Graph explorer

Contextual Blocking Bandits

We study a novel variant of the multi-armed bandit problem, where at each time step, the player observes an independently sampled context that determines the arms' mean rewards. However, playing an arm blocks it (across all contexts) for a fixed and known number of future time steps. The above contextual setting, which captures important scenarios such as recommendation systems or ad placement with diverse users, invalidates greedy solution techniques that are effective for its non-contextual counterpart (Basu et al., NeurIPS19). Assuming knowledge of the context distribution and the mean reward of each arm-context pair, we cast the problem as an online bipartite matching problem, where the right-vertices (contexts) arrive stochastically and the left-vertices (arms) are blocked for a finite number of rounds each time they are matched. This problem has been recently studied in the full-information case, where competitive ratio bounds have been derived. We focus on the bandit setting, where the reward distributions are initially unknown; we propose a UCB-based variant of the full-information algorithm that guarantees a $\mathcal{O}(\log T)$-regret w.r.t. an $α$-optimal strategy i

6 nodes7 linksoverview previewContextual Blocking Bandits
6 nodes7 links
Contextual Blocking Bandits6 visible / 6 total nodes / 13 links
Co-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipAuthorshipWorks onWorks onAuthorshipAuthorshipAuthorshipTopic signalWContextual Blocking Banditspreprint / 2020ASoumya BasuResearcherAOrestis PapadigenopoulosResearcherAConstantine CaramanisResearcherASanjay ShakkottaiResearcherTMachine Learning49008 works
PaperSignal 105 links

Contextual Blocking Bandits

preprint / 2020

Open