基于涌现语言的语义行为分析

A. Santamaría-Pang, James R. Kubricht, Chinmaya Devaraj, Aritra Chowdhury, P. Tu
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引用次数: 4

摘要

最近关于无监督学习的研究已经探索了通过涌现语言模型进行语义分析和解释的可行性。由于EL需要某种形式的数值嵌入,因此尚不清楚需要哪种类型才能使EL正确捕获与给定任务相关的某些语义概念。在本文中,我们比较了可用于生成此类嵌入的不同方法:无监督和有监督。我们首先使用单代理模拟环境生成一个大型数据集。在这些实验中,目的驱动的智能体试图完成许多任务。这些任务是在一个合成的城市景观环境中完成的,其中包括房屋、银行、剧院和餐馆。有了这些经验,相关目标结构的说明就构成了叙述。我们研究了从原始像素数据生成EL的可行性,希望由此产生的描述可以用来推断潜在的叙事结构。我们最初的实验表明,监督学习方法产生了捕获叙事结构的嵌入和EL描述。另一种情况是,无监督的学习方法会导致更大的模糊性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Semantic Action Analysis via Emergent Language
Recent work on unsupervised learning has explored the feasibility of semantic analysis and interpretation via Emergent Language (EL) models. As EL requires some form of numerical embedding, it remains unclear which type is required in order for the EL to properly capture certain semantic concepts associated with a given task. In this paper, we compare different approaches that can be used to generate such embeddings: unsupervised and supervised. We start by producing a large dataset using a single-agent simulation environment. In these experiments, a purpose-driven agent attempts to accomplish a number of tasks. These tasks are performed in a synthetic cityscape environment, which includes houses, banks, theaters, and restaurants. Given such experiences, specification of the associated goal structure constitutes a narrative. We investigate the feasibility of producing an EL from raw pixel data with the hope that resulting descriptions can be used to infer the underlying narrative structure. Our initial experiments show that a supervised learning approach yields embeddings and EL descriptions that capture narrative structure. Alternatively, an unsupervised learning approach results in greater ambiguity with respect to the narrative.
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