发明名称 Self-adjusting multi-layer neural network architectures and methods therefor
摘要 A method and apparatus for using a neural network to process information includes multiple nodes arrayed in multiple layers for transforming input arrays from prior layers or the environment into output arrays for subsequent layers or output devices. Learning rules based on reinforcement are applied. Interconnections between nodes are provided in a manner whereby the number and structure of the interconnections are self-adjusted by the learning rules during learning. At least one of the layers is used as a processing layer, and multiple lateral inputs to each node of each processing layer are used to retrieve information. The invention provides rapid, unsupervised processing of complex data sets, such as imagery or continuous human speech, and captures successful processing or pattern classification constellations for implementation in other networks. The invention includes application-specific self-adjusting multi-layer architectures that employ reinforcement learning rules to create updated data arrays for computation.
申请公布号 US6601049(B1) 申请公布日期 2003.07.29
申请号 US20000578701 申请日期 2000.05.26
申请人 COOPER DAVID L. 发明人 COOPER DAVID L.
分类号 G06N3/04;(IPC1-7):G06N3/02 主分类号 G06N3/04
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