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dc.contributor.authorBelloni, Alexandre
dc.contributor.authorFreund, Robert M
dc.contributor.authorVempala, Santosh
dc.date.accessioned2007-04-27T19:11:47Z
dc.date.available2007-04-27T19:11:47Z
dc.date.issued2007-04-27T19:11:47Z
dc.identifier.urihttp://hdl.handle.net/1721.1/37304
dc.description.abstractThe classical perceptron algorithm is an elementary row-action/relaxation algorithm for solving a homogeneous linear inequality system Ax > 0. A natural condition measure associated with this algorithm is the Euclidean width T of the cone of feasible solutions, and the iteration complexity of the perceptron algorithm is bounded by 1/T^2, see Rosenblatt 1962. Dunagan and Vempala have developed a re-scaled version of the perceptron algorithm with an improved complexity of O(n ln(1/T)) iterations (with high probability), which is theoretically efficient in T, and in particular is polynomial-time in the bit-length model. We explore extensions of the concepts of these perceptron methods to the general homogeneous conic system Ax is an element of a set int K where K is a regular convex cone. We provide a conic extension of the re-scaled perceptron algorithm based on the notion of a deep-separation oracle of a cone, which essentially computes a certificate of strong separation. We give a general condition under which the re-scaled perceptron algorithm is itself theoretically efficient; this includes the cases when K is the cross-product of half-spaces, second-order cones, and the positive semi-definite cone.en
dc.language.isoen_USen
dc.relation.ispartofseriesMIT Sloan School of Management Working Paperen
dc.relation.ispartofseries4627-06en
dc.subjectconvex coneen
dc.subjectperceptronen
dc.subjectconic systemen
dc.subjectseparation oracleen
dc.titleAn Efficient Re-Scaled Perceptron Algorithm for Conic Systemsen
dc.typeWorking Paperen


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