A Neural Network Model For A Hierarchical Spatio-Temporal Memory

ICONIP'08 Proceedings of the 15th international conference on Advances in neuro-information processing - Volume Part I(2009)

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摘要
The architecture of the human cortex is uniform and hierarchical in nature. In this paper, we build upon works on hierarchical classification systems that model the cortex to develop a neural network representation for a hierarchical spatio-temporal memory (HST-M) system. The system implements spatial and temporal processing using neural network architectures. We have tested the algorithms developed against both the MLP and the Hierarchical Temporal Memory algorithms. Our results show definite improvement over MLP and are comparable to the performance of HTM.
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关键词
hierarchical classification system,hierarchical spatio-temporal memory,human cortex,neural network architecture,neural network representation,Hierarchical Temporal Memory algorithm,definite improvement,temporal processing,neural network model
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