Feature selection is an essential issue in machine learning. It discards the unnecessary or redundant features in the dataset. This paper introduced the new feature selection based on kernel function using 16 the real-world datasets from UCI data repository, and k-means clustering was utilized as the classifier using radial basis function (RBF) and polynomial kernel function. After sorting the features using the new feature selection, 75 percent of it was examined and evaluated using 10-fold cross-validation, then the accuracy, F1-Score, and running time were compared. From the experiments, it was concluded that the performance of the new feature selection based on RBF kernel function varied according to the value of the kernel parameter, o...
Classification can often benefit from efficient feature selection. However, the presence of linearly...
Resulting from technological advancements, it is now possible to regularly collect large volumes of ...
Feature selection techniques are very useful approaches for dimensionality reduction in data analysi...
Thesis (Master's)--University of Washington, 2018Feature selection methods play important roles in t...
Thesis (Master's)--University of Washington, 2018Feature selection methods play important roles in t...
Clustering technique in data mining has received a significant amount of attention from machine lear...
Feature selection and weighting has been an active research area in the last few decades nding succ...
International audienceFeature selection becomes the focus of much research in many areas of applicat...
Feature selection refers to a vital function in machine learning and data mining. The maximum weight...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Feature selection is an important procedure in machine learning because it can reduce the complexity...
In this paper, kernel feature selection is proposed to improve generalization performance of boostin...
Feature selection is an important procedure in machine learning because it can reduce the complexity...
Resulting from technological advancements, it is now possible to regularly collect large volumes of ...
Classification can often benefit from efficient feature selection. However, the presence of linearly...
Resulting from technological advancements, it is now possible to regularly collect large volumes of ...
Feature selection techniques are very useful approaches for dimensionality reduction in data analysi...
Thesis (Master's)--University of Washington, 2018Feature selection methods play important roles in t...
Thesis (Master's)--University of Washington, 2018Feature selection methods play important roles in t...
Clustering technique in data mining has received a significant amount of attention from machine lear...
Feature selection and weighting has been an active research area in the last few decades nding succ...
International audienceFeature selection becomes the focus of much research in many areas of applicat...
Feature selection refers to a vital function in machine learning and data mining. The maximum weight...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Feature selection goal is to get rid of redundant and irrelevant features. The problem of feature su...
Feature selection is an important procedure in machine learning because it can reduce the complexity...
In this paper, kernel feature selection is proposed to improve generalization performance of boostin...
Feature selection is an important procedure in machine learning because it can reduce the complexity...
Resulting from technological advancements, it is now possible to regularly collect large volumes of ...
Classification can often benefit from efficient feature selection. However, the presence of linearly...
Resulting from technological advancements, it is now possible to regularly collect large volumes of ...
Feature selection techniques are very useful approaches for dimensionality reduction in data analysi...