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Adaptive Maximization of Pointwise Submodular Functions With Budget Constraint

机译:具有预算约束的点向子模函数的自适应最大化

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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.
机译:我们研究了具有预算约束的最坏情况自适应优化问题,该问题对于在人工智能和机器学习中的各种实际应用进行建模很有用。我们针对具有模块化和非模块化成本函数的此问题,研究贪婪算法的近最优性。在这两种情况下,我们证明如果效用函数分别满足逐点次模量和逐点成本敏感子模量,则两个简单的贪心算法并非最佳,但两者之间的最佳接近最佳。这意味着相对于使用一半预算的最佳算法而言,组合算法几乎是最佳的。我们讨论了理论结果的应用,还报告了比较贪婪算法在主动学习问题上的实验。

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