Speakers' referential expressions often depart from communicative ideals in ways that help illuminate the nature of pragmatic language use. Patterns of overmodification, in which a speaker uses a modifier that is redundant given their communicative goal, have proven especially informative in this regard. It seems likely that these patterns are shaped by the environment a speaker is exposed to in complex ways. Unfortunately, systematically manipulating these factors during human language acquisition is impossible. In this paper, we propose to address this limitation by adopting neural networks (NN) as learning agents. By systematically varying the environments in which these agents are trained, while keeping the NN architecture constant, we show that overmodification is more likely with environmental features that are infrequent or salient. We show that these findings emerge naturally in the context of a probabilistic model of pragmatic communication.
翻译:发言者的优先表达方式往往偏离交流理想,其方式有助于说明实用语言使用的性质。过度篡改模式,即发言者使用因其交流目的而多余的修饰剂,这已证明在这方面尤其具有信息性。这些模式似乎可能由发言者所接触的环境以复杂的方式形成。不幸的是,在获取人文语言的过程中,不可能系统地操纵这些因素。在本文件中,我们提议通过采用神经网络作为学习媒介来解决这一局限性。通过系统地改变这些代理人接受培训的环境,同时保持NNN结构不变,我们表明,由于环境特征不常见或突出,过度篡改的可能性更大。我们表明,这些发现是在务实交流的概率模式下自然产生的。