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Conic Optimization via Operator Splitting and Homogeneous Self-Dual Embedding

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TLDR
In this article, the alternating directions method of multipliers is used to solve the homogeneous self-dual embedding, an equivalent feasibility problem involving finding a nonzero point in the intersection of a subspace and a cone.
Abstract
We introduce a first-order method for solving very large convex cone programs. The method uses an operator splitting method, the alternating directions method of multipliers, to solve the homogeneous self-dual embedding, an equivalent feasibility problem involving finding a nonzero point in the intersection of a subspace and a cone. This approach has several favorable properties. Compared to interior-point methods, first-order methods scale to very large problems, at the cost of requiring more time to reach very high accuracy. Compared to other first-order methods for cone programs, our approach finds both primal and dual solutions when available or a certificate of infeasibility or unboundedness otherwise, is parameter free, and the per-iteration cost of the method is the same as applying a splitting method to the primal or dual alone. We discuss efficient implementation of the method in detail, including direct and indirect methods for computing projection onto the subspace, scaling the original problem data, and stopping criteria. We describe an open-source implementation, which handles the usual (symmetric) nonnegative, second-order, and semidefinite cones as well as the (non-self-dual) exponential and power cones and their duals. We report numerical results that show speedups over interior-point cone solvers for large problems, and scaling to very large general cone programs.

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Error bounds, facial residual functions and applications to the exponential cone

TL;DR: In this article , a general framework for deriving error bounds for conic feasibility problems is presented, which allows one to work with cones that fail to be amenable or even to have computable projections.

low-rank structure in semidefinite programming by approximate operator splitting.

TL;DR: The key characteristic of the proposed algorithm is to be able to exploit the low-rank property inherent to several semidefinite programming problems, which provides a substantial speedup and allows the operator splitting method to efficiently scale to larger instances.
Journal ArticleDOI

FANOK: Knockoffs in Linear Time

TL;DR: In this paper, the authors describe a series of algorithms that efficiently implement Gaussian model-X knockoffs to control the false discovery rate on large-scale feature selection problems and identify the knockoff distribution.
Journal ArticleDOI

A distributed algorithm for high-dimension convex quadratically constrained quadratic programs

TL;DR: In this article, a Jacobi-style distributed algorithm is proposed to solve convex, quadratically constrained quadratic programs (QCQPs), which arise from a broad range of applications.
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I and J

Journal ArticleDOI

Regression Shrinkage and Selection via the Lasso

TL;DR: A new method for estimation in linear models called the lasso, which minimizes the residual sum of squares subject to the sum of the absolute value of the coefficients being less than a constant, is proposed.
Book

Matrix computations

Gene H. Golub
Book

Convex Optimization

TL;DR: In this article, the focus is on recognizing convex optimization problems and then finding the most appropriate technique for solving them, and a comprehensive introduction to the subject is given. But the focus of this book is not on the optimization problem itself, but on the problem of finding the appropriate technique to solve it.
Book

Distributed Optimization and Statistical Learning Via the Alternating Direction Method of Multipliers

TL;DR: It is argued that the alternating direction method of multipliers is well suited to distributed convex optimization, and in particular to large-scale problems arising in statistics, machine learning, and related areas.