Online Submodular Maximization with Free Disposal

T-H. Hubert Chan, Zhiyi Huang, S. Jiang, N. Kang, Zhihao Gavin Tang
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引用次数: 8

Abstract

We study the online submodular maximization problem with free disposal under a matroid constraint. Elements from some ground set arrive one by one in rounds, and the algorithm maintains a feasible set that is independent in the underlying matroid. In each round when a new element arrives, the algorithm may accept the new element into its feasible set and possibly remove elements from it, provided that the resulting set is still independent. The goal is to maximize the value of the final feasible set under some monotone submodular function, to which the algorithm has oracle access. For k-uniform matroids, we give a deterministic algorithm with competitive ratio at least 0.2959, and the ratio approaches 1/α∞≈ 0.3178 as k approaches infinity, improving the previous best ratio of 0.25 by Chakrabarti and Kale (IPCO 2014), Buchbinder et al. (SODA 2015), and Chekuri et al. (ICALP 2015). We also show that our algorithm is optimal among a class of deterministic monotone algorithms that accept a new arriving element only if the objective is strictly increased. Further, we prove that no deterministic monotone algorithm can be strictly better than 0.25-competitive even for partition matroids, the most modest generalization of k-uniform matroids, matching the competitive ratio by Chakrabarti and Kale (IPCO 2014) and Chekuri et al. (ICALP 2015). Interestingly, we show that randomized algorithms are strictly more powerful by giving a (non-monotone) randomized algorithm for partition matroids with ratio 1/α∞≈ 0.3178.
在线子模块最大化与自由处置
研究了在矩阵约束下具有自由处理的在线子模最大化问题。该算法维护一个独立于底层矩阵的可行集。在每轮中,当一个新元素到达时,算法可能会接受新元素进入其可行集,并可能从中移除元素,前提是结果集仍然是独立的。目标是在某一单调子模函数下使最终可行集的值最大化,该算法对该函数具有oracle访问权限。对于k-均匀拟矩阵,我们给出了一个竞争比至少为0.2959的确定性算法,当k趋近于无穷时,竞争比趋近于1/α∞≈0.3178,改进了Chakrabarti和Kale (IPCO 2014)、Buchbinder等(SODA 2015)和Chekuri等(ICALP 2015)之前的最佳竞争比0.25。我们还证明了我们的算法在一类确定性单调算法中是最优的,这些算法只在目标严格增加时才接受新的到达元素。此外,我们证明,即使对于划分拟阵(k-均匀拟阵的最适度推广),也没有确定性单调算法可以严格优于0.25竞争比,与Chakrabarti和Kale (IPCO 2014)和Chekuri等人(ICALP 2015)的竞争比相匹配。有趣的是,我们通过给出比率为1/α∞≈0.3178的划分矩阵的(非单调)随机化算法,证明了随机化算法严格地更强大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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