Difference-of-Convex (DC) minimization, referring to the problem of minimizing the difference of two convex functions, has been found rich applications in statistical learning and studied extensively for decades. However, existing methods are primarily based on multi-stage convex relaxation, only leading to weak optimality of critical points. This paper proposes a coordinate descent method for minimizing a class of DC functions based on sequential nonconvex approximation. Our approach iteratively solves a nonconvex one-dimensional subproblem globally, and it is guaranteed to converge to a coordinate-wise stationary point. We prove that this new optimality condition is always stronger than the standard critical point condition and directional point condition under a mild \textit{locally bounded nonconvexity assumption}. For comparisons, we also include a naive variant of coordinate descent methods based on sequential convex approximation in our study. When the objective function satisfies a \textit{globally bounded nonconvexity assumption} and \textit{Luo-Tseng error bound assumption}, coordinate descent methods achieve \textit{Q-linear} convergence rate. Also, for many applications of interest, we show that the nonconvex one-dimensional subproblem can be computed exactly and efficiently using a breakpoint searching method. Finally, we have conducted extensive experiments on several statistical learning tasks to show the superiority of our approach. Keywords: Coordinate Descent, DC Minimization, DC Programming, Difference-of-Convex Programs, Nonconvex Optimization, Sparse Optimization, Binary Optimization.
翻译:Convex (DC) 最小化差异, 指将两个 convex 函数的差值最小化的问题, 在统计学习中发现有丰富的应用, 并进行了数十年的广泛研究。 但是, 现有方法主要基于多阶段 convex 放松, 只导致关键点的最佳性弱。 本文还提出一个协调的下降方法, 以根据顺序非 convx 近差来将一组DC 函数最小化。 我们的方法反复解决了一种非 convex 的一维子问题, 并且保证它会汇合到一个协调的固定点。 我们证明, 这种新的最佳性条件总是比标准的临界点条件和方向点条件强, 在一种温和的\ text convex 宽松度假设下进行。 对于比较来说, 我们还包含一个基于顺序的 convecionx 近似的下降方法。 当目标功能满足了 {global contracility subilation} 和\ text- liversal- local ad ad road sution rodution subilal subiltition subiltition lading lax lax lax lax lax lax lading. ex ex a ex ex ex ex