语言认知主体行为库的扩展研究

V. Tikhanoff, A. Cangelosi, J. Fontanari, L. Perlovsky
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引用次数: 5

摘要

我们建议利用建模场理论(MFT)来处理认知机器人中语言建模的组合复杂性问题。在新的模拟中,我们扩展了之前的MFT语言模型来处理机器人代理的动作库的缩放。仿真分为两个阶段。首先,智能体在字母表系统(信号标志信号系统)的启发下,学会对112种不同的行为进行分类。在第二阶段,代理还学习一个词汇项来命名每个动作。在这个阶段,智能体将开始把动作描述成一个由三个字母组成的“单词”(辅音-元音-辅音)。仿真结果表明:(1)智能体能够通过建立感觉运动概念模型获得一组复杂的动作;(ii)智能体能够通过文化学习过程学习词汇来描述这些对象/行为;(iii)智能体将动作作为基本手势来学习,以生成复合动作
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scaling Up of Action Repertoire in Linguistic Cognitive Agents
We suggest the utilization of the modeling field theory (MFT) to deal with the combinatorial complexity problem of language modeling in cognitive robotics. In new simulations we extend our previous MFT model of language to deal with the scaling up of the robotic agent's action repertoire. Simulations are divided into two stages. First agents learn to classify 112 different actions inspired by an alphabet system (the semaphore flag signaling system). In the second stage, agents also learn a lexical item to name each action. At this stage the agents will start to describe the action as a "word" comprised of three letters (consonant - vowel - consonant). The results of the simulations demonstrate that: (i) agents are able to acquire a complex set of actions by building sensorimotor concept-models; (ii) agents are able to learn a lexicon to describe these objects/actions through a process of cultural learning; and (iii) agents learn actions as basic gestures in order to generate composite actions
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