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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Attributed Network Alignment: Problem Definitions and Fast Solutions
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Attributed Network Alignment: Problem Definitions and Fast Solutions

机译:归因网络调整:问题定义和快速解决方案

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摘要

Networks are prevalent and often collected from multiple sources in many high-impact domains, which facilitate many emerging applications that require the connections across multiple networks. Network alignment (i.e., to find the node correspondence between different networks) has become the very first step in many applications and thus has been studied in decades. Although some existing works can use the attribute information as part of the alignment process, they still have certain limitations. For example, some existing network alignment methods can use node attribute similarities as part of the prior alignment information, whereas most of them solely explore the topology consistency without the consistency among attributes of the underlying networks. On the other hand, traditional graph matching methods encode both the node and edge attributes (and possibly the topology) into an affinity matrix and formulate it as a constrained nonconvex quadratic maximization problem. However, these methods cannot scale well to the large-scale networks. In this paper, we propose a family of network alignment algorithms (FINAL) to efficiently align the attributed networks. The key idea is to leverage the node/edge attribute information to guide the (topology-based) alignment process. We formulate this problem as a convex quadratic optimization problem, and develop effective and efficient algorithms to solve it. Moreover, we derive FINAL ON-QUERY, an online variant of FINAL that can find similar nodes for the query nodes across networks. We perform extensive evaluations on real networks to substantiate the superiority of our proposed approaches.
机译:网络很普遍,通常是从许多高影响域中的多个来源收集的,这促进了许多新兴应用程序的需要,这些应用程序需要跨多个网络进行连接。网络对准(即,找到不同网络之间的节点对应关系)已经成为许多应用中的第一步,因此已经进行了数十年的研究。尽管某些现有作品可以将属性信息用作对齐过程的一部分,但它们仍然具有某些局限性。例如,一些现有的网络对齐方法可以使用节点属性相似性作为先前对齐信息的一部分,而大多数方法只探索拓扑一致性,而没有基础网络的属性之间的一致性。另一方面,传统的图匹配方法将节点和边缘属性(以及可能的拓扑)都编码为相似度矩阵,并将其表述为约束非凸二次最大化问题。但是,这些方法无法很好地扩展到大型网络。在本文中,我们提出了一系列网络对齐算法(FINAL)以有效地对齐属性网络。关键思想是利用节点/边缘属性信息来指导(基于拓扑的)对齐过程。我们将此问题公式化为凸二次优化问题,并开发出有效且高效的算法来解决该问题。此外,我们导出FINAL ON-QUERY,这是FINAL的在线变体,可以为跨网络的查询节点找到相似的节点。我们对真实网络进行了广泛的评估,以证实我们提出的方法的优越性。

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