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Volumn 1, Issue 2, 1993, Pages 85-97

Neural Networks That Learn from Fuzzy If-Then Rules

Author keywords

[No Author keywords available]

Indexed keywords

ALGORITHMS; FUZZY SETS; KNOWLEDGE BASED SYSTEMS;

EID: 0027595614     PISSN: 10636706     EISSN: 19410034     Source Type: Journal    
DOI: 10.1109/91.227388     Document Type: Article
Times cited : (204)

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