An improved evolving model, i.e., Evolving Tree (ETree) with Fuzzy c-Means (FCM), is proposed for undertaking text document visualization problems in this study. ETree forms a hierarchical tree structure in which nodes (i.e., trunks) are allowed to grow and split into child nodes (i.e., leaves), and each node represents a cluster of documents. However, ETree adopts a relatively simple approach to split its nodes. Thus, FCM is adopted as an alternative to perform node splitting in ETree. An experimental study using articles from a flagship conference of Universiti Malaysia Sarawak (UNIMAS), i.e., Engineering Conference (ENCON), is conducted. The experimental results are analyzed and discussed, and the outcome shows that the proposed ETree-FC...
Documents Clustering is a technique in which relationships between sets of documents are being autom...
Text clustering is a task of grouping similar documents into a cluster while assigning the dissimila...
The paper advocates the use of a new fuzzy-based clustering algorithm for document categorization. E...
The Self-Organizing Map (SOM) is a popular neural network model for clustering and visualization pro...
This paper presents a short overview of methods for fuzzy clustering and states desired properties f...
This thesis investigates the performance of fuzzy clustering for dynamically discovering content rel...
ABSTRACT: In this paper an approach that is using evolving, incremental (on-line) clustering to auto...
In this paper an approach that is using evolving, incremental (on-line) clustering to automatically ...
Abstract: Clustering techniques are mostly unsupervised methods that can be used to organize data in...
Nowadays, the explosive growth in text data emphasizes the need for developing new and computational...
Clustering techniques are mostly unsupervised methods that can be used to organize data into groups ...
In this paper, a novel on-line evolving fuzzy clustering method that extends the evolving clustering...
In this new and current era of technology, advancements and techniques, efficient and effective text...
Since the amount of text data stored in computer repositories is growing every day, we need more tha...
Cluster analysis of textual documents is a common technique for better ltering, navigation, under-st...
Documents Clustering is a technique in which relationships between sets of documents are being autom...
Text clustering is a task of grouping similar documents into a cluster while assigning the dissimila...
The paper advocates the use of a new fuzzy-based clustering algorithm for document categorization. E...
The Self-Organizing Map (SOM) is a popular neural network model for clustering and visualization pro...
This paper presents a short overview of methods for fuzzy clustering and states desired properties f...
This thesis investigates the performance of fuzzy clustering for dynamically discovering content rel...
ABSTRACT: In this paper an approach that is using evolving, incremental (on-line) clustering to auto...
In this paper an approach that is using evolving, incremental (on-line) clustering to automatically ...
Abstract: Clustering techniques are mostly unsupervised methods that can be used to organize data in...
Nowadays, the explosive growth in text data emphasizes the need for developing new and computational...
Clustering techniques are mostly unsupervised methods that can be used to organize data into groups ...
In this paper, a novel on-line evolving fuzzy clustering method that extends the evolving clustering...
In this new and current era of technology, advancements and techniques, efficient and effective text...
Since the amount of text data stored in computer repositories is growing every day, we need more tha...
Cluster analysis of textual documents is a common technique for better ltering, navigation, under-st...
Documents Clustering is a technique in which relationships between sets of documents are being autom...
Text clustering is a task of grouping similar documents into a cluster while assigning the dissimila...
The paper advocates the use of a new fuzzy-based clustering algorithm for document categorization. E...