We study the Riemannian optimization methods on the embedded manifold of low rank matrices for the problem of matrix completion, which is about recovering a low rank matrix from its partial entries. Assume $m$ entries of an $n\times n$ rank $r$ matrix are sampled independently and uniformly with replacement. We first prove that with high probability the Riemannian gradient descent and conjugate gradient descent algorithms initialized by one step hard thresholding are guaranteed to converge linearly to the measured matrix provided \begin{align*} m\geq C_\kappa n^{1.5}r\log^{1.5}(n), \end{align*} where $C_\kappa$ is a numerical constant depending on the condition number of the und...
Matrix and tensor completion arise in many different real-world applications related to the inferenc...
Low rank matrix recovery is a fundamental task in many real-world applications. The perfor-mance of ...
We present a geometric optimization approach to approximate solutions of ma- trix equations by low-r...
We study the Riemannian optimization methods on the embedded manifold of low rank matrices ...
We establish theoretical recovery guarantees of a family of Riemannian optimization algorit...
The matrix completion problem consists of finding or approximating a low-rank matrix based on a few ...
The low-rank matrix completion problem can be solved by Riemannian optimization on a fixed-rank mani...
We propose a new Riemannian geometry for fixed-rank matrices that is specifically tailored to the lo...
Low-rank matrix completion is the problem where one tries to recover a low-rank matrix from noisy ob...
For entry sensing in matrix recovery (also known as matrix completion), we show that with high proba...
Given a data matrix with partially observed entries, the low-rank matrix completion problem is one o...
We exploit the versatile framework of Riemannian optimization on quotient manifolds to develop R3MC,...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...
Low-rank matrix completion is the problem of recovering the missing entries of a data matrix by usin...
Nonlinear matrix recovery is an emerging paradigm in which specific classes of high-rank matrices ca...
Matrix and tensor completion arise in many different real-world applications related to the inferenc...
Low rank matrix recovery is a fundamental task in many real-world applications. The perfor-mance of ...
We present a geometric optimization approach to approximate solutions of ma- trix equations by low-r...
We study the Riemannian optimization methods on the embedded manifold of low rank matrices ...
We establish theoretical recovery guarantees of a family of Riemannian optimization algorit...
The matrix completion problem consists of finding or approximating a low-rank matrix based on a few ...
The low-rank matrix completion problem can be solved by Riemannian optimization on a fixed-rank mani...
We propose a new Riemannian geometry for fixed-rank matrices that is specifically tailored to the lo...
Low-rank matrix completion is the problem where one tries to recover a low-rank matrix from noisy ob...
For entry sensing in matrix recovery (also known as matrix completion), we show that with high proba...
Given a data matrix with partially observed entries, the low-rank matrix completion problem is one o...
We exploit the versatile framework of Riemannian optimization on quotient manifolds to develop R3MC,...
Motivated by the problem of learning a linear regression model whose parameter is a large fixed-rank...
Low-rank matrix completion is the problem of recovering the missing entries of a data matrix by usin...
Nonlinear matrix recovery is an emerging paradigm in which specific classes of high-rank matrices ca...
Matrix and tensor completion arise in many different real-world applications related to the inferenc...
Low rank matrix recovery is a fundamental task in many real-world applications. The perfor-mance of ...
We present a geometric optimization approach to approximate solutions of ma- trix equations by low-r...