4.5 Article

An efficient procedure for mining egocentric temporal motifs

Journal

DATA MINING AND KNOWLEDGE DISCOVERY
Volume 36, Issue 1, Pages 355-378

Publisher

SPRINGER
DOI: 10.1007/s10618-021-00803-2

Keywords

Network motifs; Temporal networks; Graph mining; Social interaction networks; Sociopatterns

Funding

  1. Universit[Pleaseinsertintopreamble] degli Studi di Trento within the CRUI-CARE Agreemen

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This study introduces a technique based on egocentric temporal neighborhoods to extract temporal motifs in temporal networks, bypassing the graph isomorphism problem and enabling the algorithm to mine larger motifs. By focusing on the temporal dynamics of interactions of specific nodes, the method allows for the extraction of interpretable temporal motifs.
Temporal graphs are structures which model relational data between entities that change over time. Due to the complex structure of data, mining statistically significant temporal subgraphs, also known as temporal motifs, is a challenging task. In this work, we present an efficient technique for extracting temporal motifs in temporal networks. Our method is based on the novel notion of egocentric temporal neighborhoods, namely multi-layer structures centered on an ego node. Each temporal layer of the structure consists of the first-order neighborhood of the ego node, and corresponding nodes in sequential layers are connected by an edge. The strength of this approach lies in the possibility of encoding these structures into a unique bit vector, thus bypassing the problem of graph isomorphism in searching for temporal motifs. This allows our algorithm to mine substantially larger motifs with respect to alternative approaches. Furthermore, by bringing the focus on the temporal dynamics of the interactions of a specific node, our model allows to mine temporal motifs which are visibly interpretable. Experiments on a number of complex networks of social interactions confirm the advantage of the proposed approach over alternative non-egocentric solutions. The egocentric procedure is indeed more efficient in revealing similarities and discrepancies among different social environments, independently of the different technologies used to collect data, which instead affect standard non-egocentric measures.

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