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Codevelopmental Learning Between Human and Humanoid Robot Using a Dynamic Neural-Network Model

Jun Tani, Ryu Nishimoto, Jun Namikawa, Masato Ito

发表年份
2008
引用次数
50

摘要

This paper examines characteristics of interactive learning between human tutors and a robot having a dynamic neural-network model, which is inspired by human parietal cortex functions. A humanoid robot, with a recurrent neural network that has a hierarchical structure, learns to manipulate objects. Robots learn tasks in repeated self-trials with the assistance of human interaction, which provides physical guidance until the tasks are mastered and learning is consolidated within the neural networks. Experimental results and the analyses showed the following: 1) codevelopmental shaping of task behaviors stems from interactions between the robot and a tutor; 2) dynamic structures for articulating and sequencing of behavior primitives are self-organized in the hierarchically organized network; and 3) such structures can afford both generalization and context dependency in generating skilled behaviors.

关键词

Humanoid robotComputer scienceArtificial neural networkRobotGeneralizationArtificial intelligenceContext (archaeology)Recurrent neural networkDependency (UML)Task (project management)

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