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Integration of behaviors and languages with a hierarchal structure self-organized in a neuro-dynamical model

机译:在神经动态模型中自组织的分层结构集成行为和语言

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This paper proposes an approach for robots to ac-quire language grounding in their robot's sensory-motor flow using neuro-dynamical models. We trained our neuro-dynamical model over a set of sentences represented as sequences of characters. For the integrated recognition, we introduced a cognitive hypothesis for integrated recognition where a human's brain separately processed the “structure” and “contents” of a sentence. Our model was trained with the spelling of words and their semantic role emerged in the first model. As a result of binding the model with sensory-motion patterns, we confirmed that it could associate proper word spellings with a sensory-motor flows and a semantic roles, even if an observed flow had not been learned.
机译:本文提出了一种使用神经动力学模型在其机器人的感官电动机流动中接地的机器人的方法。 我们培训了我们的神经动力学模型,这些模型在一组表示为字符序列的句子上。 为了综合认可,我们向综合识别引入了认知假设,其中人类的大脑分别处理了“结构” 和“目录” 一个句子。 我们的模型培训了单词的拼写及其在第一款模型中出现的语义作用。 由于具有感觉运动模式的模型将模型绑定,我们确认它可以将适当的单词拼写与感官电机流程和语义角色相关联,即使没有学习观察到的流量。

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