The Scope of Linear Matrix Inequality Techniques
Presenter
November 5, 2015
Keywords:
- Semi-Definite Programming, optimization, Linear Matrix Inequality, Convex Matrix Inequalities
Abstract
One of the main developments in optimization over the last 20 years is
Semi-Definite Programming. It treats problems which can be expressed as a
Linear Matrix Inequality (LMI). Any such problem is necessarily convex,
so the determining the scope and range of applicability comes down to the
question:
How much more restricted are LMIs than Convex Matrix Inequalities?
The talk gives a survey of what is known on this issue and will be
accessible to about anybody.
There are several main branches of this pursuit.
First there are two fundamentally different classes of linear systems
problems. Ones whose statements do depend on the dimension of the
system "explicitly" and ones whose statements do not.
Dimension dependent systems problems lead to traditional
semialgebraic geometry problems, while dimension free systems
problems lead directly to problems in matrix unknowns and a new area
which might be called noncommutative semialgebraic geometry.
Most classic problems of control lead to noncommutative problems.
In this talk after laying out the distinctions above
we give results and conjectures on the answer to
the LMI vs convexity question.