Abstract

This study focuses on category formation for individual agents and the dynamics of symbol emergence in a multi-agent system through semiotic communication. In this study, the semiotic communication refers to exchanging signs composed of the signifier (i.e., words) and the signified (i.e., categories). We define the generation and interpretation of signs associated with the categories formed through the agent's own sensory experience or by exchanging signs with other agents as basic functions of the semiotic communication. From the viewpoint of language evolution and symbol emergence, organization of a symbol system in a multi-agent system (i.e., agent society) is considered as a bottom-up and dynamic process, where individual agents share the meaning of signs and categorize sensory experience. A constructive computational model can explain the mutual dependency of the two processes and has mathematical support that guarantees a symbol system's emergence and sharing within the multi-agent system. In this paper, we describe a new computational model that represents symbol emergence in a two-agent system based on a probabilistic generative model for multimodal categorization. It models semiotic communication via a probabilistic rejection based on the receiver's own belief. We have found that the dynamics by which cognitively independent agents create a symbol system through their semiotic communication can be regarded as the inference process of a hidden variable in an interpersonal multimodal categorizer, i.e., the complete system can be regarded as a single agent performing multimodal categorization using the sensors of all agents, if we define the rejection probability based on the Metropolis-Hastings algorithm. The validity of the proposed model and algorithm for symbol emergence, i.e., forming and sharing signs and categories, is also verified in an experiment with two agents observing daily objects in the real-world environment. In the experiment, we compared three communication algorithms: no communication, no rejection, and the proposed algorithm. The experimental results demonstrate that our model reproduces the phenomena of symbol emergence, which does not require a teacher who would know a pre-existing symbol system. Instead, the multi-agent system can form and use a symbol system without having pre-existing categories.

Highlights

  • Obtaining a computational explanation of a symbol system emerging in the real-world environment is important and it is challenging to understand the mechanism of sharing and forming the symbols that represent the sensory experience as a part of the function of language

  • This study focused on the symbol emergence in a multiagent system and the category formation in individual agents through semiotic communication that is the generation and interpretation of symbols associated with categories formed from the agent’s perception

  • We proposed a model and an inference algorithm representing the dynamics of symbol emergence and category formation through semiotic communication between the agents as an interpersonal multimodal categorizer

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Summary

Introduction

Obtaining a computational explanation of a symbol system emerging in the real-world environment is important and it is challenging to understand the mechanism of sharing and forming the symbols that represent the sensory experience as a part of the function of language. How the symbol system of the language has emerged through semiotic communication is still unanswered. We define the generation and interpretation of signs associated with the categories formed through the agent’s own sensory experience or by exchanging signs with other agents as basic functions of the semiotic communication. In order to obtain the computational explanation of a symbol system emerging in the real-world environment, we aim to construct a computational model that comprehensively describes the generation and interpretation of words associated with the categories formed through the agent’s own sensory experience or by exchanging words with other agents

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