Networks are a fundamental and flexible way of representing
various complex systems. Many domains such as communication, citation, procurement, biology, social media, and transportation can be modeled as a set of entities and their relationships. Temporal networks are a specialization of general networks where the temporal evolution of the system
is as important to understand as the structure of the entities
and relationships. We present the Independent Temporal Motif
(ITeM) to characterize temporal graphs from different domains.
The ITeMs are edge-disjoint temporal motifs that can
be used to model the structure and the evolution of the graph.
For a given temporal graph, we produce a feature vector of
ITeM frequencies and apply this distribution to the task of
measuring the similarity of temporal graphs. We show that
ITeM has higher accuracy than other motif frequency-based
approaches. We define various metrics based on ITeM that reveal salient properties of a temporal network. We also present importance sampling as a method for efficiently estimating the ITeM counts. We evaluate our approach on both synthetic and real temporal networks.
Published: September 21, 2022
Citation
Purohit S., G. Chin, L. Holder, and L. Holder. 2022.ITeM: Independent Temporal Motifs to Summarize and Compare Temporal Networks.Intelligence Data Analysis 26, no. 4:1071 - 1096.PNNL-SA-158727.doi:10.3233/IDA-205698