Directional Optimism for Safe Linear Bandits
The safe linear bandit problem is a version of the classical stochastic linear bandit problem where the learner's actions must satisfy an uncertain constraint at all rounds. Due its applicability to many real-world settings, this problem has received considerable attention in recent years. By l...
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Zusammenfassung: | The safe linear bandit problem is a version of the classical stochastic
linear bandit problem where the learner's actions must satisfy an uncertain
constraint at all rounds. Due its applicability to many real-world settings,
this problem has received considerable attention in recent years. By leveraging
a novel approach that we call directional optimism, we find that it is possible
to achieve improved regret guarantees for both well-separated problem instances
and action sets that are finite star convex sets. Furthermore, we propose a
novel algorithm for this setting that improves on existing algorithms in terms
of empirical performance, while enjoying matching regret guarantees. Lastly, we
introduce a generalization of the safe linear bandit setting where the
constraints are convex and adapt our algorithms and analyses to this setting by
leveraging a novel convex-analysis based approach. |
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DOI: | 10.48550/arxiv.2308.15006 |