There has been intensive research in neural network applications to pattern recognition problems. Particularly, the back-propagation network has attracted many researchers because of its outstanding performance in pattern recognition applications. In this section, we describe a new method to generate membership functions from training data using a multilayer neural network. The basic idea behind the approach is as follows. The output values of a sigmoid activation function of a neuron bear remarkable resemblance to membership values. Therefore, we can regard the sigmoid activation values as the membership values in fuzzy set theory. Thus, in order to generate class membership values, we first train a suitable multilayer network using a trai...
[[abstract]]A unified form of fuzzy membership functions, called as B-spline membership functions (B...
This thesis presents the use of a new sigmoid activation function in backpropagation artificial neur...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
AbstractThe estimation of membership functions from data is an important step in many applications o...
Fuzzy neural networks provide for the extraction of fuzzy rules from artificial neural network archi...
We propose an algorithm improvement for classifying machine learning algorithms with the fuzzificati...
Several type-1 fuzzy membership function (T1 FMF) generation methods have been proposed to model the...
[[abstract]]The authors propose a general fuzzy classification scheme with learning ability using an...
Multi-Valued Neuron (MVN) was proposed for pattern classification. It operates with complex-va-lued ...
This report introduces a novel algorithm to learn the width of non-linear activation functions (of a...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
We present a global algorithm for training multilayer neural networks in this Letter. The algorithm ...
Network training algorithms have heavily concentrated on the learning of connection weights. Little ...
It is widely recognised that learning systems have to go deeper to exchange for more powerful repres...
Understanding the inner behaviour of multilayer perceptrons during and after training is a goal of p...
[[abstract]]A unified form of fuzzy membership functions, called as B-spline membership functions (B...
This thesis presents the use of a new sigmoid activation function in backpropagation artificial neur...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
AbstractThe estimation of membership functions from data is an important step in many applications o...
Fuzzy neural networks provide for the extraction of fuzzy rules from artificial neural network archi...
We propose an algorithm improvement for classifying machine learning algorithms with the fuzzificati...
Several type-1 fuzzy membership function (T1 FMF) generation methods have been proposed to model the...
[[abstract]]The authors propose a general fuzzy classification scheme with learning ability using an...
Multi-Valued Neuron (MVN) was proposed for pattern classification. It operates with complex-va-lued ...
This report introduces a novel algorithm to learn the width of non-linear activation functions (of a...
In this dissertation, we have investigated the representational power of multilayer feedforward neur...
We present a global algorithm for training multilayer neural networks in this Letter. The algorithm ...
Network training algorithms have heavily concentrated on the learning of connection weights. Little ...
It is widely recognised that learning systems have to go deeper to exchange for more powerful repres...
Understanding the inner behaviour of multilayer perceptrons during and after training is a goal of p...
[[abstract]]A unified form of fuzzy membership functions, called as B-spline membership functions (B...
This thesis presents the use of a new sigmoid activation function in backpropagation artificial neur...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...