With hundreds or thousands of features in high dimensional data, computational workload is challenging. In classification process, features which do not contribute significantly to prediction of classes, add to the computational workload. Therefore the aim of this paper is to use feature selection to decrease the computation load by reducing the size of high dimensional data. Selecting subsets of features which represent all features were used. Hence the process is two-fold; discarding irrelevant data and choosing one feature that representing a number of redundant features. There have been many studies regarding feature selection, for example backward feature selection and forward feature selection. In this study, a k-means clustering base...
Abstract: Data Mining is a term that refers to searching a large datasets in an attempt to detect hi...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
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 challen...
Abstract — In machine learning, feature selection is preprocessing step and can be effectively reduc...
Data mining techniques have been widely applied to extract knowledge from large databases. Data mini...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Feature subset selection is an effective way for reducing dimensionality removing irrelevant data ...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
Feature selection is a challenging problem that occurs in the high-dimensional data analysis of many...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
High-dimensional data contains a large number of features. With many features, high dimensional data...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
Abstract: Data Mining is a term that refers to searching a large datasets in an attempt to detect hi...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
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 challen...
Abstract — In machine learning, feature selection is preprocessing step and can be effectively reduc...
Data mining techniques have been widely applied to extract knowledge from large databases. Data mini...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
In HD dataset, feature selection involves identifying the subset of good features by using clusterin...
Feature subset selection is an effective way for reducing dimensionality removing irrelevant data ...
High-dimensional data contains a large number of features. With many features, high dimensional dat...
Feature selection is a challenging problem that occurs in the high-dimensional data analysis of many...
Processing applications with a large number of dimensions has been a challenge to the KDD community....
High-dimensional data contains a large number of features. With many features, high dimensional data...
ABSTRACT: A database can contain several dimensions or attributes. Many Clustering methods are desig...
Abstract: Data Mining is a term that refers to searching a large datasets in an attempt to detect hi...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...