跨多个社会网络的基于学习的影响力最大化

Nida Shakeel, Rajendra Kumar Dwivedi
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引用次数: 1

摘要

社交网络在个人日常生活中传播数据方面发挥着重要作用。在病毒式广告中,组织希望通过利用网络组织和影响力传播的质量来传播他们的产品。特别是,他们需要免费向选定的客户(种子节点)提供道具,允许他们在整个网络中推广这些道具并最大化获取。应该有一个免费项目的传播计划,目标是组织选择理想的种子集,以提高影响力的传播。这个问题被称为影响力最大化(IM),具有广泛的范围,即建议框架,链接预测和数据扩散。在本文中,我们致力于找到模型执行与图表大小之间的联系,并找到种子中心。影响最大化(Impact Maximization, IM)是识别社区系统中包含最大影响增长的一小部分人的主要问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Learning Based Influence Maximization across Multiple Social Networks
Social networks play a significant role in spreading data in individuals' day-to-day existence. In viral advertising, organizations desire to communicate their items by utilizing the network organization and qualities of influence propagation. In particular, they need to give items at no cost to the chosen clients (seed nodes), permit them to promote them throughout the network and maximize the acquisition. There should be a spreading plan of the free-of-charge items with the objective of the organizations to choose the ideal seed set to boost the influence spread. This issue is known as influence maximization (IM) and has a broad scope viz., suggestion frameworks, link prediction, and data diffusion. In this paper, we worked on finding a connection between the model execution and the size of the chart and finding the seed hub. Impact Maximization (IM) is a principal issue to recognize a tiny arrangement of people which contain maximal impact increase within the community system.
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