在GOLAP中基于扩散的影响最大化

Mira Kim, Hsiang-Shun Shih, P. Sheu
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摘要

影响分析是社会网络研究的重要内容之一。具体来说,越来越多的研究人员和广告主对影响力最大化(IM)领域感兴趣。个人或组织之间的影响力概念一直是制定商业决策以及进行日常社会活动的核心基础。在本研究中,我们首先扩展了一种新的影响扩散模型——信息扩散模型(IDM)。我们结合了颜色和额外的节点约束。通过为图中不同类型的节点添加颜色和约束,我们将能够回答多维图上的复杂查询,例如“最多找到两个与肺病和心脏病相关的最重要基因”。更具体地说,我们讨论了IM-IDM的以下变体;色盲IM-IDM、有色IM-IDM和带约束的有色IM-IDM。实验结果证明了模型和算法的有效性。
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Diffusion-Based Influence Maximization in GOLAP
Influence analysis is one of the most important research in social network. Specifically, more and more researchers and advertisers are interested in the area of influence maximization (IM). The concept of influence among people or organizations has been the core basis for making business decisions as well as performing everyday social activities. In this research, we begin by extending a new influence diffusion model information diffusion model (IDM) using various constraints. We incorporate colors and additional nodes constraints. By adding colors and constraints for different types of nodes in a graph, we would be able to answer complex queries on multi-dimensional graphs such as ‘find at most two most important genes that are related to lung disease and heart disease’. More specifically, we discuss the following variations of IM-IDM; Colorblind IM-IDM, Colored IM-IDM and Colored IM-IDM with constraints. We also present our experiment results to prove the effectiveness of our model and algorithms.
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