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Title

Machine Learning Enhanced Access Control for Big Data

Author

Hamza ES-SAMAALI , Anas Abou El Kalam, Aissam Outchakoucht, Siham Benhadou

Citation

Vol. 20  No. 3  pp. 83-91

Abstract

Access Controls (AC) are one of the main means of defense in IT systems, unfortunately, Big Data Systems are still lacking in this field, the current well-known ACs are vulnerable and can be compromised because of policy misconfiguration and lack of contextuality. In this article we propose a Machine Learning approach to optimize ABAC (Attribute Based Access Control) with the aim to reduce the attacks that are overlooked by the hardcoded policies (i.e: users abusing their privileges). We use unsupervised learning outlier detection algorithms to detect anomalous user behaviors. The Framework was implemented in Python and its performance tested using the UNSW-NB15 Data Set.

Keywords

Access Control Big Data Machine Learning Outlier Detection ABAC Security

URL

http://paper.ijcsns.org/07_book/202003/20200312.pdf