Effect of symmetry bias on linguistic evolution
Authored by H Sudo, R Matoba, T Cooper, A Tsukada
Date Published: 2016
DOI: 10.1007/s10015-016-0276-7
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Abstract
As described in this paper, we investigated the effect of the symmetry
bias on linguistic evolution. We specifically examined symmetry bias, which indicates the meaning in a state of environment. For this task, we
constructed a meaning selection iterated learning model based on Simon
Kirby's iterated learning Model, and used it for simulation with three
strategies: perfect matching symmetry bias, imperfect matching symmetry
bias, and random strategy. Results of applying imperfect matching
symmetry bias show that the language of the agent evolved into more
compositional language. The agent acquired a more expressive, and a more
similar language to the parent's language than with the Random strategy
agent. However, application of perfect matching symmetry bias showed
that the language of the agent did not evolve. The agent acquired a less
expressive and a more different language to the parent's language than
with Random strategy agent. Our experimentally obtained results
demonstrate that the effect of imperfect matching symmetry bias
accelerates linguistic evolution into compositional language, whereas
perfect matching symmetry bias disturbs linguistic evolution.
Tags
Acquisition
Shape