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A Generalization of Submodular Cover via the Diminishing Return Property on the Integer Lattice

机译:通过整数点阵上递减的返回属性推广亚模覆盖

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We consider a generalization of the submodular cover problem based on the concept of diminishing return property on the integer lattice. We are motivated by real scenarios in machine learning that cannot be captured by (traditional) submodular set functions. We show that the generalized submodular cover problem can be applied to various problems and devise a bicriteria approximation algorithm. Our algorithm is guaranteed to output a log-factor approximate solution that satisfies the constraints with the desired accuracy. The running time of our algorithm is roughly O(n log(nr) log r), where n is the size of the ground set and r is the maximum value of a coordinate. The dependency on r is exponentially better than the naive reduction algorithms. Several experiments on real and artificial datasets demonstrate that the solution quality of our algorithm is comparable to naive algorithms, while the running time is several orders of magnitude faster.
机译:我们考虑基于整数晶格上的递归特性递减的概念,对次模数覆盖问题进行推广。我们受到机器学习中无法被(传统)子模块集函数捕获的真实场景的激励。我们证明了广义次模块覆盖问题可以应用于各种问题,并设计出一种双标准近似算法。我们的算法保证输出对数因子近似解,以所需的精度满足约束条件。我们算法的运行时间大约为O(n log(nr)log r),其中n是地面的大小,r是坐标的最大值。对r的依赖性比朴素的归约算法好得多。在真实数据集和人工数据集上进行的几次实验表明,我们的算法的解决方案质量可以与朴素算法媲美,而运行时间则要快几个数量级。

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