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Multi-Community Influence Maximization in Device-to-Device social networks

机译:多社区影响设备到设备社交网络的最大化

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In recent years, we have witnessed the rapid development of mobile multimedia services integrated with social networks. Therefore, Influence Maximization (IM) problem in social networks has become a widely studied topic, which aims to identify a small set of users (seed users) to cover as many users as possible through information propagation. Although most researches focus on online occasions or one single community, a few studies have been done for face-to-face (Device-to-Device, D2D) propagation occasions across multiple communities. General influence maximization in one community aims to find out k seed users under the given budget k, while in this paper, we concentrate on Multi-Community Influence Maximization (MCIM) problem to maximize influence (i.e., propagation coverage) by identifying seed users in multiple social communities of different properties and characteristics based on a total budget of seed users. We transform this problem into two subproblems, including Single Community Influence Maximization (SCIM) and Multi-Community Budget Allocation (MCBA). Respectively, we propose Weighted LeaderRank with Neighbors (WLRN) to rank users in a single community and design a method named Optimal Budget Allocation (OBA) to allocate budget (total quota of seed users) to multiple communities. The experiments based on a realistic D2D data set and an online social network show our method improves the propagation coverage significantly than general algorithms. (c) 2021 Elsevier B.V. All rights reserved.
机译:近年来,我们目睹了与社交网络集成的移动多媒体服务的快速发展。因此,影响社交网络中的最大化(IM)问题已成为一个广泛研究的主题,旨在通过信息传播识别一小组用户(种子用户)来覆盖尽可能多的用户。虽然大多数研究专注于在线场合或一个单一社区,但是在多个社区的面对面(设备到设备,D2D)传播场合进行了一些研究。一般影响一个社区中的最大化旨在在给定的预算k下找到k种子用户,而在本文中,我们专注于多社区影响最大化(MCIM)问题,以通过识别种子用户来最大化影响(即传播覆盖率)基于种子用户总预算的不同性质和特征的多个社会社区。我们将此问题转换为两个子问题,包括单一社区影响最大化(SCIM)和多社区预算分配(MCBA)。我们分别向邻居(WLRN)提出加权Leaderrank,以在单个社区中排名用户,并设计一个名为最佳预算分配(OBA)的方法将预算(种子用户总额)分配给多个社区。基于现实D2D数据集和在线社交网络的实验表明我们的方法可以提高比普通算法显着的传播覆盖范围。 (c)2021 elestvier b.v.保留所有权利。

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