Graph explorer

Nested bandits

In many online decision processes, the optimizing agent is called to choose between large numbers of alternatives with many inherent similarities; in turn, these similarities imply closely correlated losses that may confound standard discrete choice models and bandit algorithms. We study this question in the context of nested bandits, a class of adversarial multi-armed bandit problems where the learner seeks to minimize their regret in the presence of a large number of distinct alternatives with a hierarchy of embedded (non-combinatorial) similarities. In this setting, optimal algorithms based on the exponential weights blueprint (like Hedge, EXP3, and their variants) may incur significant regret because they tend to spend excessive amounts of time exploring irrelevant alternatives with similar, suboptimal costs. To account for this, we propose a nested exponential weights (NEW) algorithm that performs a layered exploration of the learner's set of alternatives based on a nested, step-by-step selection method. In so doing, we obtain a series of tight bounds for the learner's regret showing that online learning problems with a high degree of similarity between alternatives can be resolved efficiently, without a red bus / blue bus paradox occurring.

8 nodes11 linksoverview previewNested bandits
8 nodes11 links
Nested bandits8 visible / 8 total nodes / 17 links
Related contextRelated contextRelated contextWorks onCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipAuthorshipAuthorshipAuthorshipAuthorshipTopic signalTopic signalTopic signalWNested banditspreprint / 2022AMatthieu MartinResearcherAPanayotis MertikopoulosResearcherAThibaud RahierResearcherAHoussam ZenatiResearcherTMachine Learning49008 worksTmath.OC9232 worksTComputer Science and Ga...1864 works
PaperSignal 107 links

Nested bandits

preprint / 2022

Open