SOTAVerified

Adaptive Maximization of Pointwise Submodular Functions With Budget Constraint

2016-03-30NeurIPS 2016Unverified0· sign in to hype

Nguyen Viet Cuong, Huan Xu

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

We study the worst-case adaptive optimization problem with budget constraint that is useful for modeling various practical applications in artificial intelligence and machine learning. We investigate the near-optimality of greedy algorithms for this problem with both modular and non-modular cost functions. In both cases, we prove that two simple greedy algorithms are not near-optimal but the best between them is near-optimal if the utility function satisfies pointwise submodularity and pointwise cost-sensitive submodularity respectively. This implies a combined algorithm that is near-optimal with respect to the optimal algorithm that uses half of the budget. We discuss applications of our theoretical results and also report experiments comparing the greedy algorithms on the active learning problem.

Tasks

Reproductions