Temporal Block Spectral Clustering for Multi-Layer Temporal Functional Connectivity Networks

Esraa Al-sharoa, M. Al-khassaweneh, Selin Aviyente
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Abstract

Many real world complex systems can be modeled as networks, i.e. graphs. A key approach to network analysis is community detection. Early work in community detection methods focused on a single network, whereas in most applications networks may be time dependent or may have multiple types of edges relating the nodes. Recently, multi-layer networks that incorporate multiple channels of connectivity have been introduced to represent such complex systems. In this paper, we focus on multi-layer temporal networks. A temporal block spectral clustering approach is proposed to detect and track the community structure across time. In this approach, both the connections between nodes of the network within a time window, i.e. intralayer adjacency, as well as the connections between nodes across different time windows, i.e. inter-layer adjacency are taken into account. The proposed framework is evaluated on both simulated and resting state fMRI data.
多层时间功能连接网络的时间块谱聚类
许多现实世界的复杂系统可以建模为网络,即图。网络分析的一个关键方法是社区检测。社区检测方法的早期工作集中在单个网络上,而在大多数应用中,网络可能是时间依赖的,或者可能具有与节点相关的多种类型的边。最近,引入了包含多个连接通道的多层网络来表示这种复杂的系统。本文主要研究多层时间网络。提出了一种时间块谱聚类方法,用于跨时间检测和跟踪群落结构。该方法既考虑了一个时间窗口内网络节点之间的连接,即层内邻接性,又考虑了不同时间窗口内节点之间的连接,即层间邻接性。所提出的框架在模拟和静息状态的fMRI数据上进行了评估。
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