The neighborhood rough set (NRS) is used to remove redundant features after identifying neighborhood relation among samples of features. In this study, a new NRS is proposed to determine and remove outlier features. An outlier score is calculated by measuring the neighborhood relation and non-neighborhood relation among samples with respect to a feature. Features that have an outlier score below the average outlier score are removed from the data set. In this research work, a support vector machine (SVM) and its extended version to reduce input features are used to evaluate the quality of the selected features from the proposed NRS. The experiment involves twelve real world data sets. The results show that the proposed method can reduce at ...
This report studies the feature selection based on the Expectation-Maximization Rough Set (RSEM) alg...
Support Vector Machine (SVM) is a fundamental technique in machine learning. A long time challenge f...
A new rough neural network (RNN)-based model is proposed in this paper. The radial basis function ne...
Rough set theories are utilized in class-specific feature selection to improve the classification pe...
K nearest neighbor classifier (K-NN) is widely discussed and applied in pattern recognition and mach...
Rough set theory has been successfully applied to many fields, such as data mining, pattern recognit...
Recent research studies on outlier detection have focused on examining the nearest neighbor structur...
The curse of dimensionality problem occurs when the data are high-dimensional. It affects the learni...
Data for training a classification model can be considered to consist of two types of points: easy t...
Machine Learning techniques can be used to improve the performance of intelligent software systems. ...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
Due to increase in large number of document on the internet data mining becomes an important key par...
As a filter model, rough set-based methods are one of effective attribute reduction(also called feat...
Research in the area of fuzzy-rough set theory and its application to various areas of learning have...
The paper presents an application of rough sets and statistical methods to feature reduction and pat...
This report studies the feature selection based on the Expectation-Maximization Rough Set (RSEM) alg...
Support Vector Machine (SVM) is a fundamental technique in machine learning. A long time challenge f...
A new rough neural network (RNN)-based model is proposed in this paper. The radial basis function ne...
Rough set theories are utilized in class-specific feature selection to improve the classification pe...
K nearest neighbor classifier (K-NN) is widely discussed and applied in pattern recognition and mach...
Rough set theory has been successfully applied to many fields, such as data mining, pattern recognit...
Recent research studies on outlier detection have focused on examining the nearest neighbor structur...
The curse of dimensionality problem occurs when the data are high-dimensional. It affects the learni...
Data for training a classification model can be considered to consist of two types of points: easy t...
Machine Learning techniques can be used to improve the performance of intelligent software systems. ...
In the rough-set field, the objective of attribute reduction is to regulate the variations of measur...
Due to increase in large number of document on the internet data mining becomes an important key par...
As a filter model, rough set-based methods are one of effective attribute reduction(also called feat...
Research in the area of fuzzy-rough set theory and its application to various areas of learning have...
The paper presents an application of rough sets and statistical methods to feature reduction and pat...
This report studies the feature selection based on the Expectation-Maximization Rough Set (RSEM) alg...
Support Vector Machine (SVM) is a fundamental technique in machine learning. A long time challenge f...
A new rough neural network (RNN)-based model is proposed in this paper. The radial basis function ne...