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Near Optimal Algorithms for Hard Submodular Programs with Discounted Cooperative Costs

机译:具有折扣合作成本的硬子模块程序的近似最佳算法

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In this paper, we investigate a class of submodular problems which in general are very hard. These include minimizing a submodular cost function under combinatorial constraints, which include cuts, matchings, paths, etc., optimizing a submodular function under submodular cover and submodular knapsack constraints, and minimizing a ratio of submodular functions. All these problems appear in several real world problems but have hardness factors of $Omega(sqrt{n})$ for general submodular cost functions. We show how we can achieve constant approximation factors when we restrict the cost functions to low rank sums of concave over modular functions. A wide variety of machine learning applications are very naturally modeled via this subclass of submodular functions. Our work therefore provides a tighter connection between theory and practice by enabling theoretically satisfying guarantees for a rich class of expressible, natural, and useful submodular cost models. We empirically demonstrate the utility of our models on real world problems of cooperative image matching and sensor placement with cooperative costs.
机译:在本文中,我们研究了一类通常很难解决的亚模问题。这些措施包括在组合约束(包括剪切,匹配,路径等)下最小化子模块成本函数,在子模块覆盖和子模块背包约束下优化子模块函数,以及最小化子模块函数的比率。所有这些问题都出现在几个实际问题中,但对于一般的次模成本函数,其硬度因子为$ Omega( sqrt {n})$。我们展示了当将成本函数限制为模块化函数上的凹面的低秩和时,如何获得恒定的近似因子。通过此子模块功能的子类,非常自然地对各种机器学习应用程序进行了建模。因此,我们的工作通过为丰富的可表达,自然和有用的次模块成本模型提供理论上令人满意的保证,从而在理论与实践之间建立了更紧密的联系。我们通过经验证明了我们的模型在协作图像匹配和带有协作成本的传感器放置的现实世界问题上的实用性。

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