Goals

Sparsity and convexity are ubiquitous notions in Machine Learning and Statistics. In this course, we study the mathematical foundations of some powerful methods based on convex relaxation: L1-regularisation techniques in Statistics and Signal Processing; Nuclear Norm minimization in Matrix Completion.

These approaches turned to be Semi-Definite representable (SDP) and hence tractable in practice. The theoretical part of the course will focus on the guarantees of these algorithms under the sparsity assumption. The practical part of this course will present the standard solvers of these learning problems.

Programme

Grande dimension puis complétion de matrices

Course
18h
 

Code

22_M_MAS_MEA_S3_OPT_01

Responsibles

  • Martine MARION
  • Yohann DE CASTRO

Language

French

Keywords

L1-regularization; Matrix Completion; Semi-Definite Programming; Proximal methods