Online learning is a growing branch of data mining which allows all traditional data mining techniques to be applied on a online stream of data in real time. In this paper, we present a fast and efficient online sensitivity based feature ranking method (SFR) which is updated incrementally. We take advantage of the concept of global sensitivity and rank features based on their impact on the outcome of the classification model. In the feature selection part, we use a two-stage filtering method in order to first eliminate highly correlated and redundant features and then eliminate irrelevant features in the second stage. One important advantage of our algorithm is its generality, which means the method works for correlated feature spaces witho...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
In an era where accumulating data is easy and storing it inexpensive, feature selection plays a cent...
Today’s digital lifestyles are changing rapidly and already moving towards the Big Data phenomenon. ...
Online learning is a growing branch of machine learning which allows all traditional data mining tec...
Selection of Online Feature is significant important concept in data mining. Batch learning is the m...
Feature weighting or selection is a crucial process to identify an important subset of features from...
Most studies of online learning require accessing all the attributes/ features of training instances...
Abstract—Feature selection is an important technique for data mining. Despite its importance, most s...
In this paper, we propose a new online feature selection algorithm for streaming data. We aim to foc...
Feature weighting or selection is a crucial process to identify an important subset of features from...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
In Data mining the Feature selection is one of the main techniques. In this its result shows, almost...
Abstract—Cost-Sensitive Online Classification is recently pro-posed to directly online optimize two ...
We propose a new online feature selection framework for applications with streaming features where t...
An emerging research area named Learning-to-Rank (LtR) has shown that effective solutions to the ran...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
In an era where accumulating data is easy and storing it inexpensive, feature selection plays a cent...
Today’s digital lifestyles are changing rapidly and already moving towards the Big Data phenomenon. ...
Online learning is a growing branch of machine learning which allows all traditional data mining tec...
Selection of Online Feature is significant important concept in data mining. Batch learning is the m...
Feature weighting or selection is a crucial process to identify an important subset of features from...
Most studies of online learning require accessing all the attributes/ features of training instances...
Abstract—Feature selection is an important technique for data mining. Despite its importance, most s...
In this paper, we propose a new online feature selection algorithm for streaming data. We aim to foc...
Feature weighting or selection is a crucial process to identify an important subset of features from...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
In Data mining the Feature selection is one of the main techniques. In this its result shows, almost...
Abstract—Cost-Sensitive Online Classification is recently pro-posed to directly online optimize two ...
We propose a new online feature selection framework for applications with streaming features where t...
An emerging research area named Learning-to-Rank (LtR) has shown that effective solutions to the ran...
In most real-world information processing problems, data is not a free resource. Its acquisition is ...
In an era where accumulating data is easy and storing it inexpensive, feature selection plays a cent...
Today’s digital lifestyles are changing rapidly and already moving towards the Big Data phenomenon. ...