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arxiv: 2007.15220 · v1 · pith:S5GKD2J5new · submitted 2020-07-30 · 💻 cs.LG · cs.CC· cs.DS· stat.ML

The Complexity of Adversarially Robust Proper Learning of Halfspaces with Agnostic Noise

classification 💻 cs.LG cs.CCcs.DSstat.ML
keywords learningadversariallyagnosticcasecomplexitycomputationalcomputationallyhalfspaces
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We study the computational complexity of adversarially robust proper learning of halfspaces in the distribution-independent agnostic PAC model, with a focus on $L_p$ perturbations. We give a computationally efficient learning algorithm and a nearly matching computational hardness result for this problem. An interesting implication of our findings is that the $L_{\infty}$ perturbations case is provably computationally harder than the case $2 \leq p < \infty$.

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