A new version of Fisher's discriminant analysis (FDA) is introduced in this paper. Our algorithm searches also for a reduced space in which patterns can be discriminated. However, no intermediate class separability criterion (such as Fisher's mean distance divided by variance) is used whatsoever. Classification performance is optimized directly. Since no statistical hypothesis are made, the method is of general applicability. Our evolutionary approach for optimization makes the number of projections and classes independent of each other. Even different numbers of projections, not necessarily the means, can be used for each class. As a proof of concept, the UCI thyroid problem (three classes) is solved in one dimension instead of two with st...
A non-linear classification technique based on Fisher's discriminant is proposed. Main ingredie...
The problem of reducing the dimensionality in statistical classification is studied. The case of the...
In this paper, we present an iterative approach to Fisher discriminant analysis called Kullback-Leib...
Fisher Discriminant Analysis (FDA) is one of the essential tools for feature extraction and classifi...
Abstract Investigating a data set of the critical size makes a classifica-tion task difficult. Study...
The Fisher linear discriminant analysis (LDA) is a classical method for classification and dimen-sio...
At the present, several applications need to classify high dimensional points belonging to highly un...
By applying recent results in optimization transfer, a new algorithm for kernel Fisher Discriminant ...
Fisher linear discriminant analysis (FLDA) $nds a set of optimal discriminating vectors by maximizin...
International audienceFisher discriminant analysis (FDA) is a popular and powerful method for dimens...
International audienceFisher discriminant analysis (FDA) is a popular and powerful method for dimens...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
A non-linear classification technique based on Fisher's discriminant is proposed. The main ingredien...
Fisher's linear discriminant analysis is one of the most commonly used and studied classification me...
A non-linear classification technique based on Fisher's discriminant is proposed. Main ingredie...
The problem of reducing the dimensionality in statistical classification is studied. The case of the...
In this paper, we present an iterative approach to Fisher discriminant analysis called Kullback-Leib...
Fisher Discriminant Analysis (FDA) is one of the essential tools for feature extraction and classifi...
Abstract Investigating a data set of the critical size makes a classifica-tion task difficult. Study...
The Fisher linear discriminant analysis (LDA) is a classical method for classification and dimen-sio...
At the present, several applications need to classify high dimensional points belonging to highly un...
By applying recent results in optimization transfer, a new algorithm for kernel Fisher Discriminant ...
Fisher linear discriminant analysis (FLDA) $nds a set of optimal discriminating vectors by maximizin...
International audienceFisher discriminant analysis (FDA) is a popular and powerful method for dimens...
International audienceFisher discriminant analysis (FDA) is a popular and powerful method for dimens...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
Discriminant analysis is a multivariate statistical technique used primarily for obtaining a linear ...
A non-linear classification technique based on Fisher's discriminant is proposed. The main ingredien...
Fisher's linear discriminant analysis is one of the most commonly used and studied classification me...
A non-linear classification technique based on Fisher's discriminant is proposed. Main ingredie...
The problem of reducing the dimensionality in statistical classification is studied. The case of the...
In this paper, we present an iterative approach to Fisher discriminant analysis called Kullback-Leib...