Combinatorial Bandits with Relative Feedback
Abstract
We consider combinatorial online learning with subset choices when only relative feedback information from subsets is available, instead of bandit or semi-bandit feedback which is absolute. Specifically, we study two regret minimisation problems over subsets of a finite ground set [n], with subset-wise relative preference information feedback according to the Multinomial logit choice model. In the first setting, the learner can play subsets of size bounded by a maximum size and receives top-m rank-ordered feedback, while in the second setting the learner can play subsets of a fixed size k with a full subset ranking observed as feedback. For both settings, we devise instance-dependent and order-optimal regret algorithms with regret O(nm T) and O(nk T), respectively. We derive fundamental limits on the regret performance of online learning with subset-wise preferences, proving the tightness of our regret guarantees. Our results also show the value of eliciting more general top-m rank-ordered feedback over single winner feedback (m=1). Our theoretical results are corroborated with empirical evaluations.
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