Ranked Prioritization of Groups in Combinatorial Bandit Allocation
Lily Xu, Arpita Biswas, Fei Fang, Milind Tambe

TL;DR
This paper introduces a new combinatorial bandit approach that prioritizes endangered species in wildlife conservation, balancing reward maximization with species vulnerability, and demonstrates significant empirical improvements.
Contribution
It proposes a novel prioritized objective for combinatorial bandits, along with an algorithm that achieves no-regret and improves conservation outcomes.
Findings
Up to 38% improvement in endangered species protection
The algorithm achieves asymptotic no-regret
Applicable to various conservation challenges
Abstract
Preventing poaching through ranger patrols protects endangered wildlife, directly contributing to the UN Sustainable Development Goal 15 of life on land. Combinatorial bandits have been used to allocate limited patrol resources, but existing approaches overlook the fact that each location is home to multiple species in varying proportions, so a patrol benefits each species to differing degrees. When some species are more vulnerable, we ought to offer more protection to these animals; unfortunately, existing combinatorial bandit approaches do not offer a way to prioritize important species. To bridge this gap, (1) We propose a novel combinatorial bandit objective that trades off between reward maximization and also accounts for prioritization over species, which we call ranked prioritization. We show this objective can be expressed as a weighted linear sum of Lipschitz-continuous reward…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Machine Learning and Algorithms · Auction Theory and Applications
