Subset selection, which aims to select a subset from a ground set to maximize some objective function, arises in various applications such as influence maximization and sensor placement. In real-world scenarios, however, one often needs to find a subset which is robust against (i.e., is good over) a number of possible objective functions due to uncertainty, resulting in the problem of robust subset selection. This paper considers robust subset selection with monotone objective functions, relaxing the submodular property required by previous studies. We first show that the greedy algorithm can obtain an approximation ratio of $1-e^{-\beta\opgamma}$, where $\beta$ and $\opgamma$ are the correlation and submodularity ratios of the objective functions, respectively; and then propose EPORSS, an evolutionary Pareto optimization algorithm that can utilize more time to find better subsets. We prove that EPORSS can also be theoretically grounded, achieving a similar approximation guarantee to the greedy algorithm. In addition, we derive the lower bound of $\beta$ for the application of robust influence maximization, and further conduct experiments to validate the performance of the greedy algorithm and EPORSS.
翻译:子集选择旨在从地面一组中选择子集,以最大限度地实现某些客观功能,这种子集选择产生于各种应用,如影响最大化和传感器定位等。然而,在现实世界情景中,人们往往需要找到一个子集,该子集因不确定性而具有很强的(即良好超过)若干可能的客观功能,从而导致稳健的子集选择问题。本文认为,精密的子集选择具有单元目标功能,放松以往研究所要求的亚模式属性。我们首先表明,贪婪的算法可以获得1美元-e ⁇ -\beta\oopgamma}的近似比,其中,$\beta$和$\oppema$分别是目标函数的关联和亚调比;然后提出EPORS, 一种渐进式的Pareto优化算法,可以利用更多的时间找到更好的子集。我们证明, EPRSS也可以有理论依据,实现与贪婪算法相似的近似保证。此外,我们得出在应用稳健影响最大化方面,美元和进一步进行实验,以较低约束的美元计算。