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Stochastic learning algorithm for generalization problems
C. V. Ramamoorthy
,
Shashi Shekhar
Computer Science and Engineering
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Keyphrases
Convergence Property
50%
Generalization Problem
100%
Gradient Descent
50%
Learning Algorithm
50%
Neural Network
50%
NP-complete
50%
Problem Recognition
50%
Simulated Annealing
50%
Stochastic Learning Algorithm
100%
Weighted Spaces
50%
Computer Science
Convergence Property
33%
Gradient Descent
33%
Learning Algorithm
100%
Neural Network
33%
Recognition Problem
33%
Simulated Annealing
33%
Traditional Method
33%
Mathematics
Convergence Property
50%
Neural Network
50%
Stochastics
100%
Weight Space
50%
Engineering
Convergence Property
33%
Gradient Descent
33%
Learning Algorithm
100%
Recognition Problem
33%
Chemical Engineering
Neural Network
100%