Introduces bounded fake data injection attacks that force a class of stochastic bandit algorithms to select a target arm in nearly all rounds at sublinear attack cost.
When are linear stochastic bandits attackable? InInternational Conference on Machine Learning, pages 23254–23273
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Practical Adversarial Attacks on Stochastic Bandits via Fake Data Injection
Introduces bounded fake data injection attacks that force a class of stochastic bandit algorithms to select a target arm in nearly all rounds at sublinear attack cost.