6533b7d8fe1ef96bd126ae93

RESEARCH PRODUCT

State of the Art Literature Review on Network Anomaly Detection with Deep Learning

Timo HämäläinenTero Bodström

subject

Advanced persistent threatbusiness.industryComputer scienceDeep learningdeep learning020206 networking & telecommunications02 engineering and technologyComputer securitycomputer.software_genrenetwork anomaly detectionkoneoppiminen0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingAnomaly detectionState (computer science)Artificial intelligencetietoturvabusinessverkkohyökkäyksetcomputer

description

As network attacks are evolving along with extreme growth in the amount of data that is present in networks, there is a significant need for faster and more effective anomaly detection methods. Even though current systems perform well when identifying known attacks, previously unknown attacks are still difficult to identify under occurrence. To emphasize, attacks that might have more than one ongoing attack vectors in one network at the same time, or also known as APT (Advanced Persistent Threat) attack, may be hardly notable since it masquerades itself as legitimate traffic. Furthermore, with the help of hiding functionality, this type of attack can even hide in a network for years. Additionally, the expected number of connected devices as well as the fast-paced development caused by the Internet of Things, raises huge risks in cyber security that must be dealt with accordingly. When considering all above-mentioned reasons, there is no doubt that there is plenty of room for more advanced methods in network anomaly detection hence Deep Learning based techniques have been proposed recently in detecting anomalies. peerReviewed

https://doi.org/10.1007/978-3-030-01168-0_7