4.6 Article

Complexity analysis of interior point algorithms for non-Lipschitz and nonconvex minimization

Journal

MATHEMATICAL PROGRAMMING
Volume 149, Issue 1-2, Pages 301-327

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s10107-014-0753-5

Keywords

Constrained non-Lipschitz optimization; Complexity analysis; Interior point method; First order algorithm; Second order algorithm

Funding

  1. Hong Kong Research Council [PolyU5003/10p]
  2. Hong Kong Polytechnic University Postdoctoral Fellowship Scheme
  3. NSF foundation of China [11101107, 11271099]
  4. US AFOSR [FA9550-12-1-0396]

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We propose a first order interior point algorithm for a class of non-Lipschitz and nonconvex minimization problems with box constraints, which arise from applications in variable selection and regularized optimization. The objective functions of these problems are continuously differentiable typically at interior points of the feasible set. Our first order algorithm is easy to implement and the objective function value is reduced monotonically along the iteration points. We show that the worst-case iteration complexity for finding an scaled first order stationary point is . Furthermore, we develop a second order interior point algorithm using the Hessian matrix, and solve a quadratic program with a ball constraint at each iteration. Although the second order interior point algorithm costs more computational time than that of the first order algorithm in each iteration, its worst-case iteration complexity for finding an scaled second order stationary point is reduced to . Note that an scaled second order stationary point must also be an scaled first order stationary point.

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