Supervised and unsupervised learning have been the focus of critical research in the areas of machine learning and artificial intelligence. In the literature, these two streams flow independently of each other, despite their close conceptual and practical connections. This dissertation demonstrates that unsupervised learning algorithms, i.e. clustering, can provide us with valuable information about the data and help in the creation of high-accuracy text classifiers. In the case of clustering,the aim is to extract a kind of \structure" from a given sample of objects. The reasoning behind this is that if some structure exists in the objects, it is possible to take advantage of this information and find a short description of the data,exploit...
Nowadays, the explosive growth in text data emphasizes the need for developing new and computational...
Clustering is one of the most researched areas of data mining applications in the contemporary liter...
Feature clustering is a powerful method to reduce the dimensionality of feature vectors for text cla...
Supervised and unsupervised learning have been the focus of critical research in the areas of machin...
Supervised and unsupervised learning have been the focus of critical research in the areas of machin...
This paper addresses the problem of learning to classify texts by exploiting information derived fro...
The text is nothing but the combination of characters. Therefore, analyzing and extracting informati...
Semi-supervised learning methods construct classifiers using both labeled and unlabeled training da...
Master of ScienceDepartment of Computer ScienceWilliam HsuThis work describes a comparative study of...
Master of ScienceDepartment of Computer ScienceWilliam HsuThis work describes a comparative study of...
Clustering aided classification methods are based on the assumption that the learned clusters under ...
Clustering has been employed to expand training data in some semi-supervised learning methods. Clust...
Text clustering is a useful and inexpensive way to organize vast text repositories into meaningful t...
Many real-world datasets can be clustered along multiple dimensions. For example, text documents can...
Clustering is one of the most researched areas of data mining applications in the contemporary liter...
Nowadays, the explosive growth in text data emphasizes the need for developing new and computational...
Clustering is one of the most researched areas of data mining applications in the contemporary liter...
Feature clustering is a powerful method to reduce the dimensionality of feature vectors for text cla...
Supervised and unsupervised learning have been the focus of critical research in the areas of machin...
Supervised and unsupervised learning have been the focus of critical research in the areas of machin...
This paper addresses the problem of learning to classify texts by exploiting information derived fro...
The text is nothing but the combination of characters. Therefore, analyzing and extracting informati...
Semi-supervised learning methods construct classifiers using both labeled and unlabeled training da...
Master of ScienceDepartment of Computer ScienceWilliam HsuThis work describes a comparative study of...
Master of ScienceDepartment of Computer ScienceWilliam HsuThis work describes a comparative study of...
Clustering aided classification methods are based on the assumption that the learned clusters under ...
Clustering has been employed to expand training data in some semi-supervised learning methods. Clust...
Text clustering is a useful and inexpensive way to organize vast text repositories into meaningful t...
Many real-world datasets can be clustered along multiple dimensions. For example, text documents can...
Clustering is one of the most researched areas of data mining applications in the contemporary liter...
Nowadays, the explosive growth in text data emphasizes the need for developing new and computational...
Clustering is one of the most researched areas of data mining applications in the contemporary liter...
Feature clustering is a powerful method to reduce the dimensionality of feature vectors for text cla...