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Community detection and influential node identification in complex networks using mathematical programming

机译:使用数学规划复杂网络中的社区检测与影响力节点识别

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Integer programming models for community detection in relational networks have diverse applications in different fields. From making our lives easier by improving search engine optimization to saving our lives by aiding in threat detection and disaster management, researches in this niche have added value to human experience and knowledge. Besides the community structure, the influential nodes or members in a complex network are highly effective at diffusing information quickly to others in the community. Prior research dealing with the use of optimization models for clustering networks has independently focused on detecting communities. In this research, we propose a new integer linear programming model to detect community structure in real-life networks and also identify the most influential node within each community. We validate the proposed model by testing it on a well-established community network. Further, the performance of the proposed model is evaluated by comparing it with the existing best performing optimization model as well as three heuristic approaches for community detection. The experimental results indicate that in most cases the proposed integer programming model performs better than the existing optimization model with respect to modularity, Silhouette coefficient and computational time. Besides, our model yields superior Silhouette and competitive modularity values compared to the heuristic approaches in many cases. (C) 2019 Elsevier Ltd. All rights reserved.
机译:关于关系网络中的社区检测的整数编程模型在不同的领域中具有不同的应用程序。通过改善搜索引擎优化来使我们的生活更加容易,以避免威胁检测和灾害管理,在这个利基的研究中增加了人类经验和知识的价值。除了社区结构之外,复杂网络中的有影响性节点或成员在迅速扩散到社区中的其他人方面非常有效。在处理利用优化模型的研究之前,独立地专注于检测社区。在这项研究中,我们提出了一种新的整数线性编程模型来检测现实网络中的社区结构,并确定每个社区内最有影响力的节点。我们通过在建立良好的社区网络上测试它来验证所提出的模型。此外,通过将其与现有的最佳性能优化模型以及三种启发式方法进行评估,评估所提出的模型的性能。实验结果表明,在大多数情况下,所提出的整数编程模型比相对于模块化,轮廓系数和计算时间更好地表现优于现有的优化模型。此外,与许多情况下的启发式方法相比,我们的模型产生了优异的轮廓和竞争力的模块化值。 (c)2019 Elsevier Ltd.保留所有权利。

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