Deterministic influence maximization approach for sequential active marketing

Dmitri Goldenberg, Eyal Tzvi Tenzer
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引用次数: 0

Abstract

The influence maximization problem aims to find the best seeding set of nodes in a network to increase the influence spread, under various information diffusion models. Recent advances have shown the importance of the timing of the seeding and introduced the sequential seeding approach, determining a step-by-step cascade of activations. Our study explores a novel Deterministic Influence Maximization Approach (DIMA) for time-based sequential seeding dynamics in a threshold-based model. We examine the problem characteristics and formulate solutions optimizing a scheduled sequential seeding strategy. Based on a set of empirical simulations we demonstrate the properties of the deterministic sequential problem, incorporate three different mathematical programming formulations and provide an initial benchmark for optimization techniques.
序贯积极营销的确定性影响最大化方法
影响最大化问题的目的是在各种信息扩散模型下,寻找网络中最佳的节点播种集,以增加影响的传播。最近的进展表明了播种时间的重要性,并引入了顺序播种方法,确定了一步一步的级联激活。我们的研究探索了一种新的确定性影响最大化方法(DIMA),用于基于阈值的基于时间的序列播种动力学模型。我们研究了问题的特征,并制定了优化调度顺序播种策略的解决方案。基于一组经验模拟,我们展示了确定性序列问题的性质,结合了三种不同的数学规划公式,并为优化技术提供了一个初始基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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