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Defending active directory by combining neural network based dynamic program and evolutionary diversity optimisation

Diksha Goel, Max Ward, Aneta Neumann, Frank Neumann, Hung Nguyen, Mingyu Guo

2022Proceedings of the Genetic and Evolutionary Computation Conference14 citationsDOIOpen Access PDF

Abstract

Active Directory (AD) is the default security management system for Windows domain networks. We study a Stackelberg game model between one attacker and one defender on an AD attack graph. The attacker initially has access to a set of entry nodes. The attacker can expand this set by strategically exploring edges. Every edge has a detection rate and a failure rate. The attacker aims to maximize their chance of successfully reaching the destination before getting detected. The defender's task is to block a constant number of edges to decrease the attacker's chance of success. We show that the problem is #P-hard and, therefore, intractable to solve exactly. We convert the attacker's problem to an exponential sized Dynamic Program that is approximated by a Neural Network (NN). Once trained, the NN provides an eficient fitness function for the defender's Evolutionary Diversity Optimisation (EDO). The diversity emphasis on the defender's solution provides a diverse set of training samples, which improves the training accuracy of our NN for modelling the attacker. We go back and forth between NN training and EDO. Experimental results show that for R500 graph, our proposed EDO based defense is less than 1% away from the optimal defense.

Topics & Concepts

Computer scienceDiversity (politics)DirectoryArtificial neural networkArtificial intelligenceEvolutionary computationOperating systemSociologyAnthropologyNetwork Security and Intrusion DetectionAdvanced Malware Detection TechniquesInformation and Cyber Security