Pattern selection methods have been traditionally developed with a dependency on a specific classifier. In contrast this paper presents a method that selects critical patterns deemed to carry essential information applicable to train those types of classifiers which require spatial information of the training dataset. Critical patterns include those edge patterns that define the boundary and those border patterns that separate classes. The proposed method selects patterns from a new perspective, primarily based on their location in input space. It determines class edge patterns with the assistance of approximated tangent hyperplane of a class surface. It also identifies border patterns between classes using local probability. The proposed m...
In this paper, a novel classifier, called adaptive local hyperplane, is proposed for pattern classif...
Published version of a chapter in the book: AI 2013: Advances in Artificial Intelligence. Also avail...
International audienceThis paper addresses the issue of supporting the end-user of a classifier, whe...
Pattern selection methods have been traditionally developed with a dependency on a specific classifi...
Patterns in a data set have different levels of usefulness to the training of classifiers. Extreme p...
The support vector machine (SVM) has been spotlighted in the machine learning community because of i...
Support Vector Machine (SVM) has been spotlighted in the machine learning community thanks to its th...
There are many paradigms for pattern classification such as the optimal Bayesian, kernel-based metho...
In pattern classification problem, one trains a classifier to recognize future unseen samples using ...
We focus on characterizing spatial region data when distinct classes of structural patterns are pre...
We propose a pre-selection method for training support vector machines (SVM) with a largescale datas...
Abstract—A method is described for finding decision bound-aries, approximated by piecewise linear se...
If the training pattern set is large, it takes a large memory and a long time to train support vecto...
A method is described for finding decision boundaries, approximated by piecewise linear segments, fo...
Local learning methods approximate a target function (a posteriori probability) by partitioning the ...
In this paper, a novel classifier, called adaptive local hyperplane, is proposed for pattern classif...
Published version of a chapter in the book: AI 2013: Advances in Artificial Intelligence. Also avail...
International audienceThis paper addresses the issue of supporting the end-user of a classifier, whe...
Pattern selection methods have been traditionally developed with a dependency on a specific classifi...
Patterns in a data set have different levels of usefulness to the training of classifiers. Extreme p...
The support vector machine (SVM) has been spotlighted in the machine learning community because of i...
Support Vector Machine (SVM) has been spotlighted in the machine learning community thanks to its th...
There are many paradigms for pattern classification such as the optimal Bayesian, kernel-based metho...
In pattern classification problem, one trains a classifier to recognize future unseen samples using ...
We focus on characterizing spatial region data when distinct classes of structural patterns are pre...
We propose a pre-selection method for training support vector machines (SVM) with a largescale datas...
Abstract—A method is described for finding decision bound-aries, approximated by piecewise linear se...
If the training pattern set is large, it takes a large memory and a long time to train support vecto...
A method is described for finding decision boundaries, approximated by piecewise linear segments, fo...
Local learning methods approximate a target function (a posteriori probability) by partitioning the ...
In this paper, a novel classifier, called adaptive local hyperplane, is proposed for pattern classif...
Published version of a chapter in the book: AI 2013: Advances in Artificial Intelligence. Also avail...
International audienceThis paper addresses the issue of supporting the end-user of a classifier, whe...