Unsupervised Intrusion Detection with Cross-Domain Artificial Intelligence Methods
Autores
San Miguel Carrasco, RafaelDirector
Sicilia Urbán, Miguel ÁngelFecha de publicación
2021Filiación
Universidad de Alcalá. Departamento de Ciencias de la Computación; Universidad de Alcalá. Programa de Doctorado en Ingeniería de la Información y del ConocimientoPalabras clave
Inteligencia artificial
Tipo de documento
info:eu-repo/semantics/doctoralThesis
Versión
info:eu-repo/semantics/acceptedVersion
Derechos
Attribution-NonCommercial-NoDerivatives 4.0 Internacional
Derechos de acceso
info:eu-repo/semantics/openAccess
Resumen
Cybercrime is a major concern for corporations, business owners, governments and citizens, and it continues to grow in spite of increasing investments in security and fraud prevention. The main challenges in this research field are: being able to detect unknown attacks, and reducing the false positive ratio. The aim of this research work was to target both problems by leveraging four artificial intelligence techniques.
The first technique is a novel unsupervised learning method based on skip-gram modeling. It was designed, developed and tested against a public dataset with popular intrusion patterns. A high accuracy and a low false positive rate were achieved without prior knowledge of attack patterns.
The second technique is a novel unsupervised learning method based on topic modeling. It was applied to three related domains (network attacks, payments fraud, IoT malware traffic). A high accuracy was achieved in the three scenarios, even though the malicious activity significantly differs from one domain to the other.
The third technique is a novel unsupervised learning method based on deep autoencoders, with feature selection performed by a supervised method, random forest. Obtained results showed that this technique can outperform other similar techniques.
The fourth technique is based on an MLP neural network, and is applied to alert reduction in fraud prevention. This method automates manual reviews previously done by human experts, without significantly impacting accuracy.
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Colecciones
- Tesis Doctorales UAH [1786]