2024
DOI: 10.3390/electronics13193944
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Unsupervised Learning for Lateral-Movement-Based Threat Mitigation in Active Directory Attack Graphs

David Herranz-Oliveros,
Marino Tejedor-Romero,
Jose Manuel Gimenez-Guzman
et al.

Abstract: Cybersecurity threats, particularly those involving lateral movement within networks, pose significant risks to critical infrastructures such as Microsoft Active Directory. This study addresses the need for effective defense mechanisms that minimize network disruption while preventing attackers from reaching key assets. Modeling Active Directory networks as a graph in which the nodes represent the network components and the edges represent the logical interactions between them, we use centrality metrics to der… Show more

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