AbstractThis paper presents a novel rough set-based case-based reasoner for use in text categorization (TC). The reasoner has four main components: feature term extractor, document representor, case selector, and case retriever. It operates by first reducing the number of feature terms in the documents using the rough set technique. Then, the number of documents is reduced using a new document selection approach based on the case-based reasoning (CBR) concepts of coverage and reachability. As a result, both the number of feature terms and documents are reduced with only minimal loss of information. Finally, this smaller set of documents with fewer feature terms is used in TC. The proposed rough set-based case-based reasoner was tested on th...
A good text classifier is a classifier that efficiently categorizes large sets of text documents in ...
In this paper, we discuss the benefits and limitations of Ma-chine Learning (ML) for Case-Based Reas...
We tackle two different problems of text categorization (TC), namely feature selection and classifie...
AbstractThis paper presents a novel rough set-based case-based reasoner for use in text categorizati...
Abstract. Feature selection algorithms can reduce the high dimensionality of textual cases and incre...
Textual document set has become an important and rapidly growing information source in the web. Text...
This work investigates document classification in Case-Based Reasoning (CBR). The investigation is e...
Text categorization is the task in which text documents are classified into one or more of predefine...
Today text classification is a necessity due the very large amount of text documents that we have to...
Accurate text categorization is needed for efficient and effective text retrieval, search and filter...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
Abstract—Huge number of documents are increasing rapidly, therefore, to organize it in digitized for...
The case-based reasoning (CBR) becomes a novel paradigm that solves a new problem by remembering a p...
In the last ten years, automatic Text Categorization (TC) has been gaining an increasing interest fr...
. The management of textual information is getting more and more attention within the case-based rea...
A good text classifier is a classifier that efficiently categorizes large sets of text documents in ...
In this paper, we discuss the benefits and limitations of Ma-chine Learning (ML) for Case-Based Reas...
We tackle two different problems of text categorization (TC), namely feature selection and classifie...
AbstractThis paper presents a novel rough set-based case-based reasoner for use in text categorizati...
Abstract. Feature selection algorithms can reduce the high dimensionality of textual cases and incre...
Textual document set has become an important and rapidly growing information source in the web. Text...
This work investigates document classification in Case-Based Reasoning (CBR). The investigation is e...
Text categorization is the task in which text documents are classified into one or more of predefine...
Today text classification is a necessity due the very large amount of text documents that we have to...
Accurate text categorization is needed for efficient and effective text retrieval, search and filter...
Text categorization is the task of discovering the category or class text documents belongs to, or i...
Abstract—Huge number of documents are increasing rapidly, therefore, to organize it in digitized for...
The case-based reasoning (CBR) becomes a novel paradigm that solves a new problem by remembering a p...
In the last ten years, automatic Text Categorization (TC) has been gaining an increasing interest fr...
. The management of textual information is getting more and more attention within the case-based rea...
A good text classifier is a classifier that efficiently categorizes large sets of text documents in ...
In this paper, we discuss the benefits and limitations of Ma-chine Learning (ML) for Case-Based Reas...
We tackle two different problems of text categorization (TC), namely feature selection and classifie...