Presentation of a Comprehensive Semi-Supervised Model for Collaborative Intrusion Detection Based on Network Behavior Profiling Using the Concept of Deep Learning and Fuzzy Correlation of Alerts
Today, intrusion detection systems are extremely important in securing computers and computer networks. Correlated systems are next to intrusion detection systems by analyzing and combining the alarms received from them, appropriate reports for review and producing security measures. One of the problems face intrusion detection systems is generating a large volume of false alarms, so one of the most important issues in correlated systems is to check the alerts received by the intrusion detection system to distinguish true-positive alarms from false-positive alarms. The main focus of this research is on the applied optimization of classification methods to reduce the cost of organizations and security expert time in alert checking. The proposed Incrimental Intrusion Detetection Model using Correlator (IIDMC) is tested on a valid test dataset and the results show the efficiency of the proposed model and consequently its high accuracy.
-
Noor-Vajeh: A Benchmark Dataset for Keyword Extraction from Persian Papers
Mohammadamin Taheri*, Mohammadebrahim Shenassa, Behrouz Minaei-Bidgoli, Sayyed Ali Hossayni
Signal and Data Processing, -
A Benchmark for Analyzing Knowledge Graph Embedding for Link Prediction Problem in Low-Resource Languages
Najmeh Torabian, Behrooz Minaei-Bidgoli *, Mohsen Jahanshahi
Journal of Soft Computing and Information Technology, -
Extended rational techniques to resonant nonlinear Schrodinger equation
Nikan Ahmadi Karchi, Mohammadbagher Ghaemi *,
Mathematics and Computational Sciences, Spring 2024 -
An Enhanced Genetic Algorithm for Task Scheduling in Heterogeneous Systems
Saeed Mirpour Marzuni, *
Computational Sciences and Engineering, Summer 2023