This thesis focuses on the investigations of using fuzzy clustering for automatic document categorization based on relations between document and other types of objects. Three approaches called Fk-Parts, LinkFCM and FC-MR are proposed to handle the document clustering problem under different scenarios. We start with a basic situation, and propose Fk-Parts to cluster documents based on document-document relation. The new mechanism of using multiple weighted medoids to represent each cluster makes Fk-Parts perform better than single medoid based approaches. After that, we consider situations where both vector representation of documents and document-document relation are available. LinkFCM is then formulated by incorporating relation into th...
Many real-world problems can be represented as complex networks with nodes representing different ob...
Document clustering is a useful and practical machine learning methodology, with various real-world ...
Clustering is one of the most popular data mining techniques in order to finding the user-desired pa...
The paper advocates the use of a new fuzzy-based clustering algorithm for document categorization. E...
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...
Most clustering algorithms build disjoint clusters. However, clusters might be overlapped because do...
Abstract: Clustering techniques are mostly unsupervised methods that can be used to organize data in...
The growth of the number of textual documents in the digital world, especially on the World Wide Web...
Clustering techniques are mostly unsupervised methods that can be used to organize data into groups ...
[[abstract]]With the rapid growth of text documents, document clustering has become one of the main ...
Abstract With the rapid growth of text documents, document clustering technique is emerging for effi...
The constant success of the Internet made the number of text documents in electronic forms increases...
Traditional document clustering approaches are usually based on the Bag of Words model, which is lim...
Documents Clustering is a technique in which relationships between sets of documents are being autom...
Many real-world problems can be represented as complex networks with nodes representing different ob...
Document clustering is a useful and practical machine learning methodology, with various real-world ...
Clustering is one of the most popular data mining techniques in order to finding the user-desired pa...
The paper advocates the use of a new fuzzy-based clustering algorithm for document categorization. E...
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...
Most clustering algorithms build disjoint clusters. However, clusters might be overlapped because do...
Abstract: Clustering techniques are mostly unsupervised methods that can be used to organize data in...
The growth of the number of textual documents in the digital world, especially on the World Wide Web...
Clustering techniques are mostly unsupervised methods that can be used to organize data into groups ...
[[abstract]]With the rapid growth of text documents, document clustering has become one of the main ...
Abstract With the rapid growth of text documents, document clustering technique is emerging for effi...
The constant success of the Internet made the number of text documents in electronic forms increases...
Traditional document clustering approaches are usually based on the Bag of Words model, which is lim...
Documents Clustering is a technique in which relationships between sets of documents are being autom...
Many real-world problems can be represented as complex networks with nodes representing different ob...
Document clustering is a useful and practical machine learning methodology, with various real-world ...
Clustering is one of the most popular data mining techniques in order to finding the user-desired pa...