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引用次数: 9

摘要

SAM架构是一种基于大脑新皮层的新型神经网络架构,用于组合无监督学习模块。当作为智能体控制系统的一部分使用时,该架构使智能体能够学习其运动输出和感官输入的功能语义,并通过模仿其他智能体(通过“观察”学习)来获取行为序列。这包括尝试重新创造agent所接触到的感觉序列。这种结构可以很好地扩展到多种运动和感觉模式,以及更复杂的行为要求。SAM结构也可能暗示对大脑新皮层运作的几个特征的解释。
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An architecture for learning to behave
The SAM architecture is a novel neural network architecture, based on the cerebral neocortex, for combining unsupervised learning modules. When used as part of the control system for an agent, the architecture enables the agent to learn the functional semantics of its motor outputs and sensory inputs, and to acquire behavioral sequences by imitating other agents (learning by 'watching'). This involves attempting to recreate the sensory sequences the agent has been exposed to. The architecture scales well to multiple motor and sensory modalities, and to more complex behavioral requirements. The SAM architecture may also hint at an explanation of several features of the operation of the cerebral neocortex.<>
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