International audienceThe approximate joint diagonalization of a set of matrices consists in finding a basis in which these matrices are as diagonal as possible. This problem naturally appears in several statistical learning tasks such as blind signal separation. We consider the diagonalization criterion studied in a seminal paper by Pham (2001), and propose a new quasi-Newton method for its optimization. Through numerical experiments on simulated and real datasets, we show that the proposed method outper-forms Pham's algorithm. An open source Python package is released
International audienceA comparative study of approximate joint diagonalization algorithms of a set o...
We present a Bayesian scheme for the approximate diagonalisation of several square matrices which ar...
The problem of blind separation of complex-valued signals via joint diagonalization of a set of non-...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
A new efficient algorithm is presented for joint diagonalization of several matrices. The algorithm ...
This paper addresses the blind signal separation problem in the presence of sensor noise for the cas...
International audience<p>This paper deals with non-orthogonal joint block diagonalization. Two algor...
International audienceThis article addresses the problem of the Non Unitary Joint Block Diagonalizat...
International audienceThis article addresses the problem of the Non Unitary Joint Block Diagonalizat...
Joint diagonalization of several correlation matrices is a powerful tool for blind signal separation...
We present a Bayesian scheme for the approximate diagonalisation of several square matrices which ar...
We propose a new algorithm for Approximate Joint Diag-onalization (AJD) with two main advantages ove...
International audienceA comparative study of approximate joint diagonalization algorithms of a set o...
We present a Bayesian scheme for the approximate diagonalisation of several square matrices which ar...
The problem of blind separation of complex-valued signals via joint diagonalization of a set of non-...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
International audienceThe approximate joint diagonalization of a set of matrices consists in finding...
A new efficient algorithm is presented for joint diagonalization of several matrices. The algorithm ...
This paper addresses the blind signal separation problem in the presence of sensor noise for the cas...
International audience<p>This paper deals with non-orthogonal joint block diagonalization. Two algor...
International audienceThis article addresses the problem of the Non Unitary Joint Block Diagonalizat...
International audienceThis article addresses the problem of the Non Unitary Joint Block Diagonalizat...
Joint diagonalization of several correlation matrices is a powerful tool for blind signal separation...
We present a Bayesian scheme for the approximate diagonalisation of several square matrices which ar...
We propose a new algorithm for Approximate Joint Diag-onalization (AJD) with two main advantages ove...
International audienceA comparative study of approximate joint diagonalization algorithms of a set o...
We present a Bayesian scheme for the approximate diagonalisation of several square matrices which ar...
The problem of blind separation of complex-valued signals via joint diagonalization of a set of non-...