Decoupling Corruption and Horizon in Robust Contextual Pricing

Abstract

We study robust repeated contextual pricing, where valuations depends linearly on the features. At each round t∈[T], a seller observes a context, posts a price, and receives only a possibly corrupted binary sale feedback. The seller knows an upper bound C on the number of corrupted rounds. We design an algorithm with regret O(Cd+d2 T), where d is the context dimension. This is the first guarantee for robust contextual pricing that separates the dependence on the corruption budget C from the horizon T, closing the problem left open by Gupta, Guruganesh, Paes Leme, and Schneider (2025).

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