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From partners to populations: A hierarchical Bayesian account of coordination and convention

Authors :
Robert D. Hawkins
Michael Franke
Michael C. Frank
Adele E. Goldberg
Kenny Smith
Thomas L. Griffiths
Noah D. Goodman
Source :
Hawkins, R D, Franke, M, Frank, M C, Goldberg, A E, Smith, K, Griffiths, T L & Goodman, N D 2022, ' From partners to populations : A hierarchical Bayesian account of coordination and convention ', Psychological Review . https://doi.org/10.1037/rev0000348
Publication Year :
2022
Publisher :
American Psychological Association (APA), 2022.

Abstract

Languages are powerful solutions to coordination problems: they provide stable, shared expectations about how the words we say correspond to the beliefs and intentions in our heads. Yet language use in a variable and non-stationary social environment requires linguistic representations to be flexible: old words acquire new ad hoc or partner-specific meanings on the fly. In this paper, we introduce CHAI (Continual Hierarchical Adaptation through Inference), a hierarchical Bayesian theory of coordination and convention formation that aims to reconcile the long-standing tension between these two basic observations. We argue that the central computational problem of communication is not simply transmission, as in classical formulations, but continual learning and adaptation over multiple timescales. Partner-specific common ground quickly emerges from social inferences within dyadic interactions, while community-wide social conventions are stable priors that have been abstracted away from interactions with multiple partners. We present new empirical data alongside simulations showing how our model provides a computational foundation for several phenomena that have posed a challenge for previous accounts: (1) the convergence to more efficient referring expressions across repeated interaction with the same partner, (2) the gradual transfer of partner-specific common ground to strangers, and (3) the influence of communicative context on which conventions eventually form.<br />Comment: In press at Psychological Review

Details

ISSN :
19391471 and 0033295X
Database :
OpenAIRE
Journal :
Psychological Review
Accession number :
edsair.doi.dedup.....04f404fa1ebf1c39800490711581aa11