A single-phase, proximal path-following framework
Quoc Tran-Dinh, Anastasios Kyrillidis, Volkan Cevher

TL;DR
This paper introduces a novel single-phase proximal path-following algorithm for constrained convex problems, effectively handling non-smooth objectives and improving convergence without initial phase requirements.
Contribution
It presents a new proximal, path-following framework that achieves optimal iteration complexity without the need for an initial phase, even with inexact proximal-Newton directions.
Findings
Achieves $ ext{O}(rac{1}{ ext{sqrt}( u)} ext{log}(1/ ext{epsilon}))$ iteration complexity.
Handles non-smooth objectives via proximal operators without dimension lifting.
Demonstrates effectiveness through three numerical examples.
Abstract
We propose a new proximal, path-following framework for a class of constrained convex problems. We consider settings where the nonlinear---and possibly non-smooth---objective part is endowed with a proximity operator, and the constraint set is equipped with a self-concordant barrier. Our approach relies on the following two main ideas. First, we re-parameterize the optimality condition as an auxiliary problem, such that a good initial point is available; by doing so, a family of alternative paths towards the optimum is generated. Second, we combine the proximal operator with path-following ideas to design a single-phase, proximal, path-following algorithm. Our method has several advantages. First, it allows handling non-smooth objectives via proximal operators; this avoids lifting the problem dimension in order to accommodate non-smooth components in optimization. Second, it consists of…
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