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Adaptive Seeding in Social Networks

机译:社交网络中的自适应播种

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摘要

The algorithmic challenge of maximizing information diffusion through word-of-mouth processes in social networks has been heavily studied in the past decade. While there has been immense progress and an impressive arsenal of techniques has been developed, the algorithmic frameworks make idealized assumptions regarding access to the network that can often result in poor performance of state-of-the-art techniques. In this paper we introduce a new framework which we call Adaptive Seeding. The framework is a two-stage stochastic optimization model designed to leverage the potential that typically lies in neighboring nodes of arbitrary samples of social networks. Our main result is an algorithm which provides a constant factor approximation to the optimal adaptive policy for any influence function in the Triggering model.
机译:在过去的十年中,已经对通过社交网络中的口碑传播过程最大化信息传播的算法挑战进行了深入研究。尽管已经取得了巨大的进步,并且已经开发了令人印象深刻的技术库,但是算法框架对网络访问做出了理想化的假设,这常常会导致最先进技术的性能下降。在本文中,我们介绍了一个称为“自适应种子”的新框架。该框架是一个两阶段随机优化模型,旨在利用通常位于社交网络任意样本的相邻节点中的潜力。我们的主要结果是一种算法,该算法为触发模型中的任何影响函数提供了与最佳自适应策略近似的恒定因子。

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