Streaming algorithms for robust submodular maximization

2021 ◽  
Vol 290 ◽  
pp. 112-122
Author(s):  
Ruiqi Yang ◽  
Dachuan Xu ◽  
Yukun Cheng ◽  
Yishui Wang ◽  
Dongmei Zhang
2021 ◽  
pp. 27-38
Author(s):  
Canh V. Pham ◽  
Quang C. Vu ◽  
Dung K. T. Ha ◽  
Tai T. Nguyen

Author(s):  
Jing Tang ◽  
Xueyan Tang ◽  
Andrew Lim ◽  
Kai Han ◽  
Chongshou Li ◽  
...  

Monotone submodular maximization with a knapsack constraint is NP-hard. Various approximation algorithms have been devised to address this optimization problem. In this paper, we revisit the widely known modified greedy algorithm. First, we show that this algorithm can achieve an approximation factor of 0.405, which significantly improves the known factors of 0.357 given by Wolsey and (1-1/e)/2\approx 0.316 given by Khuller et al. More importantly, our analysis closes a gap in Khuller et al.'s proof for the extensively mentioned approximation factor of (1-1/\sqrte )\approx 0.393 in the literature to clarify a long-standing misconception on this issue. Second, we enhance the modified greedy algorithm to derive a data-dependent upper bound on the optimum. We empirically demonstrate the tightness of our upper bound with a real-world application. The bound enables us to obtain a data-dependent ratio typically much higher than 0.405 between the solution value of the modified greedy algorithm and the optimum. It can also be used to significantly improve the efficiency of algorithms such as branch and bound.


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