A Temporal Graphlet Kernel For Classifying Dissemination in Evolving Networks
We introduce the temporal graphlet kernel for classifying dissemination processes in labeled temporal graphs. Such processes can be the spreading of (fake) news, infectious diseases, or computer viruses in dynamic networks. The networks are modeled as labeled temporal graphs, in which the edges exist at specific points in time, and node labels change over time. The classification problem asks to discriminate dissemination processes of different origins or parameters, e.g., diseases with different infection probabilities. Our new kernel represents labeled temporal graphs in the feature space of temporal graphlets, i.e., small subgraphs distinguished by their structure, time-dependent node labels, and chronological order of edges. We introduce variants of our kernel based on classes of graphlets that are efficiently countable. For the case of temporal wedges, we propose a highly efficient approximative kernel with low error in expectation. Our experimental evaluation shows that our kernels are computed faster than state-of-the-art methods and provide higher accuracy in many cases.
Top- Oettershagen, Lutz
- Kriege, Nils M.
- Jordan, Claude
- Mutzel, Petra
Category |
Paper in Conference Proceedings or in Workshop Proceedings (Paper) |
Event Title |
SIAM International Conference on Data Mining |
Divisions |
Data Mining and Machine Learning |
Event Location |
Minneapolis, Minnesota, U.S.A. |
Event Type |
Conference |
Event Dates |
27.04.-29.04.2023 |
Series Name |
Proceedings of the 2023 SIAM International Conference on Data Mining (SDM) |
ISSN/ISBN |
978-1-61197-765-3 |
Page Range |
pp. 19-27 |
Date |
27 April 2023 |
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