This paper proposes a new feature selection algorithm. First, the data at every attribute are sorted. The continuously distributed data with the same class labels are grouped into runs. The runs whose length is greater than a given threshold are selected as “valid” runs, which enclose the instances separable from the other classes. Second, we count how many runs cover every instance and check how the covering number changes once eliminate a feature. Then, we delete the feature that has the least impact on the covering cases for all instances. We compare our method with ReliefF and a method based on mutual information. Evaluation was performed on 3 image databases. Experimental results show that the proposed method outperformed the ...
Feature selection in binary datasets is an important task in many real world machine learning applic...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
Since dealing with high dimensional data is computationally complex and sometimes even intractable, ...
This paper proposes a new feature selection algorithm. First, the data at every attribute are sorte...
A novel feature selection approach is proposed for data space defined over continuous features, whic...
Abstract. In recent years, distributed learning has been the focus of much atten-tion due to the pro...
A novel approach to feature selection is proposed for data space defined over continuous features. T...
Feature selection is a fundamental problem in machine learning and data mining. The majority of feat...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
OF COMPUTER VISION Most learning systems use hand-picked sets of features as input data for their le...
In any mining application for useful information from databases, an increasing number of features (a...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
DoctorFeature selection is the process of selecting a related subset that affects the performance of...
1 Introduction The process of feature selection, also known as attribute subset selection is a key f...
[[abstract]]Feature selection is about finding useful (relevant) features to describe an application...
Feature selection in binary datasets is an important task in many real world machine learning applic...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
Since dealing with high dimensional data is computationally complex and sometimes even intractable, ...
This paper proposes a new feature selection algorithm. First, the data at every attribute are sorte...
A novel feature selection approach is proposed for data space defined over continuous features, whic...
Abstract. In recent years, distributed learning has been the focus of much atten-tion due to the pro...
A novel approach to feature selection is proposed for data space defined over continuous features. T...
Feature selection is a fundamental problem in machine learning and data mining. The majority of feat...
Dimensionality reduction of the problem space through detection and removal of variables, contributi...
OF COMPUTER VISION Most learning systems use hand-picked sets of features as input data for their le...
In any mining application for useful information from databases, an increasing number of features (a...
The goal of feature selection is to find the optimal subset consisting of m features chosen from the...
DoctorFeature selection is the process of selecting a related subset that affects the performance of...
1 Introduction The process of feature selection, also known as attribute subset selection is a key f...
[[abstract]]Feature selection is about finding useful (relevant) features to describe an application...
Feature selection in binary datasets is an important task in many real world machine learning applic...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
Since dealing with high dimensional data is computationally complex and sometimes even intractable, ...