Symbol Emergence as Inter-personal Categorization with Head-to-head Latent Word

Kazuma Furukawa, Akira Taniguchi, Y. Hagiwara, T. Taniguchi
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引用次数: 1

Abstract

In this study, we propose a head-to-head type (H2H-type) inter-personal multimodal Dirichlet mixture (Inter-MDM) by modifying the original Inter-MDM, which is a probabilistic generative model that represents the symbol emergence between two agents as multiagent multimodal categorization. A Metropolis-Hastings method-based naming game based on the Inter-MDM enables two agents to collaboratively perform multimodal categorization and share signs with a solid mathematical foundation of convergence. However, the conventional Inter-MDM presumes a tail-to-tail connection across a latent word variable, causing inflexibility of the further extension of Inter-MDM for modeling a more complex symbol emergence. Therefore, we propose herein a head-to-head type (H2H-type) Inter-MDM that treats a latent word variable as a child node of an internal variable of each agent in the same way as many prior studies of multimodal categorization. On the basis of the H2H-type Inter-MDM, we propose a naming game in the same way as the conventional Inter-MDM. The experimental results show that the H2H-type Inter-MDM yields almost the same performance as the conventional Inter-MDM from the viewpoint of multimodal categorization and sign sharing.
符号涌现作为具有头对头潜词的人际分类
在本研究中,我们通过修改原有的Inter-MDM,提出了一个人头型(H2H-type)人际多模态Dirichlet混合物(Inter-MDM),这是一个概率生成模型,将两个agent之间的符号出现表示为多agent多模态分类。基于Inter-MDM的基于Metropolis-Hastings方法的命名游戏使两个代理能够协作执行多模态分类,并在收敛的坚实数学基础上共享符号。但是,传统的Inter-MDM假定在潜在的单词变量之间存在尾对尾连接,这导致进一步扩展Inter-MDM无法灵活地建模更复杂的符号出现。因此,我们在此提出一种头对头类型(H2H-type)的Inter-MDM,它将潜在词变量视为每个代理内部变量的子节点,其方式与许多先前的多模态分类研究相同。在h2h型Inter-MDM的基础上,我们提出了一种与传统Inter-MDM相同的命名游戏。实验结果表明,从多模态分类和符号共享的角度来看,h2h型Inter-MDM与传统的Inter-MDM的性能几乎相同。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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