In text categorization, different supervised term weighting methods have been applied to improve classification performance by weighting terms with respect to different categories, for example, Information Gain, χ2 statistic, and Odds Ratio. From the literature there are three term ranking methods to summarize term weights of different categories for multi-class text categorization. They are Summation, Average, and Maximum methods. In this paper we present a new term ranking method to summarize term weights, i.e. Maximum Gap. Using two different methods of information gain and χ2 statistic, we setup controlled experiments for different term ranking methods. Reuter-21578 text corpus is used as the dataset. Two popular classification algori...
This paper describes a new approach for estimating term weights in a document, and shows how the new...
In text categorization, a well-known problem related to document length is that larger term counts i...
Text categorization is a task of automatically assigning documents to a set of predefined categories...
In text categorization, different supervised term weighting methods have been applied to improve cla...
Abstract- In this paper, various term weighting methods for text categorization has been discussed. ...
Within text categorization and other data mining tasks, the use of suitable methods for term weighti...
Within text categorization and other data mining tasks, the use of suitable methods for term weighti...
Within text categorization and other data mining tasks, the use of suitable methods for term weighti...
With the rapid growth of textual content on the Internet, automatic text categorization is a compara...
AbstractIn this paper, we introduce a new measure called Term_Class relevance to compute the relevan...
A filter feature selection process for text categorization system consists of two main stages: the t...
A filter feature selection process for text categorization system consists of two main stages: the t...
This paper proposes a local feature selection (FS) measure namely, Categorical Descriptor Term (CTD)...
A filter feature selection process for text categorization system consists of two main stages: the t...
In text categorization (TC) based on the vector space model, documents are represented as a vector, ...
This paper describes a new approach for estimating term weights in a document, and shows how the new...
In text categorization, a well-known problem related to document length is that larger term counts i...
Text categorization is a task of automatically assigning documents to a set of predefined categories...
In text categorization, different supervised term weighting methods have been applied to improve cla...
Abstract- In this paper, various term weighting methods for text categorization has been discussed. ...
Within text categorization and other data mining tasks, the use of suitable methods for term weighti...
Within text categorization and other data mining tasks, the use of suitable methods for term weighti...
Within text categorization and other data mining tasks, the use of suitable methods for term weighti...
With the rapid growth of textual content on the Internet, automatic text categorization is a compara...
AbstractIn this paper, we introduce a new measure called Term_Class relevance to compute the relevan...
A filter feature selection process for text categorization system consists of two main stages: the t...
A filter feature selection process for text categorization system consists of two main stages: the t...
This paper proposes a local feature selection (FS) measure namely, Categorical Descriptor Term (CTD)...
A filter feature selection process for text categorization system consists of two main stages: the t...
In text categorization (TC) based on the vector space model, documents are represented as a vector, ...
This paper describes a new approach for estimating term weights in a document, and shows how the new...
In text categorization, a well-known problem related to document length is that larger term counts i...
Text categorization is a task of automatically assigning documents to a set of predefined categories...