Approximation Algorithms for Non-Submodular Optimization Over Sliding Windows

Yunxin Luo, Chenchen Wu, Chunming Xu
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Abstract

In this paper, the problem we study is how to maximize a monotone non-submodular function with cardinality constraint. Different from the previous streaming algorithms, this paper mainly considers the sliding window model. Based on the concept of diminishing-return ratio [Formula: see text], we propose a [Formula: see text]-approximation algorithm with the memory [Formula: see text], where [Formula: see text] is the ratio between maximum and minimum values of any singleton element of function [Formula: see text]. Then, we improve the approximation ratio to [Formula: see text] through the sub-windows at the expense of losing some memory. Our results generalize the corresponding results for the submodular case.
滑动窗口上非次模优化的近似算法
本文研究了具有基数约束的单调非次模函数的极值问题。与以往的流算法不同,本文主要考虑滑动窗口模型。基于递减回归比的概念[公式:见文],我们提出了一种具有记忆[公式:见文]的[公式:见文]-近似算法,其中[公式:见文]是函数的任意单元素的最大值与最小值之比[公式:见文]。然后,我们通过子窗口提高近似比[公式:见文本],代价是丢失一些内存。我们的结果推广了次模情况下的相应结果。
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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