A Hierarchical Model for Perception Memory Based on Connected Graph and Dynamic Process
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    Abstract:

    One of the interferences between inheritance and concurrency is inheritance anomaly. From the view of cognitive computational neuroscience, a direct information representation method is presented based on neural system dynamics and graphic theory. A group of neurons and their connections representing perceptual information directly and the dynamical behaviors of neurons are defined firstly, and then a two-layer neural network is designed to record characteristics of stimulus and connect a specialized neural circuit that responding to the perception of that stimulus respectively. This could be achieved by the structure learning algorithm. The circuit constituted by neurons in two layers is also served as an associative memory of stimulus whose credibility is decided by the degree of connection of the circuit. The direct representation method is of very significance to the research of semantic representation and inference driven by semantics in artificial intelligence.

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危辉,栾尚敏.基于连通结构与动力学过程的知觉记忆层次模型.软件学报,2004,15(11):1616-1628

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  • Received:May 12,2003
  • Revised:May 08,2004
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