Contextual Pandora's Box
CoRR(2022)
摘要
Pandora's Box is a fundamental stochastic optimization problem, where the
decision-maker must find a good alternative while minimizing the search cost of
exploring the value of each alternative. In the original formulation, it is
assumed that accurate distributions are given for the values of all the
alternatives, while recent work studies the online variant of Pandora's Box
where the distributions are originally unknown. In this work, we study
Pandora's Box in the online setting, while incorporating context. At every
round, we are presented with a number of alternatives each having a context, an
exploration cost and an unknown value drawn from an unknown distribution that
may change at every round. Our main result is a no-regret algorithm that
performs comparably well to the optimal algorithm which knows all prior
distributions exactly. Our algorithm works even in the bandit setting where the
algorithm never learns the values of the alternatives that were not explored.
The key technique that enables our result is a novel modification of the
realizability condition in contextual bandits that connects a context to a
sufficient statistic of each alternative's distribution (its "reservation
value") rather than its mean.
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