THEMATIC PROGRAM AND ACTIVITIES

November 22, 2024

Thematic Year Optimization Visitors to the Fields Institute

Optimization Visitors Seminar Series -Abstracts

Natalia Alexandrov, Research Scientist, Multidisciplinary Optimization Branch, NASA Langley Research Center

Variable-fidelity models in optimization of simulation-based systems

Many physical phenomena in engineering design can be described by computational models of high physical fidelity or numerical accuracy.
Optimization with high-fidelity simulations gives rise to large-scale nonlinear programming problems (NLP) due to the large number of state variables and the associated computational cost of solving (coupled) differential equations that govern the behavior of the system.
Straightforward use of high-fidelity models, such as the Navier-Stokes equations or those based on fine computational meshes, in iterative procedures can be prohibitively expensive. We discuss a first-order, variable-fidelity model management scheme for solving optimization problems whose function evaluations involve outputs of simulations. The approach reduces the cost of optimization by systematically using lower-fidelity models or surrogates, with occasional recourse to high-fidelity computations for model re-calibration. Convergence to high-fidelity results is maintained. We discuss computation with variable-resolution and variable physical fidelity models, as well as a variety of response surface approximations.


Miguel F. Anjos, Institut für Informatik, Universität zu Köln
and Tony Vannelli, Univ. of Waterloo

A New Mathematical Programming Framework for Facility Layout Design

We present a new framework for efficiently finding competitive solutionsfor the facility layout problem. This framework is based on thecombination of two new mathematical programming models. The first model isa convex relaxation of the layout problem and is intended to find goodstarting points for the iterative algorithm used to solve the second model. The second model is an exact formulation of the facility layout problem as a non-convex mathematical program with equilibrium constraints (MPEC). Aspect ratio constraints, which are frequently used in facility layout methods to restrict the occurrence of overly long and narrow departments in the computed layouts, are easily incorporated into this new framework. We present computational results showing that both models, and hence the complete framework, can be solved efficiently using widely available optimization software. This important feature of the new framework implies that it can be used to find competitive layouts with relatively little computational effort. This is advantageous for a user who wishes to consider several competitive layouts rather than simply using the mathematically optimal layout.


Heinz Bauschke, University of Guelph

The method of reflection-projections for convex feasibility problems with an obtuse cone.

The convex feasibility problem consists of finding a point in the intersection of closed convex sets. The classical method of cyclic projections approximates a solution by projecting cyclically onto the constraint sets.

We consider the case when one of the constraints is an obtuse cone, e.g., the nonnegative orthant or the positive semidefinite matrices. We obtain a convergence result when the projection onto the cone is replaced by the reflection. Numerical experiments suggest that this approach is faster than the method of cyclic projections. We also comment on the inconsistent case.

Based on joint work with Serge Kruk (Oakland University).


Richard J. Caron, Dean of Science, Department of Mathematics and Statistics, University of Windsor

Preprocessing Mathematical Programmes with Random Sampling


Amr El-Bakry, Optimization Technology, ExxonMobil Upstream Research Company

Incorporating Boundary Information into the Search Direction

Optimization methods for inequality constrained optimization problems attempts to incorporate constraints' information into the search direction in a variety of ways. Interior-point methods incorporate constraint information by including a barrier term or by using the complementarity equations in the KKT system. In this talk a different approach will be presented to build constraints' information directly in by the use of "nonlinear scaling". The resulting first and second order search directions will be discussed and preliminary numerical results will be presented.


Robert M. Freund, MIT Sloan School of Management

Two Topics on the Complexity of Convex Optimization, one Computational and one Theoretical

We consider the following quite general convex optimization
problem format: $$\begin{array}{lclr} G_d: & {\rm minimize}_x & c^{T}x
\\ & \mbox{ s.t. } & Ax=b\\ & & x \in P, \\
\end{array}$$
\noindent where $P$ is a closed convex set, not necessarily a cone. Linear optimization is a special case of this format in the case when $P$ is polyhedral, and a modern complexity theory for linear optimization has been developed based on a notion of condition number $C(d)$ for the data $d=(A,b,c)$ for $G_d$. We develop some computational experience and test the practical relevance of this condition number theory, as applied to problem instances that one might encounter in practice, using the NETLIB suite of LP problem instances. We present empirical evidence that indicates that 42% of the variation in IPM iterations among the NETLIB suite problem instances is accounted for by log C(d) of the problem instances after pre-processing.

Our theoretical work concerns the complexity of convex optimization using geometry-based measures rather than algebraic or data-based measures for obtaining complexity bounds. We bound the complexity of computing an almost-optimal solution of $G_d$ in terms of natural geometry-based measures of the feasible region and the level-set of almost-optimal solutions, relative to a given {\em reference point} $x^r$ that might be close to the feasible region and/or the almost-optimal level set.


Hugo Lara, research visitor at University of Waterloo

Condition and Complexity Measures for Infeasibility Certificates of Systems of Linear Inequalities and Their Sensitivity Analysis

In this work we introduce a new condition measure $\xi(A)$ for the linear feasibility problem. This measure is based on the signing
structure of the subspaces generated by the matrix $A$ that defines the problem. We consider two other condition numbers
$\bar\chi(A)$ and $\sigma(A)$, studied by Vavasis and Ye \ref{} in the setting of interior point algorithms in linear programming. In
\ref{tuncel} Tun\c cel studied the connection between $\bar\chi(A)$ and $\sigma(A)$ by exploiting their signing structure, and pointed at
the existence of families of condition numbers (as $\xi(A)$)``between'' them. We provide a dual characterization of
$\xi(A)$ and use it to study infeasibility detection via a constructive proof of a Helly-type theorem, in the same way that
Ho and Tun\c cel \ref{ho-tuncel} do using $\bar\chi(A)$. We also provide characterizations of $\bar\chi(A)$ when different norms are used. By exploiting the signing structure and it connection with oriented matroids, we deal with sensitivity analysis of
$\bar\chi_1(A)$, $\sigma(A)$ and $\xi(A)$. We give geometric and algebraic interpretations of perturbations of the matrix $A$ that
preserve the continuity of such condition numbers. Finally, generalizations to convex cones and relationship with Renegar's condition measure are provided.


Jean Bernard Lasserre, Research Director, CNRS

A framework for discrete duality

We consider the standard continuous and discrete linear programs P_1 -> max {c'x | Ax <=b; x >=0}and P_2->max {c'x | Ax <=b; x integer}"

as well as their respective "integral "and "counting" versions Q_1-> int_{Ax<=b;x>=0} exp{c'x} dx and Q_2 -> sum_{Ax<=b;x integer}
exp{c'x}
There is a well known duality for P_1.
Perhaps less known are also dualities for Q_1 and Q_2;


Marcel Mongeau, Université Paul Sabatier
and A.R. Conn, IBM, Yorktown Heights, NY

Partial separability, graph theory, and global optimization

We present a way of exploiting partial separability in particular global optimization problems. The aim is to reduce significantly the
dimension of the search space. The procedure relies on graph theory tools such as graph partitioning with node separators. We illustrate
the idea on a distance geometry problem which arise in the interpretation of nuclear magnetic resonance data and in the determination of protein structures.


Franz Rendl, Director, Research Group Operations Research, Universitat Klagenfurt

Bundle methods in combinatorial optimization

Several hard combinatorial optimization problems, such as Max-Cut or Quadratic Assignment can be approximated nicely by Semidefinite Programs (SDP). These relaxations can be further improved by including combinatorial cutting planes, resulting in huge SDPs.

We use the bundle method from nonsmooth optimization to tackle these SDPs. The idea consists in identifying a basic model, and taking the Lagrange dual of the remaining constraints.

We discuss some practical issues like finding good primal solutions, and identifying important cutting planes.

Finally, we present computational results of this approach applied to the max-cut relaxation given by the basic SDP model intersected with the metric polytope, and SDP relaxations of the Quadratic Assignment Problem.


Michael Todd, School of Operations Research, Cornell University

Detecting infeasibility in interior-point methods for optimization.

Interior-point methods are both theoretically and practically efficient algorithms for solving linear programming problems and certain convex extensions. However, they seem to be less flexible than the well-known simplex method: in particular, they do not deal as gracefully with infeasible or unbounded (dual infeasible) problems.
One elegant way to produce either an optimal solution or a certificate of infeasibility is to embed the original problem in a larger homogeneous self-dual problem, but this seems less efficient computationally. Most implementations use so-called infeasible-interior-point methods, which focus exclusively on attaining feasibility and optimality. However, such methods are surprisingly successful in detecting infeasibility. We show that, on infeasible problems, they can be viewed as implicitly searching for an infeasibility certificate.


Levant Tuncel, University of Waterloo

Geometry of Homogeneous Convex Cones, Duality Mapping, and Optimal Self-Concordant Barriers

I will discuss homogeneous convex cones. We first characterize the extreme rays of such cones in the context of their primal
construction (due to Vinberg) and also in the context of their dual construction (due to Rothaus). Then, using these results,
we prove that every homogeneous cone is facially exposed. We provide an alternative proof of a result of G\"uler and Tun\c{c}el that the Siegel rank of a symmetric cone is equal to its Carath\'eodory number. Our proof does not use the Jordan-vonNeumann-Wigner
characterization of the symmetric cones but it easily follows from the primal construction of the homogeneous cones and
our results on the geometry of homogeneous cones in primal and dual forms. We briefly discuss the duality mapping in the context
of automorphisms of convex cones and prove that the duality mapping is not an involution on certain self-dual cones.

This is based on joint work with Van Anh Truong.


Henry Wolkowicz, University of Waterloo, Department of Combinatorics and Optimization,
and
Charles Fortin McGill University, Department of Mathematics and Statistics,

A Survey of the Trust Region Subproblem Within a Semidefinite Programming Framework

The trust region subproblem (the minimization of a quadraticobjective subject to one quadratic constraint and denoted TRS) has many applications in diverse areas, e.g. function minimization,sequential quadratic programming,regularization, ridge regression, and discrete optimization.
In particular, it is used to determine the step intrust region algorithms for function minimization. Trust region algorithmsare popular due to their strong convergence properties. However, one ofthe drawbacks has been the inability to exploit sparsity as well as the difficulty in dealing with the so-called hard case. These concerns have been addressed by recent advances in the theory andalgorithmic development.

This talk provides an in depth study of TRS and its propertiesas well as a survey of recent advances. This is done using semidefiniteprogramming (SDP) and the modern primal-dualapproaches as a unifying framework.
The SDP framework solves TRS efficiently and robustly; and itshows that TRS is always a well-posedproblem, i.e. the optimal value and an optimum can be calculated to agiven tolerance. This is contrary to statements in the literature which label TRS ill-posed or degenerate, if the so-called hardcase holds. We provide both theoretical and empiricalevidence to illustrate the strength of the SDP and duality approach. In particular, this includes new insights into handling the hard case.


Yin Zhang, Department of Computational and Applied Mathematics, Rice University

A Global Optimization Problem in Computational Biology: Molecular Replacement Problem

We introduce a global optimization problem in computational biology: the Molecular Replacement Problem, which is a critical step in determining protein structures through X-ray crystallography. We will report our approaches and results in helping solve this interesting problem.

 

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