Scalable Approximation Algorithm for Network Immunization
Juvaria Tariq, Muhammad Ahmad, Imdadullah Khan, Mudassir Shabbir

TL;DR
This paper introduces a scalable greedy algorithm for network immunization that efficiently identifies critical nodes to minimize epidemic spread, outperforming existing methods in large networks.
Contribution
The paper presents a novel spectral graph theory-based greedy algorithm for network immunization with improved scalability and theoretical approximation bounds.
Findings
Algorithm is faster than previous methods.
Effective on large real-world networks.
Provides theoretical bounds on solution quality.
Abstract
The problem of identifying important players in a given network is of pivotal importance for viral marketing, public health management, network security and various other fields of social network analysis. In this work we find the most important vertices in a graph G = (V,E) to immunize so as the chances of an epidemic outbreak is minimized. This problem is directly relevant to minimizing the impact of a contagion spread (e.g. flu virus, computer virus and rumor) in a graph (e.g. social network, computer network) with a limited budget (e.g. the number of available vaccines, antivirus software, filters). It is well known that this problem is computationally intractable (it is NP-hard). In this work we reformulate the problem as a budgeted combinational optimization problem and use techniques from spectral graph theory to design an efficient greedy algorithm to find a subset of vertices…
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Taxonomy
TopicsHIV Research and Treatment · Complex Network Analysis Techniques · Click Chemistry and Applications
