International audienceThis article proposes a performance analysis of kernel least squares support vector machines (LS-SVMs) based on a random matrix approach, in the regime where both the dimension of data p and their number n grow large at the same rate. Under a two-class Gaussian mixture model for the input data, we prove that the LS-SVM decision function is asymptotically normal with means and covariances shown to depend explicitly on the derivatives of the kernel function. This provides improved understanding along with new insights into the internal workings of SVM-type methods for large datasets
This book presents a unified theory of random matrices for applications in machine learning, offerin...
This article studies the asymptotic behavior of Kernel Least Square Support Vector Machine in the co...
International audienceThis article introduces a random matrix framework for the analysis of the trad...
International audienceThis article proposes a performance analysis of kernel least squares support v...
International audienceThis article proposes a performance analysis of kernel least squares support v...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceThis article provides theoretical insights into the inner workings of multi-ta...
International audienceThis article provides theoretical insights into the inner workings of multi-ta...
International audienceThis article provides theoretical insights into the inner workings of multi-ta...
International audienceThis article discusses the asymptotic performance of classical machine learnin...
International audienceThis article discusses the asymptotic performance of classical machine learnin...
International audienceThis article discusses the asymptotic performance of classical machine learnin...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
This article studies the asymptotic behavior of Kernel Least Square Support Vector Machine in the co...
International audienceThis article introduces a random matrix framework for the analysis of the trad...
International audienceThis article proposes a performance analysis of kernel least squares support v...
International audienceThis article proposes a performance analysis of kernel least squares support v...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceIn this article, a large dimensional performance analysis of kernel least squa...
International audienceThis article provides theoretical insights into the inner workings of multi-ta...
International audienceThis article provides theoretical insights into the inner workings of multi-ta...
International audienceThis article provides theoretical insights into the inner workings of multi-ta...
International audienceThis article discusses the asymptotic performance of classical machine learnin...
International audienceThis article discusses the asymptotic performance of classical machine learnin...
International audienceThis article discusses the asymptotic performance of classical machine learnin...
This book presents a unified theory of random matrices for applications in machine learning, offerin...
This article studies the asymptotic behavior of Kernel Least Square Support Vector Machine in the co...
International audienceThis article introduces a random matrix framework for the analysis of the trad...