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A self-learning sensorimotor model based on operant conditioning theory

机译:基于操作条件理论的自学习感觉运动模型

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This paper presents a self-learning model to help agents learn the sensorimotor skills. The model includes the sensory part, the motorial part, the sensorimotor map and the learning mechanism. At every learning step, the agent senses its states in its internal environment, executes motions based on the sensorimotor map, and at the same time gets a reward from the external environment as the result of its behavior. Then the sensorimotor map is tuned according to the learning mechanism which is designed based on the theory of Skinner operant conditioning. The convergence of learning mechanism is proved. To show the model's ability of self-learning, the paper first simulated the famous Skinner pigeon experiment, and then used the model to a robot with the task of right handshake. Both of the results show that the model designed is intelligent and can help agents learn the sensorimotor skills.
机译:本文提出了一种自我学习模型,以帮助代理商学习感觉运动技能。该模型包括感觉部分,运动部分,感觉运动图和学习机制。在每个学习步骤中,主体都将感知其内部环境中的状态,并根据感觉运动图执行运动,同时由于其行为而从外部环境中获得回报。然后根据基于Skinner操作条件的理论设计的学习机制来调整感觉运动图。证明了学习机制的收敛性。为了展示该模型的自学习能力,本文首先对著名的Skinner鸽子实验进行了仿真,然后将该模型用于具有正确握手任务的机器人。两项结果均表明所设计的模型是智能的,可以帮助代理商学习感觉运动技能。

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