Greedy Maximization Framework for Graph-Based Influence Functions

E. Cohen
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引用次数: 2

Abstract

The study of graph-based submodular maximization problems was initiated in a seminal work of Kempe, Kleinberg, and Tardos (2003): An influence function of subsets of nodes is defined by the graph structure and the aim is to find subsets of seed nodes with (approximately) optimal tradeoff of size and influence. Applications include viral marketing, monitoring, and active learning of node labels. This powerful formulation was studied for (generalized) coverage functions, where the influence of a seed set on a node is the maximum utility of a seed item to the node, and for pairwise utility based on reachability, distances, or reverse ranks. We define a rich class of influence functions which unifies and extends previous work beyond coverage functions and specific utility functions. We present a meta-algorithm for approximate greedy maximization with strong approximation quality guarantees and worst-case near-linear computation for all functions in our class. Our meta-algorithm generalizes a recent design by Cohen et al (2014) that was specific for distance-based coverage functions.
基于图的影响函数贪心最大化框架
基于图的次模最大化问题的研究始于Kempe, Kleinberg和Tardos(2003)的一项开创性工作:节点子集的影响函数由图结构定义,其目的是找到具有(近似)最优大小和影响力权衡的种子节点子集。应用包括病毒式营销、监控和节点标签的主动学习。这个强大的公式被研究用于(广义)覆盖函数,其中种子集对节点的影响是种子项对节点的最大效用,以及基于可达性、距离或反向排名的成对效用。我们定义了一类丰富的影响函数,它统一并扩展了覆盖函数和特定效用函数之外的先前工作。提出了一种具有强逼近质量保证和最坏情况近似线性计算的近似贪心最大化元算法。我们的元算法概括了Cohen等人(2014)最近的设计,该设计专门针对基于距离的覆盖函数。
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