The quality index model in slashing process is difficult to build by reason of the outliers and noise data from original data. To the above problem, a fuzzy neural network based on non-Euclidean distance clustering is proposed in which the input space is partitioned into many local regions by the fuzzy clustering based on non-Euclidean distance so that the computation complexity is decreased, and fuzzy rule number is determined by validity function based on both the separation and the compactness among clusterings. Then, the premise parameters and consequent parameters are trained by hybrid learning algorithm. The parameters identification is realized; meanwhile the convergence condition of consequent parameters is obtained by Lyapunov func...
In order to effectively improve the classification performance of neural network, first architecture...
In this paper, we first define eight pseudo-metrics and eight pseudo-similarities based on these pse...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
The Fuzzy Hyperline Segment Neural Network (FHLSNN) pattern classifier utilizes fuzzy set as pattern...
AbstractThis paper takes advantage of the integration of subtraction clustering and fuzzy c-means cl...
Ching-chang Wong et. al(1999) proposed a novel cluster method to make training sample data stepwise ...
In this paper, fuzzy c-means algorithm uses neural network algorithm is presented. In pattern recogn...
Abstract:- A new on-line clustering fuzzy neural network is proposed. In the algorithm, structure an...
In this paper, an improved self-organizing fuzzy neural network (SOFNN-CA) based on a clustering alg...
AbstractThe description of the attributes or characteristics of the individual parts in a feature-ba...
K-Nearest neighbor (K-NN) algorithm is a classification algorithm widely used in machine learning, s...
We introduce a new category of fuzzy neural networks with multiple-output based on fuzzy clustering ...
We first propose a Parallel Space Search Algorithm (PSSA) and then introduce a design of Polynomial ...
In GK-algorithm, modified Mahalanobis distance with preserved volume was used. However, the added fu...
In this paper, we develop a fuzzy neural network (FNN) with a new BP learning algorithm using some s...
In order to effectively improve the classification performance of neural network, first architecture...
In this paper, we first define eight pseudo-metrics and eight pseudo-similarities based on these pse...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...
The Fuzzy Hyperline Segment Neural Network (FHLSNN) pattern classifier utilizes fuzzy set as pattern...
AbstractThis paper takes advantage of the integration of subtraction clustering and fuzzy c-means cl...
Ching-chang Wong et. al(1999) proposed a novel cluster method to make training sample data stepwise ...
In this paper, fuzzy c-means algorithm uses neural network algorithm is presented. In pattern recogn...
Abstract:- A new on-line clustering fuzzy neural network is proposed. In the algorithm, structure an...
In this paper, an improved self-organizing fuzzy neural network (SOFNN-CA) based on a clustering alg...
AbstractThe description of the attributes or characteristics of the individual parts in a feature-ba...
K-Nearest neighbor (K-NN) algorithm is a classification algorithm widely used in machine learning, s...
We introduce a new category of fuzzy neural networks with multiple-output based on fuzzy clustering ...
We first propose a Parallel Space Search Algorithm (PSSA) and then introduce a design of Polynomial ...
In GK-algorithm, modified Mahalanobis distance with preserved volume was used. However, the added fu...
In this paper, we develop a fuzzy neural network (FNN) with a new BP learning algorithm using some s...
In order to effectively improve the classification performance of neural network, first architecture...
In this paper, we first define eight pseudo-metrics and eight pseudo-similarities based on these pse...
Clustering algorithms are an integral part of both computational intelligence and pattern recognitio...