Generic modes of consensus formation in stochastic language dynamics
R. A. Blythe

TL;DR
This paper introduces a unified stochastic framework for language variant dynamics, revealing three generic consensus formation modes and providing analytical tools to predict convergence times in large communities.
Contribution
It unifies existing language dynamics models into a single framework and characterizes the three fundamental consensus formation regimes.
Findings
Consensus forms via elimination, accentuation, or neutral sampling.
The simplified model accurately predicts consensus times in simulations.
Empirical data suggests biases from neutral sampling are minimal.
Abstract
We introduce a class of stochastic models for the dynamics of two linguistic variants that are competing to become the single, shared convention within an unstructured community of speakers. Different instances of the model are distinguished by the way agents handle variability in the language (i.e., multiple forms for the same meaning). The class of models includes as special cases two previously-studied models of language dynamics, the Naming Game, in which agents tend to standardise on variants they have encountered most frequently, and the Utterance Selection Model, in which agents tend to preserve variability by uniform sampling of a pool of utterances. We reduce the full complexities of the dynamics to a single-coordinate stochastic model which allows the probability and time taken for speakers to reach consensus on a single variant to be calculated for large communities. This…
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