Bandit-Feedback Online Multiclass Classification: Variants and Tradeoffs
–Neural Information Processing Systems
Consider the domain of multiclass classification within the adversarial online setting. What is the price of relying on bandit feedback as opposed to full information? To what extent can an adaptive adversary amplify the loss compared to an oblivious one? To what extent can a randomized learner reduce the loss compared to a deterministic one? We study these questions in the mistake bound model and provide nearly tight answers.We demonstrate that the optimal mistake bound under bandit feedback is at most O(k) times higher than the optimal mistake bound in the full information case, where k represents the number of labels.
bandit-feedback online multiclass classification, deterministic learner, variant and tradeoff, (4 more...)
Neural Information Processing Systems
May-27-2025, 20:26:23 GMT