Data mining techniques have been widely applied to extract knowledge from large databases. Data mining searches for relationships and global patterns that exist in large databases that are ‘hidden’ among the huge data. Feature selection involves selecting the most useful features from the given data set and reduces dimensionality. Graph clustering method is used for feature selection. Features which are most relevant to the target class and independent of other are selected from the cluster. The feature subset obtained are given to the various supervised learning algorithms to increase the learning accuracy and obtain best feature subset. The feature selection can be efficient and effective using clustering approach. Based on the criteria o...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
With hundreds or thousands of features in high dimensional data, computational workload is challen...
Feature selection has been a productive field of research and development in data mining, machine le...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
Data mining, the extraction of hidden predictive information from large databases, is a powerful new...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
Abstract: Data Mining is a term that refers to searching a large datasets in an attempt to detect hi...
Feature selection, also known as variable selection, attribute selection or variable subset selectio...
Abstract — In machine learning, feature selection is preprocessing step and can be effectively reduc...
Feature subset selection is an effective way for reducing dimensionality removing irrelevant data ...
Abstract— — Unstructured Data refers to information that neither have a pre-defined data model nor i...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
With hundreds or thousands of features in high dimensional data, computational workload is challen...
Feature selection has been a productive field of research and development in data mining, machine le...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Abstract: Feature selection is the process of identifying a subset of the most useful features that ...
Data mining, the extraction of hidden predictive information from large databases, is a powerful new...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
With hundreds or thousands of features in high dimensional data, computational workload is challengi...
Abstract: Data Mining is a term that refers to searching a large datasets in an attempt to detect hi...
Feature selection, also known as variable selection, attribute selection or variable subset selectio...
Abstract — In machine learning, feature selection is preprocessing step and can be effectively reduc...
Feature subset selection is an effective way for reducing dimensionality removing irrelevant data ...
Abstract— — Unstructured Data refers to information that neither have a pre-defined data model nor i...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
With hundreds or thousands of features in high dimensional data, computational workload is challen...