HGC: A hybrid method combining gravity model and cycle structure for identifying influential spreaders in complex networks
Jiaxun Li, Yonghou He, Zhefan Dong, Li Tao

TL;DR
This paper introduces HGC, a hybrid method that combines the gravity model with cycle structure and effective distance to more accurately identify influential spreaders in complex networks, outperforming existing methods.
Contribution
The paper proposes a novel hybrid approach integrating gravity model, effective distance, and cycle structure for better influence assessment in networks.
Findings
HGC outperforms seven existing methods in real-world network experiments.
Incorporating cycle structures improves network influence analysis.
Effective distance provides a more accurate measure of node relationships.
Abstract
Identifying influential spreaders in complex networks is a critical challenge in network science, with broad applications in disease control, information dissemination, and influence analysis in social networks. The gravity model, a distinctive approach for identifying influential spreaders, has attracted significant attention due to its ability to integrate node influence and the distance between nodes. However, the law of gravity is symmetric, whereas the influence between different nodes is asymmetric. Existing gravity model-based methods commonly rely on the topological distance as a metric to measure the distance between nodes. Such reliance neglects the strength or frequency of connections between nodes, resulting in symmetric influence values between node pairs, which ultimately leads to an inaccurate assessment of node influence. Moreover, these methods often overlook cycle…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opinion Dynamics and Social Influence · Evolutionary Game Theory and Cooperation
