We present a nonparametric method for selecting informative features in high-dimensional clustering problems. We start with a screening step that uses a test for multimodality. Then we apply kernel density estimation and mode clustering to the selected features. The output of the method consists of a list of relevant features, and cluster assignments. We provide explicit bounds on the error rate of the resulting clustering. In addition, we provide the first error bounds on mode based clustering.
ABSTRACT- Feature range involves identifying a subset of the most useful characteristic that produce...
Feature selection is an important step for data mining and machine learning. It can be used to reduc...
© 2018 IEEE. Clustering, an important unsupervised learning task, is very challenging on high-dimens...
We present a nonparametric method for selecting informative features in high-dimensional clustering ...
A new clustering approach based on mode identification is developed by applying new optimization tec...
Clustering is part of data mining where data mining is a process in which it is used to analyze data...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
Feature selection is an important research area that seeks to eliminate unwanted features from datas...
Abstract — In machine learning, feature selection is preprocessing step and can be effectively reduc...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
Existing clustering algorithms have difficulty finding the correct locations of potential clusters i...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
ABSTRACT- Feature range involves identifying a subset of the most useful characteristic that produce...
Feature selection is an important step for data mining and machine learning. It can be used to reduc...
© 2018 IEEE. Clustering, an important unsupervised learning task, is very challenging on high-dimens...
We present a nonparametric method for selecting informative features in high-dimensional clustering ...
A new clustering approach based on mode identification is developed by applying new optimization tec...
Clustering is part of data mining where data mining is a process in which it is used to analyze data...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
Feature selection is an important research area that seeks to eliminate unwanted features from datas...
Abstract — In machine learning, feature selection is preprocessing step and can be effectively reduc...
Abstract: Feature set extraction from raw dataset is always an interesting and important research is...
Existing clustering algorithms have difficulty finding the correct locations of potential clusters i...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
ABSTRACT- Feature range involves identifying a subset of the most useful characteristic that produce...
Feature selection is an important step for data mining and machine learning. It can be used to reduc...
© 2018 IEEE. Clustering, an important unsupervised learning task, is very challenging on high-dimens...