Low-rank matrix recovery problems arise naturally as mathematical formulations of various inverse problems, such as matrix completion, blind deconvolution, and phase retrieval. Over the last two decades, a number of works have rigorously analyzed the reconstruction performance for such scenarios, giving rise to a rather general understanding of the potential and the limitations of low-rank matrix models in sensing problems. In this chapter, we compare the two main proof techniques that have been paving the way to a rigorous analysis, discuss their potential and limitations, and survey their successful applications. On the one hand, we review approaches based on descent cone analysis, showing that they often lead to strong guarantees even in...
In this paper, we focus on compressed sensing and recovery schemes for low-rank matrices, asking und...
Subspace recovery from the corrupted and missing data is crucial for various applications in signal ...
Abstract. The problem of recovering a matrix of low rank from an incomplete and possibly noisy set o...
Low-rank matrix recovery problems arise naturally as mathematical formulations of various inverse pr...
Matrix sensing problems capitalize on the assumption that a data matrix of interest is low-rank or i...
Expressing a matrix as the sum of a low-rank matrix plus a sparse matrix is a flexible model capturi...
Low-rank matrix recovery problems are inverse problems which naturally arise in various fields like ...
The last decade witnessed the burgeoning development in the reconstruction of signals by exploiting ...
Low-rank matrix recovery from structured measurements has been a topic of intense study in the last ...
Abstract. We present and analyze an efficient implementation of an iteratively reweighted least squa...
This paper presents several novel theoretical results regarding the recovery of a low-rank matrix f...
Abstract In this paper, we present and analyze a new set of low-rank recovery algorithms for linear ...
A common approach for compressing large-scale data is through matrix sketching. In this work, we con...
The problem of recovering a low-rank matrix consistent with noisy linear measurements is a fundament...
We prove new results about the robustness of well-known convex noise-blind optimization formulations...
In this paper, we focus on compressed sensing and recovery schemes for low-rank matrices, asking und...
Subspace recovery from the corrupted and missing data is crucial for various applications in signal ...
Abstract. The problem of recovering a matrix of low rank from an incomplete and possibly noisy set o...
Low-rank matrix recovery problems arise naturally as mathematical formulations of various inverse pr...
Matrix sensing problems capitalize on the assumption that a data matrix of interest is low-rank or i...
Expressing a matrix as the sum of a low-rank matrix plus a sparse matrix is a flexible model capturi...
Low-rank matrix recovery problems are inverse problems which naturally arise in various fields like ...
The last decade witnessed the burgeoning development in the reconstruction of signals by exploiting ...
Low-rank matrix recovery from structured measurements has been a topic of intense study in the last ...
Abstract. We present and analyze an efficient implementation of an iteratively reweighted least squa...
This paper presents several novel theoretical results regarding the recovery of a low-rank matrix f...
Abstract In this paper, we present and analyze a new set of low-rank recovery algorithms for linear ...
A common approach for compressing large-scale data is through matrix sketching. In this work, we con...
The problem of recovering a low-rank matrix consistent with noisy linear measurements is a fundament...
We prove new results about the robustness of well-known convex noise-blind optimization formulations...
In this paper, we focus on compressed sensing and recovery schemes for low-rank matrices, asking und...
Subspace recovery from the corrupted and missing data is crucial for various applications in signal ...
Abstract. The problem of recovering a matrix of low rank from an incomplete and possibly noisy set o...