2022
DOI: 10.48550/arxiv.2201.00724
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Submodular Maximization with Limited Function Access

Abstract: We consider a class of submodular maximization problems in which decision-makers have limited access to the objective function. We explore scenarios where the decisionmaker can observe only pairwise information, i.e., can evaluate the objective function on sets of size two. We begin with a negative result that no algorithm using only k-wise information can guarantee performance better than k/n. We present two algorithms that utilize only pairwise information about the function and characterize their performanc… Show more

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