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.
翻译:语言是协调问题的有力解决办法:语言提供了稳定、共同的期望,我们所说的词语如何与我们头上的信念和意图相符。但是,语言在变化和非静止的社会环境中的使用要求语言代表的灵活性:旧词在飞天上获得新的特设或特定伙伴的含义。在本文中,我们引入了CHAI(通过推理不断的分级调整),一个等级分级的巴伊西亚协调理论和公约形成理论,目的是调和这两种基本观察之间的长期紧张关系。我们争辩说,通信的中心计算问题不仅仅是传播,如古典的表述,而是在多个时标上不断学习和适应。具体伙伴的共同立场很快从dyadic互动中的社会推论中产生,而全社区的社会公约则是从与多个伙伴的互动中抽象出来的稳定的前身。我们提供了新的经验数据,并用模拟来表明我们的模型如何为对前两个基本观察构成挑战的若干现象提供了计算基础。我们争论:(1) 合并为更高效地提及与同一伙伴反复互动的表达方式,正如古典的表述,而是在多个时标尺上不断学习和适应。(2) 伙伴共同公约最终向陌生人转移。(3) 影响。