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Nonlinear Knowledge in Kernel Machines
Professor Olvi Mangasarian
and
Edward Wild
Department of Mathematics
University of California, San Diego
Abstract
Prior knowledge over arbitrary general sets is incorporated into
nonlinear support vector machine approximation and classification
problems as linear constraints of a linear program. The key tool in
this incorporation is a theorem of the alternative for convex
functions that converts nonlinear prior knowledge implications into
linear inequalities
without the need to kernelize these implications. Effectiveness of the
proposed formulation is demonstrated on synthetic examples and on
important breast cancer prognosis problems. All these problems
exhibit marked improvements upon the introduction of prior knowledge
over nonlinear kernel approaches that do not utilize
such knowledge.
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