Patterns summarizing mutual associations between class decisions and attribute values in a pre-classified database, provide insight into the significance of attributes and also useful classificatory knowledge. In this paper we have proposed a conditional probability based, efficient method to extract the significant attributes from a database. Reducing the feature set during pre-processing enhances the quality of knowledge extracted and also increases the speed of computation. Our method supports easy visualization of classificatory knowledge. A likelihood-based classification algorithm that uses this classificatory knowledge is also proposed. We have also shown how the classification methodology can be used for cost-sensitive learning wher...
We present an iterative strategy for finding a relevant subset of attributes for the purpose of clas...
Abstract When first faced with a learning task, it is often not clear what a satisfactory representa...
A central problem in machine learning is identifying a representative set of features from which to ...
Abstract: The paper gives an overview of feature se-lection (abbreviated FS in the sequel) technique...
Feature selection is an important technique for dimension reduction in machine learning and pattern ...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
Abstract. The removal of irrelevant or redundant attributes could benefit us in making decisions and...
Data Mining is the extraction of hidden predictive information from large database. Classification i...
In this paper we present two techniques designed to identify the relative salience of features in a ...
Classification is a widely used technique in the data mining domain, where scalability and efficienc...
A method of automatic classification is developed for the case in which the features used to determi...
1 Introduction The process of feature selection, also known as attribute subset selection is a key f...
Data mining is the process of analyzing data from different perspectives and summarizing it into use...
We here introduce a novel classification approach adopted from the nonlinear model identification fr...
We present an iterative strategy for finding a relevant subset of attributes for the purpose of clas...
Abstract When first faced with a learning task, it is often not clear what a satisfactory representa...
A central problem in machine learning is identifying a representative set of features from which to ...
Abstract: The paper gives an overview of feature se-lection (abbreviated FS in the sequel) technique...
Feature selection is an important technique for dimension reduction in machine learning and pattern ...
The aim of this paper is to discuss about various feature selection algorithms applied on different ...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
Abstract. The removal of irrelevant or redundant attributes could benefit us in making decisions and...
Data Mining is the extraction of hidden predictive information from large database. Classification i...
In this paper we present two techniques designed to identify the relative salience of features in a ...
Classification is a widely used technique in the data mining domain, where scalability and efficienc...
A method of automatic classification is developed for the case in which the features used to determi...
1 Introduction The process of feature selection, also known as attribute subset selection is a key f...
Data mining is the process of analyzing data from different perspectives and summarizing it into use...
We here introduce a novel classification approach adopted from the nonlinear model identification fr...
We present an iterative strategy for finding a relevant subset of attributes for the purpose of clas...
Abstract When first faced with a learning task, it is often not clear what a satisfactory representa...
A central problem in machine learning is identifying a representative set of features from which to ...