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Self-Organization of Symbolic Processes through Interaction with the Physical World

机译:通过与物理世界的互动来实现符号过程的自组织

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We study how an autonomous robot can attain a cognitive process that accounts for its symbolic manipulation of acquired knowledge without generating fatal gaps from the reality. The paper focuses on two essential problems; one is the symbol grounding problem and the other is how the internal symbolic processes can be situated with respect to the behavioral contexts. We investigate these problems by applying a dynamical system's approach to the robot navigation problem. Our formulation, based on a forward modeling scheme using recurrent neural learning, shows that the robot is capable of learning grammatical structure hidden in the geometry of the workspace from the local sensory inputs through its navigational experiences. Furthermore, the robot is capable of mentally simulating its own action plans using the acquired forward model. Our assertion is that the internal representation obtained is grounded, since it is self-organized solely through interaction with the physical world. We also show that structural stability arises in the interaction between the neural dynamics and the environmental dynamics, which accounts for the situatedness of the internal symbolic process.
机译:我们研究了自动机器人如何在不产生现实鸿沟的情况下实现认知过程,该过程说明了其对获取的知识的象征性操纵。本文着重于两个基本问题;一个是符号基础问题,另一个是如何根据行为上下文确定内部符号过程的位置。我们通过将动力学系统的方法应用于机器人导航问题来研究这些问题。我们的公式基于使用递归神经学习的正向建模方案,表明该机器人能够通过其导航体验从本地感官输入中学习隐藏在工作空间几何中的语法结构。此外,机器人能够使用获取的前向模型在精神上模拟其自己的行动计划。我们的断言是,所获得的内部表示形式是有基础的,因为它是仅通过与物理世界交互作用而自我组织的。我们还表明,在神经动力学和环境动力学之间的相互作用中产生了结构稳定性,这说明了内部符号过程的位置。

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