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Influence Maximization in Temporal Social Networks with a Cold-Start Problem: A Supervised Approach

Published: April 15, 2025 | arXiv ID: 2504.11245v1

By: Laixin Xie , Ying Zhang , Xiyuan Wang and more

Potential Business Impact:

Finds best people to spread ideas online.

Business Areas:
Impact Investing Financial Services, Lending and Investments

Influence Maximization (IM) in temporal graphs focuses on identifying influential "seeds" that are pivotal for maximizing network expansion. We advocate defining these seeds through Influence Propagation Paths (IPPs), which is essential for scaling up the network. Our focus lies in efficiently labeling IPPs and accurately predicting these seeds, while addressing the often-overlooked cold-start issue prevalent in temporal networks. Our strategy introduces a motif-based labeling method and a tensorized Temporal Graph Network (TGN) tailored for multi-relational temporal graphs, bolstering prediction accuracy and computational efficiency. Moreover, we augment cold-start nodes with new neighbors from historical data sharing similar IPPs. The recommendation system within an online team-based gaming environment presents subtle impact on the social network, forming multi-relational (i.e., weak and strong) temporal graphs for our empirical IM study. We conduct offline experiments to assess prediction accuracy and model training efficiency, complemented by online A/B testing to validate practical network growth and the effectiveness in addressing the cold-start issue.

Country of Origin
🇺🇸 United States

Page Count
14 pages

Category
Computer Science:
Social and Information Networks