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In this paper, we study the Combinatorial Pure Exploration problem with the bottleneck reward function (CPE-B) under the fixed-confidence and fixed-budget settings. In CPE-B, given a set of base arms and a collection of subsets of base arms (super arms) following certain combinatorial constraint, a learner sequentially plays (samples) a base arm and observes its random outcome, with the objective of finding the optimal super arm that maximizes its bottleneck value, defined as the minimum expected value among the base arms contained in the super arm. CPE-B captures a variety of practical scenarios such as network routing in communication networks, but it cannot be solved by the existing CPE algorithms since most of them assumed linear reward functions. For CPE-B, we present both fixed-confidence and fixed-budget algorithms, and provide the sample complexity lower bound for the fixed-confidence setting, which implies that our algorithms match the lower bound (within a logarithmic factor) for a broad family of instances. In addition, we extend CPE-B to general reward functions (CPE-G) and propose the first fixed-confidence algorithm for general non-linear reward functions with non-trivial sample complexity. Our experimental results on the top-$k$, path and matching instances demonstrate the empirical superiority of our proposed algorithms over the baselines.
In this paper we study the adversarial combinatorial bandit with a known non-linear reward function, extending existing work on adversarial linear combinatorial bandit. {The adversarial combinatorial bandit with general non-linear reward is an import
Reward-free exploration is a reinforcement learning setting studied by Jin et al. (2020), who address it by running several algorithms with regret guarantees in parallel. In our work, we instead give a more natural adaptive approach for reward-free e
In many real-world tasks, it is not possible to procedurally specify an RL agents reward function. In such cases, a reward function must instead be learned from interacting with and observing humans. However, current techniques for reward learning ma
We present a novel method for learning a set of disentangled reward functions that sum to the original environment reward and are constrained to be independently obtainable. We define independent obtainability in terms of value functions with respect
For many tasks, the reward function is inaccessible to introspection or too complex to be specified procedurally, and must instead be learned from user data. Prior work has evaluated learned reward functions by evaluating policies optimized for the l