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Variational Analysis of Composite Models with Applications to Continuous Optimization

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TLDR
In this article, a comprehensive study of composite models in variational analysis and optimization is presented, with the main attention paid to the new and rather large class of fully subamenable compositions, and the underlying theme of the study is a systematical replacement of conventional metric regularity and related requirements by much weaker metric subregulatity ones.
Abstract
The paper is devoted to a comprehensive study of composite models in variational analysis and optimization the importance of which for numerous theoretical, algorithmic, and applied issues of operations research is difficult to overstate. The underlying theme of our study is a systematical replacement of conventional metric regularity and related requirements by much weaker metric subregulatity ones that lead us to significantly stronger and completely new results of first-order and second-order variational analysis and optimization. In this way we develop extended calculus rules for first-order and second-order generalized differential constructions with paying the main attention in second-order variational theory to the new and rather large class of fully subamenable compositions. Applications to optimization include deriving enhanced no-gap second order optimality conditions in constrained composite models, complete characterizations of the uniqueness of Lagrange multipliers and strong metric subregularity of KKT systems in parametric optimization, etc.

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Parabolic Regularity in Geometric Variational Analysis

Abstract: The paper is mainly devoted to systematic developments and applications of geometric aspects of second-order variational analysis that are revolved around the concept of parabolic regularity of sets. This concept has been known in variational analysis for more than two decades while being largely underinvestigated. We discover here that parabolic regularity is the key to derive new calculus rules and computation formulas for major second-order generalized differential constructions of variational analysis in connection with some properties of sets that go back to classical differential geometry and geometric measure theory. The established results of second-order variational analysis and generalized differentiation, being married to the developed calculus of parabolic regularity, allow us to obtain novel applications to both qualitative and quantitative/numerical aspects of constrained optimization including second-order optimality conditions, augmented Lagrangians, etc. under weak constraint qualifications.
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Generalized Newton Algorithms for Tilt-Stable Minimizers in Nonsmooth Optimization

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Local Convergence Analysis of Augmented Lagrangian Methods for Piecewise Linear-Quadratic Composite Optimization Problems

TL;DR: In this paper, the second-order sufficient condition for local optimality has been shown to justify linear convergence of the primal-dual sequence generated by the augmented Lagrangian method for piecewise linear-quadratic composite optimization problems.
References
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Error Bounds and Hölder Metric Subregularity

TL;DR: In this article, the Holder setting of the metric subregularity property of set-valued mappings between general metric or Banach/Asplund spaces is investigated in the framework of the theory of error bounds for extended real-valued functions of two variables.
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A Calculus of EPI-Derivatives Applicable to Optimization

TL;DR: In this paper, a calculus of epi- derivatives of a convex function and a smooth mapping with certain qualifications is developed, and classes of "amenable" functions are introduced to mark out territory in which nonsmooth analysis can be carried out.
Book ChapterDOI

Characterizations of Lipschitzian Stability in Nonlinear Programming

TL;DR: In this paper, the authors analyzed Lipschitz and upper-Lipschnitz behavior of their solutions and stationary points under general perturbations, and used facts from a diversity of sources to obtain new characterizations of several local stability properties.
Journal ArticleDOI

Characterization of the Robust Isolated Calmness for a Class of Conic Programming Problems

TL;DR: In this paper, the authors studied the robust isolated calmness of the Karush-Kuhn-Tucker (KKT) solution mapping for a large class of interesting conic programming problems at a locally optimal solution.
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Characterization of the Robust Isolated Calmness for a Class of Conic Programming Problems

TL;DR: Under the Robinson constraint qualification, it is shown that the Karush--Kuhn--Tucker solution mapping is robustly isolated calm if and only if both the strict Robinson constraint qualifications and the second order sufficient condition hold.
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