In this paper we present two techniques designed to identify the relative salience of features in a data-defined problem with respect to their ability to predict a category outcome-e.g., which features of a character contribute most to accurate prediction of outcome. The first technique we proposed is a neural-net based clamping technique and another is based on inductive learning algorithm-decision tree's heuristic. They are compared with a number of other techniques, i.e., automatic relevance determination (ARD), weight-product, random selection, in addition to a standard statistical technique-linear correlation analysis. The salience of the features that compose a proposed set is an important problem to solve efficiently and effectively ...
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
Abstract:- Feature subset selection is a central issue in a vast diversity of problems including cla...
We design several algorithms representing evaluation processes of different complexity, ranging from...
AbstractThis paper presents a survey of feature saliency measures used in artificial neural networks...
Although it is well known that people selectively attend to salient features in similarity judgment,...
A central problem in machine learning is identifying a representative set of features from which to ...
Identifying and quantifying relevance of input features are particularly useful in data mining when ...
In this paper we describe novel feature subset selection methods, based on the estimation of feature...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
Artificial Neural Networks (ANNs) are often viewed as black box. This limits the comprehensive under...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
ii A central problem in machine learning is identifying a representative set of features from which ...
This thesis introduces two novel machine learning methods of feature ranking and feature selection....
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
Abstract:- Feature subset selection is a central issue in a vast diversity of problems including cla...
We design several algorithms representing evaluation processes of different complexity, ranging from...
AbstractThis paper presents a survey of feature saliency measures used in artificial neural networks...
Although it is well known that people selectively attend to salient features in similarity judgment,...
A central problem in machine learning is identifying a representative set of features from which to ...
Identifying and quantifying relevance of input features are particularly useful in data mining when ...
In this paper we describe novel feature subset selection methods, based on the estimation of feature...
Pfannschmidt L. Relevance learning for redundant features. Bielefeld: Universität Bielefeld; 2021.Fe...
Features gathered from the observation of a phenomenon are not all equally informative: some of them...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
Artificial Neural Networks (ANNs) are often viewed as black box. This limits the comprehensive under...
Machine learning algorithms automatically extract knowledge from machine readable information. Unfor...
ii A central problem in machine learning is identifying a representative set of features from which ...
This thesis introduces two novel machine learning methods of feature ranking and feature selection....
The Relevance Index (RI) is an information theory-based measure that was originally defined to detec...
Abstract:- Feature subset selection is a central issue in a vast diversity of problems including cla...
We design several algorithms representing evaluation processes of different complexity, ranging from...