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  <name>CSLS Workshop on Optimization of Eigenvalues</name>
  <metadata>
  <md:version>1.4</md:version>
  <md:created>2005/03/31 09:43:06 US/Central</md:created>
  <md:revised>2005/03/31 20:25:16.164 US/Central</md:revised>
  <md:authorlist>
      <md:author id="vontobel">
      <md:firstname>Pascal</md:firstname>
      <md:othername>Olivier</md:othername>
      <md:surname>Vontobel</md:surname>
      <md:email>vontobel@ece.wisc.edu</md:email>
    </md:author>
  </md:authorlist>

  <md:maintainerlist>
    <md:maintainer id="vontobel">
      <md:firstname>Pascal</md:firstname>
      <md:othername>Olivier</md:othername>
      <md:surname>Vontobel</md:surname>
      <md:email>vontobel@ece.wisc.edu</md:email>
    </md:maintainer>
  </md:maintainerlist>
  
  <md:keywordlist>
    <md:keyword>eigenvalue</md:keyword>
    <md:keyword>optimization</md:keyword>
  </md:keywordlist>

  <md:abstract/>
</metadata>

  <content>

    <section id="overview">
      <name>
        Workshop Overview
      </name>

      <para id="abstract">

        A wealth of interesting problems in engineering, control, finance, and
        statistics can be formulated as optimization problems involving the
        eigenvalues of a matrix function. These very challenging problems
        cannot usually be solved via traditional techniques for nonlinear
        optimization. However, they have been addressed in recent years by a
        combination of deep, elegant mathematical analysis and ingenious
        algorithmic and software development. In this workshop, three leading
        experts will discuss applications along with the theoretical and
        algorithmic aspects of this fascinating topic.

      </para>

      <list id="talks">

        <item>
          Go to the talk on
          <link src="#boyd_title">
            Semidefinite Programming</link>
          (by Prof. Stephen Boyd)
        </item>
      
        <item>
          Go to the talk on
          <link src="#lewis_title">
            Eigenvalue Optimization:
            Symmetric versus Nonsymmetric Matrices</link>
          (by Prof. Adrian Lewis)
        </item>
  
        <item>
          Go to the talk on
          <link src="#overton_title">
            Local Optimization of Stability Functions
            in Theory and Practice</link>
            (by Prof. Michael Overton)
        </item>

      </list>

      <para id="remark">
        Remark: This workshop was held on October 7, 2004 as part of the
        <link src="http://cnx.rice.edu/content/col10277/latest/">
          Computational Sciences Lecture Series (CSLS)</link>
        at the University of Wisconsin-Madison.
      </para>
    </section>

    <section id="boyd_title">

      <name>
        Semidefinite Programming
      </name>

      <para id="boyd_affiliation">
        By
        <link src="http://www.stanford.edu/%7Eboyd/">
          Prof. Stephen Boyd</link>
          (Stanford University,
           USA)
      </para>

      <para id="boyd_media">

        <link src="boyd_csls_041007.pdf">
          Slides of talk [PDF]</link> (Not yet available.)
        |
        <link src="mms://www.cae.wisc.edu/video/ece/CSLS/CSLS7.wmv">
          Video [WMV]</link> (Not yet available.)
      </para>

      <para id="boyd_abstract">

        ABSTRACT: In semidefinite programming (SDP) a linear function is
        minimized subject to the constraint that the eigenvalues of a
        symmetric matrix are nonnegative. While such problems were studied in
        a few papers in the 1970s, the relatively recent development of
        efficient interior-point algorithms for SDP has spurred research in a
        wide variety of application fields, including control system analysis
        and synthesis, combinatorial optimization, circuit design, structural
        optimization, finance, and statistics. In this overview talk I will
        cover the basic properties of SDP, survey some applications, and give
        a brief description of interior-point methods for their solution.

      </para>

    </section>

    <section id="lewis_title">

      <name>
        Eigenvalue Optimization: Symmetric versus Nonsymmetric Matrices
      </name>

      <para id="lewis_affiliation">
        By
        <link src="http://www.orie.cornell.edu/%7Easlewis/">
          Prof. Adrian Lewis</link>
        (Cornell University,
         USA)
      </para>

      <para id="lewis_media">

        <link src="lewis_csls_041007.pdf">
          Slides of talk [PDF]</link> (Not yet available.)
        |
        <link src="mms://www.cae.wisc.edu/video/ece/CSLS/CSLS8.wmv">
          Video [WMV]</link> (Not yet available.)

      </para>

      <para id="lewis_abstract">   

        ABSTRACT: The eigenvalues of a symmetric matrix are Lipschitz
        functions with elegant convexity properties, amenable to efficient
        interior-point optimization algorithms. By contrast, for example, the
        spectral radius of a nonsymmetric matrix is neither a convex function,
        nor Lipschitz. It may indicate practical behaviour much less reliably
        than in the symmetric case, and is more challenging for numerical
        optimization (see Overton's talk). Nonetheless, this function does
        share several significant variational-analytic properties with its
        symmetric counterpart. I will outline these analogies, discuss the
        fundamental idea of Clarke regularity, highlight its usefulness in
        nonsmooth chain rules, and discuss robust regularizations of functions
        like the spectral radius. (Including joint work with James Burke and
        Michael Overton.)

      </para>

    </section>

    <section id="overton_title">

      <name>
        Local Optimization of Stability Functions in Theory and Practice
      </name>

      <para id="overton_affiliation">
        By
        <link src="http://www.cs.nyu.edu/cs/faculty/overton/">
          Prof. Michael Overton</link>
        (Courant Institute of Mathematical Sciences
         New York University,
         USA)
      </para>

      <para id="overton_media">

        <link src="overton_csls_041007.pdf">
          Slides of talk [PDF]</link> (Not yet available.)
        |
        <link src="mms://www.cae.wisc.edu/video/ece/CSLS/CSLS9.wmv">
          Video [WMV]</link> (Not yet available.)

      </para>

      <para id="overton_abstract">

        ABSTRACT: Stability measures arising in systems and control are
        typically nonsmooth, nonconvex functions. The simplest examples are
        the abscissa and radius maps for polynomials (maximum real part, or
        modulus, of the roots) and the analagous matrix measures, the spectral
        abscissa and radius (maximum real part, or modulus, of the
        eigenvalues). More robust measures include the distance to instability
        (smallest perturbation that makes a polynomial or matrix unstable) and
        the $\epsilon$ pseudospectral abscissa or radius of a matrix (maximum
        real part or modulus of the $\epsilon$\-pseudospectrum). When
        polynomials or matrices depend on parameters it is natural to consider
        optimization of such functions. We discuss an algorithm for locally
        optimizing such nonsmooth, nonconvex functions over parameter space
        and illustrate its effectiveness, computing, for example, locally
        optimal low-order controllers for challenging problems from the
        literature.

        We also give an overview of variational analysis of stabiity functions
        in polynomial and matrix space, expanding on some of the issues
        discussed in Lewis's talk. (Joint work with James V. Burke and Adrian
        S. Lewis.)

      </para>

    </section>

  </content>
  
</document>
