This paper presents a robust, dynamic, and unsupervised fuzzy learning algorithm (RDUFL) that aims to cluster a set of data samples with the ability to detect outliers and assign the numbers of clusters automatically. It consists of three main stages. The first (1) stage is a pre-processing method in which possible outliers are determined and quarantined using a concept of proximity degree. The second (2) stage is a learning method, which consists in auto-detecting the number of classes with their prototypes for a dynamic threshold. This threshold is automatically determined based on the similarity among the detected prototypes that are updated at the exploration of a new data. The last (3) stage treats quarantined samples detected from the...
Owing to the generation of vast amount of unlabelled dynamic data and the need to analyze them, deep...
A hybrid unsupervised learning algorithm, termed as rough-fuzzy c-means, is proposed in this paper. ...
AbstractIn this paper we propose a robust clustering method for handling LR-type fuzzy numbers. The ...
Classification methods can be divided into supervised and unsupervised methods. The supervised class...
A fuzzy model based on an enhanced supervised fuzzy clustering algorithm is presented in this paper....
In the present research a novel spatially weighted Fuzzy C-Means (FCM) clustering algorithm for imag...
Abstract: Cluster analysis is used for clustering a data set into groups of similar individuals. It ...
Fuzzy systems which are an artificial intelligent technique are applicable for controlling and decis...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Abstract(#br)The fuzzy c -means (FCM) clustering algorithm is an unsupervised learning method that h...
Fuzzy clustering can be helpful in finding natural vague boundaries in data. The fuzzy c-means metho...
Abstract: A three-stage dynamic fuzzy clustering algorithm consisting of initial partitioning, a seq...
ii Unsupervised learning, mostly represented by data clustering methods, is an important machine lea...
Classification plays an important role in many fields of life, including medical diagnosis support. ...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
Owing to the generation of vast amount of unlabelled dynamic data and the need to analyze them, deep...
A hybrid unsupervised learning algorithm, termed as rough-fuzzy c-means, is proposed in this paper. ...
AbstractIn this paper we propose a robust clustering method for handling LR-type fuzzy numbers. The ...
Classification methods can be divided into supervised and unsupervised methods. The supervised class...
A fuzzy model based on an enhanced supervised fuzzy clustering algorithm is presented in this paper....
In the present research a novel spatially weighted Fuzzy C-Means (FCM) clustering algorithm for imag...
Abstract: Cluster analysis is used for clustering a data set into groups of similar individuals. It ...
Fuzzy systems which are an artificial intelligent technique are applicable for controlling and decis...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Abstract(#br)The fuzzy c -means (FCM) clustering algorithm is an unsupervised learning method that h...
Fuzzy clustering can be helpful in finding natural vague boundaries in data. The fuzzy c-means metho...
Abstract: A three-stage dynamic fuzzy clustering algorithm consisting of initial partitioning, a seq...
ii Unsupervised learning, mostly represented by data clustering methods, is an important machine lea...
Classification plays an important role in many fields of life, including medical diagnosis support. ...
This dissertation addresses issues central to frizzy classification. The issue of sensitivity to noi...
Owing to the generation of vast amount of unlabelled dynamic data and the need to analyze them, deep...
A hybrid unsupervised learning algorithm, termed as rough-fuzzy c-means, is proposed in this paper. ...
AbstractIn this paper we propose a robust clustering method for handling LR-type fuzzy numbers. The ...