Using Motif Transitions for Temporal Graph Generation (2306.11190v1)
Abstract: Graph generative models are highly important for sharing surrogate data and benchmarking purposes. Real-world complex systems often exhibit dynamic nature, where the interactions among nodes change over time in the form of a temporal network. Most temporal network generation models extend the static graph generation models by incorporating temporality in the generation process. More recently, temporal motifs are used to generate temporal networks with better success. However, existing models are often restricted to a small set of predefined motif patterns due to the high computational cost of counting temporal motifs. In this work, we develop a practical temporal graph generator, Motif Transition Model (MTM), to generate synthetic temporal networks with realistic global and local features. Our key idea is modeling the arrival of new events as temporal motif transition processes. We first calculate the transition properties from the input graph and then simulate the motif transition processes based on the transition probabilities and transition rates. We demonstrate that our model consistently outperforms the baselines with respect to preserving various global and local temporal graph statistics and runtime performance.
- http://hdl.handle.net/10477/79221.
- Mixed membership stochastic blockmodels. Advances in neural information processing systems 21 (2008).
- Dynamical patterns of cattle trade movements. PLoS ONE 6, 5 (2011), e19869.
- Graph mining: Laws, generators, and algorithms. ACM computing surveys (CSUR) 38, 1 (2006), 2–es.
- The average distances in random graphs with given expected degrees. Proceedings of the National Academy of Sciences 99, 25 (2002), 15879–15882.
- On random graphs i. Publicationes mathematicae 6, 1 (1959), 290–297.
- Randomized reference models for temporal networks. SIAM Review 64, 4 (2022), 763–830.
- Detectability thresholds and optimal algorithms for community structure in dynamic networks. Physical Review X 6, 3 (2016), 031005.
- A cluster process representation of a self-exciting process. Journal of applied probability 11, 3 (1974), 493–503.
- Dynamic model of time-dependent complex networks. Physical Review E 82, 4 (2010), 046105.
- Evolving cluster mixed-membership blockmodel for time-evolving networks. In Proceedings of the Fourteenth International Conference on Artificial Intelligence and Statistics (2011), JMLR Workshop and Conference Proceedings, pp. 342–350.
- Holme, P. Epidemiologically optimal static networks from temporal network data. PLoS computational biology 9, 7 (2013), e1003142.
- Temporal networks. Physics Rep. 519, 3 (2012), 97–125.
- Exploring the structure and function of temporal networks with dynamic graphlets. Bioinformatics 31, 12 (2015), i171–i180.
- Trend motif: A graph mining approach for analysis of dynamic complex networks. In Seventh IEEE International Conference on Data Mining (ICDM 2007) (2007), IEEE, pp. 541–546.
- Temporal motifs reveal the dynamics of editor interactions in wikipedia. In Proceedings of the International AAAI Conference on Web and Social Media (2012), vol. 6, pp. 162–169.
- Random graph models for directed acyclic networks. Physical Review E 80, 4 (2009), 046110.
- Universal features of correlated bursty behaviour. Scientific reports 2, 1 (2012), 397.
- Nonparametric multi-group membership model for dynamic networks. Advances in neural information processing systems 26 (2013).
- A scalable generative graph model with community structure. SIAM Journal on Scientific Computing 36, 5 (2014), C424–C452.
- Temporal motifs in time-dependent networks. Journal of Statistical Mechanics 2011, 11 (2011), P11005.
- Temporal motifs reveal homophily, gender-specific patterns, and group talk in call sequences. Proceedings of the National Academy of Sciences 110, 45 (2013), 18070–18075.
- SNAP Datasets, June 2014.
- Statistically validated mobile communication networks: The evolution of motifs in european and chinese data. New Journal of Physics 16, 8 (2014), 083038.
- Temporal motifs for financial networks: A study on mercari, jpmc, and venmo platforms. https://arxiv.org/abs/2301.07791.
- Temporal network motifs: Models, limitations, evaluation. IEEE Transactions on Knowledge and Data Engineering 35, 1 (2023), 945–957.
- Temporal motifs in patent opposition and collaboration networks. Scientific Reports 12, 1917 (2022) (2022).
- A poissonian explanation for heavy tails in e-mail communication. Proceedings of the National Academy of Sciences 105, 47 (2008), 18153–18158.
- A Guide to Temporal Networks, Second Edition. World Scientific, Singapore, 2020.
- Statistical clustering of temporal networks through a dynamic stochastic block model. Journal of the Royal Statistical Society: Series B (Statistical Methodology) 79, 4 (2017), 1119–1141.
- Random graphs with arbitrary degree distributions and their applications. Physical review E 64, 2 (2001), 026118.
- Motifs in temporal networks. In ACM Conf. on Web Search and Data Mining (2017), ACM, pp. 601–610.
- Modelling sequences and temporal networks with dynamic community structures. Nature communications 8, 1 (2017), 582.
- Analytical models for motifs in temporal networks. In Companion Proceedings of the Web Conference 2022 (2022), pp. 903–909.
- Item: Independent temporal motifs to summarize and compare temporal networks. Intelligent Data Analysis 26, 4 (2022), 1071–1096.
- Temporal graph generation based on a distribution of temporal motifs. In Proceedings of the 14th International Workshop on Mining and Learning with Graphs (2018), vol. 7.
- Scholtes, I. When is a network a network? multi-order graphical model selection in pathways and temporal networks. In Proceedings of the 23rd ACM SIGKDD international conference on knowledge discovery and data mining (2017), pp. 1037–1046.
- Event pattern matching over graph streams. Proc. of the VLDB Endowment 8, 4 (2014), 413–424.
- Modeling bursts and heavy tails in human dynamics. Physical Review E 73, 3 (2006), 036127.
- On the evolution of user interaction in facebook. In Proceedings of the 2nd ACM SIGCOMM Workshop on Social Networks (WOSN’09) (August 2009).
- A state-space mixed membership blockmodel for dynamic network tomography. The Annals of Applied Statistics 4, 2 (2010), 535–566.
- Dynamic stochastic blockmodels: Statistical models for time-evolving networks. In International conference on social computing, behavioral-cultural modeling, and prediction (2013), Springer, pp. 201–210.
- Detecting communities and their evolutions in dynamic social networks—a bayesian approach. Machine learning 82, 2 (2011), 157–189.
- Dymond: Dynamic motif-nodes network generative model. In Proceedings of the Web Conference 2021 (2021), pp. 718–729.
- Random graph models for dynamic networks. The European Physical Journal B 90, 10 (2017), 1–14.
- Human interactive patterns in temporal networks. IEEE Transactions on Systems, Man, and Cybernetics: Systems 45, 2 (2015), 214–222.
- Communication motifs: a tool to characterize social communications. In Proceedings of the 19th ACM International Conference on Information and Knowledge Management (2010), pp. 1645–1648.
- A data-driven graph generative model for temporal interaction networks. In Proceedings of the 26th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining (2020), pp. 401–411.