Easily Parallelizable and Distributable Class of Algorithms for Structured Sparsity, With Optima Acceleration

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초록

Many statistical learning problems can be posed as minimization of a sum of two convex functions, one typically a composition of nonsmooth and linear functions. Examples include regression under structured sparsity assumptions. Popular algorithms for solving such problems, for example, ADMM, often involve nontrivial optimization subproblems or smoothing approximation. We consider two classes of primal-dual algorithms that do not incur these difficulties, and unify them from a perspective of monotone operator theory. From this unification, we propose a continuum of preconditioned forward-backward operator splitting algorithms amenable to parallel and distributed computing. For the entire region of convergence of the whole continuum of algorithms, we establish its rates of convergence. For some known instances of this continuum, our analysis closes the gap in theory. We further exploit the unification to propose a continuum of accelerated algorithms. We show that the whole continuum attains the theoretically optimal rate of convergence. The scalability of the proposed algorithms, as well as their convergence behavior, is demonstrated up to 1.2 million variables with a distributed implementation. The code is available at . Supplemental materials for this article are available online.

키워드

Distributed computingGPUMonotone operator theoryNonsmooth optimizationOperator splittingSparsityPRIMAL-DUAL ALGORITHMSSADDLE-POINTCONVEX-OPTIMIZATIONSPLITTING ALGORITHM
제목
Easily Parallelizable and Distributable Class of Algorithms for Structured Sparsity, With Optima Acceleration
저자
Ko, SeyoonYu, DonghyeonWon, Joong-Ho
DOI
10.1080/10618600.2019.1592757
발행일
2019-10-02
유형
Article
저널명
Journal of Computational and Graphical Statistics
28
4
페이지
821 ~ 833