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Community Preserving Network Embedding Based on Memetic Algorithm

机译:基于麦克算法的社区保存网络嵌入

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Network embedding aims to embed network nodes into a low-dimensional and continuous vector space, which can benefit various downstream network analysis tasks. As it is an emerging topic in recent years, a variety of methods have been proposed to learn representations by preserving a network topology structure. However, it still remains challenging to incorporate a community structure into network embedding, which is ignored by most of the methods. In this paper, we present a novel memetic algorithm for network embedding, which is termed as MemeRep. As a matter of fact, the community structure is preserved by optimizing the modularity density. In our methods, genetic algorithm is adopted to optimize a population of solutions, and a problem-specific local search procedure with the two-level learning strategies is designed to accelerate the optimization process. The first-level learning strategy enables each node to learn from its neighbors, while the second-level learning strategy expands the learning area, which enables each node to learn from communities. Experiments on real-world and computer-generated networks show that the proposed algorithm outperforms several state-of-the-art methods in visualization, node classification, and community detection.
机译:网络嵌入的目标是将网络节点嵌入到低维和连续的矢量空间中,这可以使各种下游网络分析任务受益。由于它是近年来的新兴主题,已经提出了各种方法来通过保留网络拓扑结构来学习表示。然而,将社区结构纳入网络嵌入仍然仍然具有挑战性,这是由大多数方法忽略的。在本文中,我们提出了一种用于网络嵌入的新型迭代算法,其被称为MEMEREP。事实上,通过优化模块化密度来保留社区结构。在我们的方法中,采用遗传算法优化了一个解决方案群体,并且设计了一个有问题的本地搜索程序,具有两级学习策略的方法,旨在加速优化过程。第一级学习策略使每个节点能够从邻居中学习,而第二级学习策略扩展了学习区域,这使得每个节点能够从社区中学习。现实世界和计算机生成网络的实验表明,该算法在可视化,节点分类和社区检测中优于几种最先进的方法。

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