Defuzzification methods | Lambda Cut Method for Fuzzy Sets and Fuzzy Relations.

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#softcomputing #datamining #neuralnetwork #machinelearning #fuzzy

Defuzzification Methods || Lambda Cut Method for Fuzzy Sets and Fuzzy Relations.

Introduction:1.1 Biological neurons, McCulloch and Pitts models of neuron, Types
of activation function, Network architectures, Knowledge representation, Hebb net
1.2 Learning processes: Supervised learning, Unsupervised learning and
Reinforcement learning
1.3 Learning Rules : Hebbian Learning Rule, Perceptron Learning Rule, Delta
Learning Rule, Widrow-Hoff Learning Rule, Correlation Learning Rule, WinnerTake-All Learning Rule
1.4 Applications and scope of Neural Networks
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Supervised Learning Networks :
2.1 Perception Networks – continuous & discrete, Perceptron convergence theorem,
Adaline, Madaline, Method of steepest descent, – least mean square algorithm,
Linear & non-linear separable classes & Pattern classes,
2.2 Back Propagation Network,
2.3 Radial Basis Function Network.
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Unsupervised learning network:
3.1 Fixed weights competitive nets,
3.2 Kohonen Self-organizing Feature Maps, Learning Vector Quantization,
3.3 Adaptive Resonance Theory – 1
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Associative memory networks:
4.1 Introduction, Training algorithms for Pattern Association,
4.2 Auto-associative Memory Network, Hetero-associative Memory Network,
Bidirectional Associative Memory,
4.3 Discrete Hopfield Networks.
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Fuzzy Logic:
5.1 Fuzzy Sets, Fuzzy Relations and Tolerance and Equivalence
5.2 Fuzzification and Defuzzification
5.3 Fuzzy Controllers
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Plz make video for rest of methods ASAP

trickletickle
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Thks for very good explanation,
but can we prove the same with defuzzy properties

BharathMEA
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Nice explanation, please make videos for other methods

vasanthreddy
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sir i cant find videos related to rest three methods

shivammodi
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Your way of explaining is very fast just you need to get some slow down

anytimeanywhere