Detecting Simulated Attacks in Computer Networks Using Resilient Propagation Artificial Neural Networks



Document title: Detecting Simulated Attacks in Computer Networks Using Resilient Propagation Artificial Neural Networks
Journal: Polibits
Database: PERIÓDICA
System number: 000383467
ISSN: 1870-9044
Authors: 1
1
Institutions: 1Texas A&M University, Computer Science, Corpus Christi, Texas. Estados Unidos de América
Year:
Season: Ene-Jun
Number: 51
Pages: 5-10
Country: México
Language: Inglés
Document type: Artículo
Approach: Aplicado, descriptivo
English abstract In a large network, it is extremely difficult for an administrator or security personnel to detect which computers are being attacked and from where intrusions come. Intrusion detection systems using neural networks have been deemed a promising solution to detect such attacks. The reason is that neural networks have some advantages such as learning from training and being able to categorize data. Many studies have been done on applying neural networks in intrusion detection systems. This work presents a study of applying resilient propagation neural networks to detect simulated attacks. The approach includes two main components: the Data Preprocessing module and the Neural Network. The Data Preprocessing module performs normalizing data function while the Neural Network processes and categorizes each connection to find out attacks. The results produced by this approach are compared with present approaches
Disciplines: Ciencias de la computación
Keyword: Redes,
Seguridad en cómputo,
Redes neuronales artificiales
Keyword: Computer science,
Networks,
Computing security,
Artificial neural networks
Full text: Texto completo (Ver HTML)