A non-linear classification technique based on Fisher's discriminant is proposed. The main ingredient is the kernel trick which allows the efficient computation of Fisher discriminant in feature space. The linear classification in feature space corresponds to a (powerful) non-linear decision function in input space. Large scale simulations demonstrate the competitiveness of our approach
We present a fast training algorithm for the kernel Fisher discriminant classifier. It uses a greedy...
We consider the problem of learning a linear combination of pre-specified kernel matrices in the Fis...
We investigate a new kernel–based classifier: the Kernel Fisher Discriminant (KFD). A mathematical p...
A non-linear classification technique based on Fisher's discriminant is proposed. Main ingredie...
We simultaneously approach two tasks of nonlinear discriminant analysis and kernel selection problem...
We simultaneously approach two tasks of nonlinear discriminant analysis and kernel selection problem...
Fishers linear discriminant analysis (LDA) is a classical multivariate technique both for dimension ...
We simultaneously approach two tasks of nonlinear dis-criminant analysis and kernel selection proble...
We simultaneously approach two tasks of nonlinear dis-criminant analysis and kernel selection proble...
We simultaneously approach two tasks of nonlinear dis-criminant analysis and kernel selection proble...
In the article the application of kernel functions – the so-called »kernel trick« – in the context o...
In this paper, we present an iterative approach to Fisher discriminant analysis called Kullback-Leib...
International audienceA simple method to derive nonlinear discriminants is to map the samples into a...
Nonlinear discriminant analysis may be transformed into the form of kernel-based discriminant analys...
Abstract—This paper presents a unified criterion, Fisher + kernel criterion (FKC), for feature extra...
We present a fast training algorithm for the kernel Fisher discriminant classifier. It uses a greedy...
We consider the problem of learning a linear combination of pre-specified kernel matrices in the Fis...
We investigate a new kernel–based classifier: the Kernel Fisher Discriminant (KFD). A mathematical p...
A non-linear classification technique based on Fisher's discriminant is proposed. Main ingredie...
We simultaneously approach two tasks of nonlinear discriminant analysis and kernel selection problem...
We simultaneously approach two tasks of nonlinear discriminant analysis and kernel selection problem...
Fishers linear discriminant analysis (LDA) is a classical multivariate technique both for dimension ...
We simultaneously approach two tasks of nonlinear dis-criminant analysis and kernel selection proble...
We simultaneously approach two tasks of nonlinear dis-criminant analysis and kernel selection proble...
We simultaneously approach two tasks of nonlinear dis-criminant analysis and kernel selection proble...
In the article the application of kernel functions – the so-called »kernel trick« – in the context o...
In this paper, we present an iterative approach to Fisher discriminant analysis called Kullback-Leib...
International audienceA simple method to derive nonlinear discriminants is to map the samples into a...
Nonlinear discriminant analysis may be transformed into the form of kernel-based discriminant analys...
Abstract—This paper presents a unified criterion, Fisher + kernel criterion (FKC), for feature extra...
We present a fast training algorithm for the kernel Fisher discriminant classifier. It uses a greedy...
We consider the problem of learning a linear combination of pre-specified kernel matrices in the Fis...
We investigate a new kernel–based classifier: the Kernel Fisher Discriminant (KFD). A mathematical p...