Probabilistic Neural Logic Network Learning: Taking Cues from Neuro-Cognitive Processes

Newark, NJ(2009)

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摘要
This paper describes an attempt to devise a knowledge discovery model that is inspired from the two theoretical frameworks of selectionism and constructivism in human cognitive learning. The "selectionist" nature of human decision making indicates the use of an evolutionary paradigm for composing rudimentary neural network units, while the "constructivist" component takes the form of neural weight training during the learning process. We explore the possibility of amalgamating these two ideas into a neural learning system for the discovery of meaningful rules in the context of pattern discovery in data.
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关键词
cognitive systems,data mining,decision making,learning (artificial intelligence),neural nets,constructivism,data pattern discovery,human cognitive learning,human decision making,knowledge discovery model,neural learning system,neural weight training,neurocognitive processes,probabilistic neural logic network learning,rudimentary neural network units,selectionism
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