There has been a growing interest in representing real-life applications with data sets having binary-valued features.These data sets due to the advancements in computer and data management systems consist of tens or hundreds of thousands of features.In this dissertation, we investigate two problems in machine learning which have been relatively less studied for high-dimensional binary data.The first problem is to select a subset of features useful for supervised learning applications from the entire feature set and is known as the feature selection (FS) problem.The second problem is to compare two orderings of features induced by feature ranking (FR) algorithms and to determine which one is better. For the feature selection problem, we hav...
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
This thesis addresses the problem of feature selection in pattern recognition. A detailed analysis a...
Along with the improvement of data acquisition techniques and the increasing computational capacity ...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Resulting from technological advancements, it is now possible to regularly collect large volumes of ...
Feature selection in binary datasets is an important task in many real world machine learning applic...
Feature selection is an important issue in pattern recognition. The goal of feature selection algori...
Abstract: We presented a comparison between several feature ranking methods used on two real dataset...
In feature subset selection the variable selection procedure selects a subset of the most relevant f...
Application of a feature selection algorithm to a textual data set can improve the performance of so...
Feature selection plays a significant role in improving the performance of the machine learning algo...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
The aim of Feature Subset Selection FSS algorithms is to select a subset of features from the origin...
In classification problems, the issue of high dimensionality, of data is often considered important....
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
This thesis addresses the problem of feature selection in pattern recognition. A detailed analysis a...
Along with the improvement of data acquisition techniques and the increasing computational capacity ...
© 2020 Batugahage Kushani Anuradha PereraFeature selection plays a vital role in machine learning by...
In machine learning the classification task is normally known as supervised learning. In supervised ...
Resulting from technological advancements, it is now possible to regularly collect large volumes of ...
Feature selection in binary datasets is an important task in many real world machine learning applic...
Feature selection is an important issue in pattern recognition. The goal of feature selection algori...
Abstract: We presented a comparison between several feature ranking methods used on two real dataset...
In feature subset selection the variable selection procedure selects a subset of the most relevant f...
Application of a feature selection algorithm to a textual data set can improve the performance of so...
Feature selection plays a significant role in improving the performance of the machine learning algo...
Abstract. The attribute selection techniques for supervised learning, used in the preprocessing phas...
The aim of Feature Subset Selection FSS algorithms is to select a subset of features from the origin...
In classification problems, the issue of high dimensionality, of data is often considered important....
Feature selection approach solves the dimensionality problem by removing irrelevant and redundant fe...
This thesis addresses the problem of feature selection in pattern recognition. A detailed analysis a...
Along with the improvement of data acquisition techniques and the increasing computational capacity ...