Abstract
Methods of applying deep learning to database protection have increased over the years. To secure role-based access control (RBAC) by learning the mapping function between query features and roles, it is known that the convolutional neural networks combined with learning classifier systems (LCS) can reach formidable accuracy. However, current methods are focused on using a singular model architecture and fail to fully exploit features that other models are capable of utilizing. Different deep architectures, such as ResNet and Inception, can exploit different spatial correlations within the feature space. In this paper, we propose an ensemble of multiple models with different deep convolutional architectures to improve the overall coverage of features used in role classification. By combining models with heterogeneous topologies, the ensemble-LCS model shows significantly increased performance compared to previous single architecture LCS models and achieves better robustness in the case of training data imbalance.
Funder
Agency for Defense Development
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering
Reference34 articles.
1. Survey of intrusion detection systems: Techniques, datasets and challenges;Cybersecurity,2019
2. Sagar, R., Jhaveri, R., and Borrego, C. (2020). Applications in Security and Evasions in Machine Learning: A Survey. Electronics, 9.
3. Journal of Cybersecurity and Privacy: A New Open Access Journal;J. Cybersecur. Priv.,2021
4. Anomalous query access detection in RBAC-administered databases with random forest and PCA;Inf. Sci.,2016
5. Database security-concepts, approaches, and challenges;IEEE Trans. Dependable Secur. Comput.,2005
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