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REFERENCES
Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
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INDEX TERMS
Primary Classification:
I.
Computing Methodologies
I.2
ARTIFICIAL INTELLIGENCE
I.2.3
Deduction and Theorem Proving
Subjects:
Uncertainty, "fuzzy," and probabilistic reasoning
Additional Classification:
G.
Mathematics of Computing
G.1
NUMERICAL ANALYSIS
G.1.2
Approximation
Subjects:
Minimax approximation and algorithms
G.2
DISCRETE MATHEMATICS
I.
Computing Methodologies
I.2
ARTIFICIAL INTELLIGENCE
I.2.6
Learning
Subjects:
Connectionism and neural nets
I.6
SIMULATION AND MODELING
General Terms:
Algorithms,
Design,
Measurement,
Performance,
Reliability,
Theory
Keywords:
error signal,
fast MIN-MAX learning algorithm,
fuzzy-neuro system,
possibility measure
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