ii A central problem in machine learning is identifying a representative set of features from which to construct a classification model for a particular task. This thesis addresses the problem of feature selection for machine learning through a correlation based approach. The central hypothesis is that good feature sets contain features that are highly correlated with the class, yet uncorrelated with each other. A feature evaluation formula, based on ideas from test theory, provides an operational definition of this hypothesis. CFS (Correlation based Feature Selection) is an algorithm that couples this evaluation formula with an appropriate correlation measure and a heuristic search strategy. CFS was evaluated by experiments on artificial a...
[[abstract]]Feature selection is a fundamental problem in machine learning and data mining. How to c...
Characteristics of Support Vector Machine (SVM) and its classifications are elaborated to show why i...
Repeated calculations lead to a sharp increase in the time of correlation-based feature selection. I...
A central problem in machine learning is identifying a representative set of features from which to ...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
Algorithms for feature selection fall into two broad categories: wrappers that use the learning algo...
Recent work has shown that feature subset selection can have a position affect on the performance of...
Thus far the democratization of machine learning, which resulted in the field of AutoML, has focused...
In classification problems, the issue of high dimensionality, of data is often considered important....
<p>The network representing the descriptors obtained using CFS algorithm showing common (pink) and u...
Algorithms for feature selection fall into two broad categories: wrappers use the learning algorithm...
In many datasets, there is a very large number of attributes (e.g. many thousands). Such datasets ca...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
© 1989-2012 IEEE. Due to its simplicity, efficiency, and efficacy, naive Bayes (NB) has continued to...
[[abstract]]Feature selection is a fundamental problem in machine learning and data mining. How to c...
Characteristics of Support Vector Machine (SVM) and its classifications are elaborated to show why i...
Repeated calculations lead to a sharp increase in the time of correlation-based feature selection. I...
A central problem in machine learning is identifying a representative set of features from which to ...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
Algorithms for feature selection fall into two broad categories: wrappers that use the learning algo...
Recent work has shown that feature subset selection can have a position affect on the performance of...
Thus far the democratization of machine learning, which resulted in the field of AutoML, has focused...
In classification problems, the issue of high dimensionality, of data is often considered important....
<p>The network representing the descriptors obtained using CFS algorithm showing common (pink) and u...
Algorithms for feature selection fall into two broad categories: wrappers use the learning algorithm...
In many datasets, there is a very large number of attributes (e.g. many thousands). Such datasets ca...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
© 1989-2012 IEEE. Due to its simplicity, efficiency, and efficacy, naive Bayes (NB) has continued to...
[[abstract]]Feature selection is a fundamental problem in machine learning and data mining. How to c...
Characteristics of Support Vector Machine (SVM) and its classifications are elaborated to show why i...
Repeated calculations lead to a sharp increase in the time of correlation-based feature selection. I...