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首页> 外文期刊>ACM transactions on knowledge discovery from data >Mining Community Structures in Multidimensional Networks
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Mining Community Structures in Multidimensional Networks

机译:在多维网络中挖掘社区结构

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摘要

We investigate the problem of community detection in multidimensional networks, that is, networks where entities engage in various interaction types (dimensions) simultaneously. While some approaches have been proposed to identify community structures in multidimensional networks, there are a number of problems still to solve. In fact, the majority of the proposed approaches suffer from one or even more of the following limitations: (1) difficulty detecting communities in networks characterized by the presence of many irrelevant dimensions, (2) lack of systematic procedures to explicitly identify the relevant dimensions of each community, and (3) dependence on a set of user-supplied parameters, including the number of communities, that require a proper tuning. Most of the existing approaches are inadequate for dealing with these three issues in a unified framework. In this paper, we develop a novel approach that is capable of addressing the aforementioned limitations in a single framework. The proposed approach allows automated identification of communities and their sub-dimensional spaces using a novel objective function and a constrained label propagation-based optimization strategy. By leveraging the relevance of dimensions at the node level, the strategy aims to maximize the number of relevant within-community links while keeping track of the most relevant dimensions. A notable feature of the proposed approach is that it is able to automatically identify low dimensional community structures embedded in a high dimensional space. Experiments on synthetic and real multidimensional networks illustrate the suitability of the new method.
机译:我们研究多维网络(即实体同时参与各种交互类型(维度)的网络)中的社区检测问题。虽然已经提出了一些方法来识别多维网络中的社区结构,但是仍有许多问题需要解决。实际上,大多数提议的方法都受到以下一个或多个局限性的限制:(1)在以许多不相关维度为特征的网络中难以检测社区,(2)缺乏明确识别相关维度的系统程序(3)依赖于一组用户提供的参数,包括需要适当调整的社区数量。现有的大多数方法不足以在一个统一的框架中处理这三个问题。在本文中,我们开发了一种新颖的方法,该方法能够在单个框架中解决上述限制。所提出的方法允许使用新颖的目标函数和受约束的基于标签传播的优化策略来自动识别社区及其子维度空间。通过在节点级别利用维度的相关性,该策略旨在在跟踪最相关维度的同时最大化相关社区内部链接的数量。该方法的一个显着特征是它能够自动识别嵌入高维空间的低维社区结构。在合成和真实多维网络上进行的实验说明了该新方法的适用性。

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