Unlike current state-of-the-art language models, young children actively acquire language through interactions with their surrounding environment and caretakers. One mechanism that has been argued to be critical to language learning is the ability to infer the mental states of other agents in social environments, coined Theory of Mind (ToM) by Premack & Woodruff (1978). Drawing inspiration from the modern operationalized versions of ToM implemented in Rabinowitz et al. (2018) and Zhu et al. (2021), we build language-learning agents equipped with ToM, and measure its effects on the learning process. We model ToM by giving the speaker agent an internal listener model that is trained alongside the speaker and used to rerank potential utterances. We experiment with varying task difficulty, hypothesizing that models will acquire more complex language to adapt to stronger environmental pressures. We find that training speakers with a highly weighted ToM listener component leads to performance gains in our image referential game setting. We also find some evidence that increasing task difficulty in the training process results in more fluent and precise utterances in evaluation. This suggests the potential utility of further incorporating ToM, as well as other insights from child language acquisition, into computational models of language acquisition.
翻译:与目前最先进的语言模式不同,幼儿通过与周围环境和照料者的互动积极获得语言,与目前不同的语言模式不同,幼儿通过与周围环境和照料者互动积极获得语言。人们认为,语言学习的关键之一是能够推断社会环境中其他行为者的精神状态。一种机制是,能够预测社会环境中其他行为者的心理状态,Premack & Woodruff(1978年)发明了《心理理论》。从Rabinowitz等人(2018年)和Zhu等人(2021年)实施的现代实用版本《心理理论》(TOM)的灵感,我们从中发现,在Rabinowitz等人(2018年)和Zhu等人(2021年)实施的现代实用版本中,我们建造了配有ToM的语文学习代理,并测量其对学习过程的影响。我们通过给演讲代理提供与演讲者一起培训并用来重新排列潜在语言的语境。我们尝试了各种不同的任务困难,假设这种模式将获得更复杂的语言以适应更强大的环境压力。我们发现,具有高度的TOM听众组成部分的培训演讲者能够提高我们形象的游戏环境优雅环境环境。我们还发现一些证据,在培训过程中增加了任务难度,在评估中造成更加流利和精确的任务难度。这表明进一步将获得TOM作为儿童语言的变异的模型的潜在价值。</s>