Agent-based model for the origins of scaling in human language

05/16/2017
by   Javier Vera, et al.
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Background/Introduction: The Zipf's law establishes that if the words of a (large) text are ordered by decreasing frequency, the frequency versus the rank decreases as a power law with exponent close to -1. Previous work has stressed that this pattern arises from a conflict of interests of the participants of communication: speakers and hearers. Methods: The challenge here is to define a computational language game on a population of agents, playing games mainly based on a parameter that measures the relative participant's interests. Results: Numerical simulations suggest that at critical values of the parameter a human-like vocabulary, exhibiting scaling properties, seems to appear. Conclusions: The appearance of an intermediate distribution of frequencies at some critical values of the parameter suggests that on a population of artificial agents the emergence of scaling partly arises as a self-organized process only from local interactions between agents.

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