4,196 research outputs found
Semidefinite representation of convex hulls of rational varieties
Using elementary duality properties of positive semidefinite moment matrices
and polynomial sum-of-squares decompositions, we prove that the convex hull of
rationally parameterized algebraic varieties is semidefinite representable
(that is, it can be represented as a projection of an affine section of the
cone of positive semidefinite matrices) in the case of (a) curves; (b)
hypersurfaces parameterized by quadratics; and (c) hypersurfaces parameterized
by bivariate quartics; all in an ambient space of arbitrary dimension
Some control design experiments with HIFOO
A new MATLAB package called HIFOO was recently proposed for H-infinity
fixed-order controller design. This document illustrates how some standard
controller design examples can be solved with this software
On convexity of the frequency response of a stable polynomial
In the complex plane, the frequency response of a univariate polynomial is
the set of values taken by the polynomial when evaluated along the imaginary
axis. This is an algebraic curve partitioning the plane into several connected
components. In this note it is shown that the component including the origin is
exactly representable by a linear matrix inequality if and only if the
polynomial is stable, in the sense that all its roots have negative real parts
Semidefinite geometry of the numerical range
The numerical range of a matrix is studied geometrically via the cone of
positive semidefinite matrices (or semidefinite cone for short). In particular
it is shown that the feasible set of a two-dimensional linear matrix inequality
(LMI), an affine section of the semidefinite cone, is always dual to the
numerical range of a matrix, which is therefore an affine projection of the
semidefinite cone. Both primal and dual sets can also be viewed as convex hulls
of explicit algebraic plane curve components. Several numerical examples
illustrate this interplay between algebra, geometry and semidefinite
programming duality. Finally, these techniques are used to revisit a theorem in
statistics on the independence of quadratic forms in a normally distributed
vector
Semidefinite geometry of the numerical range
The numerical range of a matrix is studied geometrically via the cone of
positive semidefinite matrices (or semidefinite cone for short). In particular
it is shown that the feasible set of a two-dimensional linear matrix inequality
(LMI), an affine section of the semidefinite cone, is always dual to the
numerical range of a matrix, which is therefore an affine projection of the
semidefinite cone. Both primal and dual sets can also be viewed as convex hulls
of explicit algebraic plane curve components. Several numerical examples
illustrate this interplay between algebra, geometry and semidefinite
programming duality. Finally, these techniques are used to revisit a theorem in
statistics on the independence of quadratic forms in a normally distributed
vector
On semidefinite representations of plane quartics
This note focuses on the problem of representing convex sets as projections
of the cone of positive semidefinite matrices, in the particular case of sets
generated by bivariate polynomials of degree four. Conditions are given for the
convex hull of a plane quartic to be exactly semidefinite representable with at
most 12 lifting variables. If the quartic is rationally parametrizable, an
exact semidefinite representation with 2 lifting variables can be obtained.
Various numerical examples illustrate the techniques and suggest further
research directions
SDLS: a Matlab package for solving conic least-squares problems
This document is an introduction to the Matlab package SDLS (Semi-Definite
Least-Squares) for solving least-squares problems over convex symmetric cones.
The package is shortly presented through the addressed problem, a sketch of the
implemented algorithm, the syntax and calling sequences, a simple numerical
example and some more advanced features. The implemented method consists in
solving the dual problem with a quasi-Newton algorithm. We note that SDLS is
not the most competitive implementation of this algorithm: efficient, robust,
commercial implementations are available (contact the authors). Our main goal
with this Matlab SDLS package is to provide a simple, user-friendly software
for solving and experimenting with semidefinite least-squares problems. Up to
our knowledge, no such freeware exists at this date
Joint dynamic probabilistic constraints with projected linear decision rules
We consider multistage stochastic linear optimization problems combining
joint dynamic probabilistic constraints with hard constraints. We develop a
method for projecting decision rules onto hard constraints of wait-and-see
type. We establish the relation between the original (infinite dimensional)
problem and approximating problems working with projections from different
subclasses of decision policies. Considering the subclass of linear decision
rules and a generalized linear model for the underlying stochastic process with
noises that are Gaussian or truncated Gaussian, we show that the value and
gradient of the objective and constraint functions of the approximating
problems can be computed analytically
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