Geometric Algorithms for k-NN Poisoning
Abstract
We propose a label poisoning attack on geometric data sets against k-nearest neighbor classification. We provide an algorithm that can compute an n-additive approximation of the optimal poisoning in n· 22O(d+k/) time for a given data set X ∈ Rd, where |X| = n. Our algorithm achieves its objectives through the application of multi-scale random partitions.
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