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arxiv: 1003.2751 · v1 · submitted 2010-03-14 · 💻 cs.LG · cs.CR

Near-Optimal Evasion of Convex-Inducing Classifiers

classification 💻 cs.LG cs.CR
keywords classifiersadversaryconvex-inducingcostnear-minimalactivitiesalgorithmsallows
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Classifiers are often used to detect miscreant activities. We study how an adversary can efficiently query a classifier to elicit information that allows the adversary to evade detection at near-minimal cost. We generalize results of Lowd and Meek (2005) to convex-inducing classifiers. We present algorithms that construct undetected instances of near-minimal cost using only polynomially many queries in the dimension of the space and without reverse engineering the decision boundary.

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