not include peer learning, and that it builds in a bias for compositional languages. We show that, over the span of a few generations, a stable linguistic system emerges that can be acquired very quickly by each generation, is compositional, and helps the agents to solve the classification problem with which they are faced. The ICG also leads to a different interpretation of the language acquisition process. It suggests that the role of parents is to initialize the linguistic system of the child in such a way that subsequent interaction with peers results in rapid convergence to the correct language.
Subject
Behavioral Neuroscience,Experimental and Cognitive Psychology
Cited by
5 articles.
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