scispace - formally typeset
J

Joel A. Tropp

Researcher at California Institute of Technology

Publications -  182
Citations -  53704

Joel A. Tropp is an academic researcher from California Institute of Technology. The author has contributed to research in topics: Matrix (mathematics) & Convex optimization. The author has an hindex of 67, co-authored 173 publications receiving 49525 citations. Previous affiliations of Joel A. Tropp include Rice University & University of Michigan.

Papers
More filters
Journal ArticleDOI

Signal Recovery From Random Measurements Via Orthogonal Matching Pursuit

TL;DR: It is demonstrated theoretically and empirically that a greedy algorithm called orthogonal matching pursuit (OMP) can reliably recover a signal with m nonzero entries in dimension d given O(m ln d) random linear measurements of that signal.

Signal Recovery from Random Measurements Via Orthogonal Matching Pursuit: The Gaussian Case

TL;DR: In this paper, a greedy algorithm called Orthogonal Matching Pursuit (OMP) was proposed to recover a signal with m nonzero entries in dimension 1 given O(m n d) random linear measurements of that signal.
Journal ArticleDOI

CoSaMP: Iterative signal recovery from incomplete and inaccurate samples

TL;DR: A new iterative recovery algorithm called CoSaMP is described that delivers the same guarantees as the best optimization-based approaches and offers rigorous bounds on computational cost and storage.
Journal ArticleDOI

Greed is good: algorithmic results for sparse approximation

TL;DR: This article presents new results on using a greedy algorithm, orthogonal matching pursuit (OMP), to solve the sparse approximation problem over redundant dictionaries and develops a sufficient condition under which OMP can identify atoms from an optimal approximation of a nonsparse signal.
Journal ArticleDOI

Finding Structure with Randomness: Probabilistic Algorithms for Constructing Approximate Matrix Decompositions

TL;DR: This work surveys and extends recent research which demonstrates that randomization offers a powerful tool for performing low-rank matrix approximation, and presents a modular framework for constructing randomized algorithms that compute partial matrix decompositions.