Date: 2022
Type: Article
Influence maximization under limited network information : seeding high-degree neighbors
Journal of physics : complexity, 2022, Vol. 3, No. 4, OnlineOnly
OU, Jiamin, BUSKENS, Vincent, VAN DE RIJT, Arnout, PANJA, Debabrata, Influence maximization under limited network information : seeding high-degree neighbors, Journal of physics : complexity, 2022, Vol. 3, No. 4, OnlineOnly
- https://hdl.handle.net/1814/75276
Retrieved from Cadmus, EUI Research Repository
The diffusion of information, norms, and practices across a social network can be initiated by compelling a small number of seed individuals to adopt first. Strategies proposed in previous work either assume full network information or a large degree of control over what information is collected. However, privacy settings on the Internet and high non-response in surveys often severely limit available connectivity information. Here we propose a seeding strategy for scenarios with limited network information: Only the degrees and connections of some random nodes are known. This new strategy is a modification of 'random neighbor sampling' (or 'one-hop') and seeds the highest-degree neighbors of randomly selected nodes. Simulating a fractional threshold model, we find that this new strategy excels in networks with heavy tailed degree distributions such as scale-free networks and large online social networks. It outperforms the conventional one-hop strategy even though the latter can seed 50% more nodes, and other seeding possibilities including pure high-degree seeding and clustered seeding.
Additional information:
Published online: 28 October 2022
Cadmus permanent link: https://hdl.handle.net/1814/75276
Full-text via DOI: 10.1088/2632-072X/ac9444
ISSN: 2632-072X
Publisher: IOP Publishing
Files associated with this item
- Name:
- Influence_maximization_Art_2022.pdf
- Size:
- 4.210Mb
- Format:
- Description:
- Full-text in Open Access, Published ...