Influential Nodes Identification in Complex Networks: Sampling Approach
2024-03
INTELLIGENT SYSTEMS AND APPLICATIONS IN ENGINEERING
Accurately identifying influential nodes within complex networks is crucial for understanding information and influence
propagation. Existing state-of-the-art algorithms, while powerful, often rank all nodes, which can be computationally expensive and
unnecessary for many applications. In this paper, we propose a simple yet efficient approach that overcomes these limitations.
Initially, a systematic sampling methodology was employed to strategically select a subset of nodes from the network, representing
a small fraction of its entirety. Subsequently, the betweenness centrality of these sampled nodes was estimated to facilitate their
ranking. To assess the performance of our sampling method alongside alternative algorithms, we employ the stochastic Susceptible–
Infected–Recovered (SIR) information diffusion model to compute various metrics including the infection scale, the final infected
scale over time, and the average distance between spreaders. Our experimental findings, conducted on real-world networks, indicate
that our proposed method accurately identifies influential nodes while maintaining significant computational efficiency.