We demonstrate that from an algorithm guaranteeing an approximation factor for the ratio of submodular (RS) optimization problem, we can build another algorithm having a different kind of approximation guarantee -- weaker than the classical one -- for the difference of submodular (DS) optimization problem, and vice versa. We also illustrate the link between these two problems by analyzing a \textsc{Greedy} algorithm which approximately maximizes objective functions of the form $\Psi(f,g)$, where $f,g$ are two non-negative, monotone, submodular functions and $\Psi$ is a {quasiconvex} 2-variables function, which is non decreasing with respect to the first variable. For the choice $\Psi(f,g)\triangleq f/g$, we recover RS, and for the choice $\Psi(f,g)\triangleq f-g$, we recover DS. To the best of our knowledge, this greedy approach is new for DS optimization. For RS optimization, it reduces to the standard \textsc{GreedRatio} algorithm that has already been analyzed previously. However, our analysis is novel for this case.
翻译:我们通过一种保证子模块优化问题比率近似系数的算法来证明,我们可以为了亚模块优化问题的差异,而反之亦然。我们还可以通过分析一种可以使表格$\Psi(f,g)的客观功能最大化的计算法来说明这两个问题之间的联系。 在这种算法中,美元g$是两个非负、单体one、子模块函数和$\Psi$是 {qusiconvex} 2可变函数,对于第一个变量来说,这种算法没有减少。对于选择$\Psi(f,g)\ trangleq f/g$,我们收回了RS,对于选择$\Psi(f,g)\triangleq f-g$的客观功能,我们收回了DS。对于我们的知识来说,这种贪婪方式对于DS的优化来说是全新的。对于 RS优化来说,它不会减少到第一种变量。对于第一个变量来说,它不会减少到标准\textc(f,g){G)\ trangangleqlequal fiquedustrat 已经进行了分析。