Higher-Order Directed Community Detection by A Multiobjective Evolutionary Framework

Jing Xiao;Jing Cao;Xiao-Ke Xu
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Abstract

Higher-order community detection in real-life networks has recently gained significant attention, because motif-based communities reflect not only higher-order mesoscale structures but also functional characteristics. However, motif-based communities detected by existing methods for directed networks often disregard edge directionality (nonreciprocal directional arcs), so they typically fail to comprehensively reveal intrinsic characteristics of higher-order topology and information flow. To address this issue, first, we model higher-order directed community detection as a biobjective optimization problem, aiming to provide high-quality and diverse compromise partitions that capture both characteristics. Second, we introduce a multiobjective genetic algorithm based on motif density and information flow (MOGA-MI) to approximate the Pareto optimal higher-order directed community partitions. On the one hand, an arc-and-motif neighbor-based genetic generator (AMN-GA) is developed to generate high-quality and diverse offspring individuals; on the other hand, a higher-order directed neighbor community modification (HD-NCM) operation is designed to further improve generated partitions by modifying easily confused nodes into more appropriate motif-neighbor communities. Finally, experimental results demonstrate that the proposed MOGA-MI outperforms state-of-the-art algorithms in terms of higher-order topology and information flow indicators while providing more diverse community information.
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多目标进化框架下的高阶定向群落检测
基于基序的社区不仅反映了高阶中尺度结构,而且反映了功能特征,因此现实网络中的高阶社区检测近年来受到了广泛关注。然而,现有的基于基序的有向网络社区检测方法往往忽略了边缘的方向性(非互易的方向弧),因此它们通常无法全面揭示高阶拓扑和信息流的内在特征。为了解决这个问题,首先,我们将高阶有向社区检测建模为一个双目标优化问题,旨在提供捕获这两个特征的高质量和多样化折衷分区。其次,我们引入了基于motif密度和信息流的多目标遗传算法(MOGA-MI)来逼近Pareto最优高阶有向社区划分。一方面,开发了一种基于弧基和基序邻域的遗传生成器(AMN-GA),以产生高质量和多样化的后代个体;另一方面,设计了一种高阶定向邻居社区修改(HD-NCM)操作,通过将容易混淆的节点修改为更合适的主题邻居社区,进一步改进生成的分区。最后,实验结果表明,该算法在高阶拓扑和信息流指标方面优于现有算法,同时提供更多样化的社区信息。
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2024 Index IEEE Transactions on Artificial Intelligence Vol. 5 Front Cover Table of Contents IEEE Transactions on Artificial Intelligence Publication Information Table of Contents
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