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Submodular Optimization with Submodular Cover and Submodular Knapsack Constraints

机译:具有次模块覆盖和次模块背包约束的次模块优化

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We investigate two new optimization problems - minimizing a submodular function subject to a submodular lower bound constraint (submodular cover) and maximizing a submodular function subject to a submodular upper bound constraint (submodular knapsack). We are motivated by a number of real-world applications in machine learning including sensor placement and data subset selection, which require maximizing a certain submodular function (like coverage or diversity) while simultaneously minimizing another (like cooperative cost). These problems are often posed as minimizing the difference between submodular functions which is in the worst case inapproximable. We show, however, that by phrasing these problems as constrained optimization, which is more natural for many applications, we achieve a number of bounded approximation guarantees. We also show that both these problems are closely related and an approximation algorithm solving one can be used to obtain an approximation guarantee for the other. We provide hardness results for both problems thus showing that our approximation factors are tight up to log-factors. Finally, we empirically demonstrate the performance and good scalability properties of our algorithms.
机译:我们研究了两个新的优化问题-最小化受子模块化下界约束的子模函数(子模块化覆盖)和最大化子模块函数受下模上限的约束(子模块化背包)。我们受到机器学习中许多实际应用的启发,这些应用包括传感器放置和数据子集选择,这些应用要求最大化某个子模块功能(例如覆盖范围或分集),同时最小化另一个子模块功能(例如合作成本)。这些问题通常是由于使子模函数之间的差异最小而造成的,而在最坏的情况下这种差异是不可接近的。但是,我们表明,通过将这些问题表述为约束优化(对于许多应用程序而言更自然),可以实现许多有界逼近的保证。我们还表明,这两个问题都密切相关,解决一个问题的逼近算法可用于获得另一个问题的逼近保证。我们提供了两个问题的硬度结果,从而表明我们的逼近因子严格到对数因子。最后,我们通过经验证明了算法的性能和良好的可伸缩性。

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