通过基于共识的方法增强群落探测的稳定性并评估其不确定性

Fabio Morea, Domenico De Stefano
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引用次数: 0

摘要

社会科学和自然科学中的复杂数据可以通过网络得到有效表达,其中的定量和分类信息可以与节点和连接边相关联。网络的内部结构可以通过无监督的机器学习方法(即社群检测算法)来探索。由于算法采用启发式方法和随机化程序来探索广阔的解空间,因此社群检测过程本身就存在不确定性,这导致了非确定性结果以及多次运行中检测到的社群的差异性。我们工作的主要目的是通过一种基于共识的方法来解决这些问题,并为此引入了一个名为 "共识社群检测(CCD)"的新框架。我们的方法可应用于不同的社群检测算法,允许对整个网络和每个节点的不确定性进行量化,并提供了三种处理异常值的策略:纳入、突出或分组。我们在人工基准网络上评估了这种方法的有效性。
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Enhancing Stability and Assessing Uncertainty in Community Detection through a Consensus-based Approach
Complex data in social and natural sciences find effective representation through networks, wherein quantitative and categorical information can be associated with nodes and connecting edges. The internal structure of networks can be explored using unsupervised machine learning methods known as community detection algorithms. The process of community detection is inherently subject to uncertainty as algorithms utilize heuristic approaches and randomised procedures to explore vast solution spaces, resulting in non-deterministic outcomes and variability in detected communities across multiple runs. Moreover, many algorithms are not designed to identify outliers and may fail to take into account that a network is an unordered mathematical entity. The main aim of our work is to address these issues through a consensus-based approach by introducing a new framework called Consensus Community Detection (CCD). Our method can be applied to different community detection algorithms, allowing the quantification of uncertainty for the whole network as well as for each node, and providing three strategies for dealing with outliers: incorporate, highlight, or group. The effectiveness of our approach is evaluated on artificial benchmark networks.
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