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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.

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Sharp Recovery Bounds for Convex Demixing, with Applications

TL;DR: A randomized signal model is introduced that ensures that the two structures are incoherent, i.e., generically oriented, and for an observation from this model, this approach identifies a summary statistic that reflects the complexity of a particular signal.
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Constructing packings in Grassmannian manifolds via alternating projection

TL;DR: In this paper, a numerical method for finding good packings in Grassmannian manifolds equipped with various metrics is described, which can be used to produce packings of subspaces in real and complex grassmannian spaces equipped with the Fubini--Study distance.
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Model-based scaling of the streamwise energy density in high-Reynolds number turbulent channels

TL;DR: In this article, the authors study the Reynolds number scaling and geometric self-similarity of a gain-based, low-rank approximation to turbulent channel flows, determined by the resolvent formulation of McKeon & Sharma (2010), in order to obtain a description of the streamwise turbulence intensity from direct consideration of the Navier-Stokes equations.
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Freedman's inequality for matrix martingales

TL;DR: Oliveira et al. as discussed by the authors showed that the large deviation behavior of a martingale is controlled by the predictable quadratic variation and a uniform upper bound for the Martingale difference sequence.
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Robust computation of linear models by convex relaxation

TL;DR: In this article, a convex optimization problem, called REAPER, is described, which can reliably fit a low-dimensional model to this type of data, and it uses a relaxation of the set of orthogonal projectors to reach the convex formulation.