Recent approaches to independent component analysis (ICA) have used kernel independence measures to obtain very good performance, particularly where classical methods experience difficulty (for instance, sources with near-zero kurtosis). We present Fast Kernel ICA (FastKICA), a novel optimisation technique for one such kernel independence measure, the Hilbert-Schmidt independence criterion (HSIC). Our search procedure uses an approximate Newton method on the special orthogonal group, where we estimate the Hessian locally about independence. We employ incomplete Cholesky decomposition to efficiently compute the gradient and approximate Hessian. FastKICA results in more accurate solutions at a given cost compared with gradient descent, and is...
Independent Component Analysis (ICA) is a statistical sig-nal processing technique whose main applic...
The performance of standard algorithms for Independent Component Analysis quickly deteriorates under...
ABSTRACT: The independent component analysis of a random vector consists of finding for a linear tra...
Recent approaches to independent component analysis (ICA) have used kernel independence measures to ...
Recent approaches to independent component analysis (ICA) have used kernel independence measures to ...
Recent approaches to independent component analysis (ICA) have used kernel independence measures to ...
Recent approaches to independent component analysis have used kernel independence measures to obtain...
Independent Component Analysis (ICA) can be studied from different angles. The performance of ICA al...
Independent Component Analysis (ICA) is a technique for unsupervised exploration of multi-channel da...
Abstract. This paper derives a new algorithm that performs independent component analysis (ICA) by o...
International audienceWe study optimization methods for solving the maximum likelihood formulation o...
Abstract. We develop a super-fast kernel density estimation algorithm (FastKDE) and based on this a ...
The performance of ICA algorithms significantly depends on the choice of the contrast function and t...
We propose an independence criterion based on the eigenspectrum of covariance operators in reproduci...
The thesis deals with several problems in blind separation of linear mixture of unknown sources usin...
Independent Component Analysis (ICA) is a statistical sig-nal processing technique whose main applic...
The performance of standard algorithms for Independent Component Analysis quickly deteriorates under...
ABSTRACT: The independent component analysis of a random vector consists of finding for a linear tra...
Recent approaches to independent component analysis (ICA) have used kernel independence measures to ...
Recent approaches to independent component analysis (ICA) have used kernel independence measures to ...
Recent approaches to independent component analysis (ICA) have used kernel independence measures to ...
Recent approaches to independent component analysis have used kernel independence measures to obtain...
Independent Component Analysis (ICA) can be studied from different angles. The performance of ICA al...
Independent Component Analysis (ICA) is a technique for unsupervised exploration of multi-channel da...
Abstract. This paper derives a new algorithm that performs independent component analysis (ICA) by o...
International audienceWe study optimization methods for solving the maximum likelihood formulation o...
Abstract. We develop a super-fast kernel density estimation algorithm (FastKDE) and based on this a ...
The performance of ICA algorithms significantly depends on the choice of the contrast function and t...
We propose an independence criterion based on the eigenspectrum of covariance operators in reproduci...
The thesis deals with several problems in blind separation of linear mixture of unknown sources usin...
Independent Component Analysis (ICA) is a statistical sig-nal processing technique whose main applic...
The performance of standard algorithms for Independent Component Analysis quickly deteriorates under...
ABSTRACT: The independent component analysis of a random vector consists of finding for a linear tra...