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   	<dc:title>One-sided Frank-Wolfe algorithms for saddle problems</dc:title>
   	<dc:creator>Kolmogorov, Vladimir</dc:creator>
   	<dc:creator>Pock, Thomas</dc:creator>
   	<dc:description>We study a class of convex-concave saddle-point problems of the form minxmaxy⟨Kx,y⟩+fP(x)−h∗(y) where K is a linear operator, fP is the sum of a convex function f with a Lipschitz-continuous gradient and the indicator function of a bounded convex polytope P, and h∗ is a convex (possibly nonsmooth) function. Such problem arises, for example, as a Lagrangian relaxation of various discrete optimization problems. Our main assumptions are the existence of an efficient linear minimization oracle (lmo) for fP and an efficient proximal map for h∗ which motivate the solution via a blend of proximal primal-dual algorithms and Frank-Wolfe algorithms. In case h∗ is the indicator function of a linear constraint and function f is quadratic, we show a O(1/n2) convergence rate on the dual objective, requiring O(nlogn) calls of lmo. If the problem comes from the constrained optimization problem minx∈Rd{fP(x)|Ax−b=0} then we additionally get bound O(1/n2) both on the primal gap and on the infeasibility gap. In the most general case, we show a O(1/n) convergence rate of the primal-dual gap again requiring O(nlogn) calls of lmo. To the best of our knowledge, this improves on the known convergence rates for the considered class of saddle-point problems. We show applications to labeling problems frequently appearing in machine learning and computer vision.</dc:description>
   	<dc:date>2021</dc:date>
   	<dc:type>info:eu-repo/semantics/conferenceObject</dc:type>
   	<dc:type>doc-type:conferenceObject</dc:type>
   	<dc:type>text</dc:type>
   	<dc:type>http://purl.org/coar/resource_type/c_5794</dc:type>
   	<dc:identifier>https://research-explorer.ista.ac.at/record/10552</dc:identifier>
   	<dc:source>Kolmogorov V, Pock T. One-sided Frank-Wolfe algorithms for saddle problems. In: &lt;i&gt;38th International Conference on Machine Learning&lt;/i&gt;. ; 2021.</dc:source>
   	<dc:language>eng</dc:language>
   	<dc:relation>info:eu-repo/semantics/altIdentifier/arxiv/2101.12617</dc:relation>
   	<dc:rights>info:eu-repo/semantics/openAccess</dc:rights>
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