Many problems in the sciences and engineering can be rephrased as optimization problems on matrix search spaces endowed with a so-called manifold structure. This book shows how to exploit the special structure of such problems to develop efficient numerical algorithms. It places careful emphasis on both the numerical formulation of the algorithm and its differential geometric abstraction--illustrating how good algorithms draw equally from the insights of differential geometry, optimization, and numerical analysis. Two more theoretical chapters provide readers with the background in differential geometry necessary to algorithmic development. In the other chapters, several well-known optimization methods such as steepest descent and conjugate...
The matrix completion problem consists of finding or approximating a low-rank matrix based on a few ...
Optimization on manifolds is a powerful paradigm to address nonlinear optimization problems. It has ...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
This book shows how to exploit the special structure of such problems to develop efficient numerical...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
This paper provides an introduction to the topic of optimization on manifolds. The approach taken us...
Summary. This paper provides an introduction to the topic of optimization on manifolds. The approach...
In both academic problems and industrial applications, it is inevitable to encounter some sort of op...
This paper provides an introduction to the topic of optimization on manifolds. The approach taken u...
Summary. This paper provides an introduction to the topic of optimization on manifolds. The approac...
We present a geometric optimization approach to approximate solutions of ma- trix equations by low-r...
Abstract. The techniques and analysis presented in this paper provide new meth-ods to solve optimiza...
The matrix completion problem consists of finding or approximating a low-rank matrix based on a few ...
Optimization on manifolds is a powerful paradigm to address nonlinear optimization problems. It has ...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
This book shows how to exploit the special structure of such problems to develop efficient numerical...
Many problems in the sciences and engineering can be rephrased as optimization problems on matrix se...
This paper provides an introduction to the topic of optimization on manifolds. The approach taken us...
Summary. This paper provides an introduction to the topic of optimization on manifolds. The approach...
In both academic problems and industrial applications, it is inevitable to encounter some sort of op...
This paper provides an introduction to the topic of optimization on manifolds. The approach taken u...
Summary. This paper provides an introduction to the topic of optimization on manifolds. The approac...
We present a geometric optimization approach to approximate solutions of ma- trix equations by low-r...
Abstract. The techniques and analysis presented in this paper provide new meth-ods to solve optimiza...
The matrix completion problem consists of finding or approximating a low-rank matrix based on a few ...
Optimization on manifolds is a powerful paradigm to address nonlinear optimization problems. It has ...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...