The Application of Deep Learning Imputation and Other Advanced Methods for Handling Missing Values in Network Intrusion Detection

Author:

Szczepański Mateusz12,Pawlicki Marek12,Kozik Rafał12,Choraś Michał12

Affiliation:

1. ITTI Sp. z o.o., Poznań, Poland

2. Bydgoszcz University of Science and Technology, PBŚ Bydgoszcz, Bydgoszcz, Poland

Abstract

In intelligent information systems data play a critical role. The issue of missing data is one of the commonplace problems occurring in data collected in the real world. The problem stems directly from the very nature of data collection. In this paper, the notion of handling missing values in a real-world application of computational intelligence is considered. Two experimental campaigns were conducted, evaluating different approaches to the missing values imputation on Random Forest-based classifiers, trained using modern cybersecurity benchmarks datasets: CICIDS2017 and IoT-23. In result of the experiments it transpired that the chosen algorithm for data imputation has a severe impact on the results of the classifier used for network intrusion detection. It also comes to light that one of the most popular approaches to handling missing data — complete case analysis — should never be used in cybersecurity.

Funder

European Union's Horizon 2020 research

Publisher

World Scientific Pub Co Pte Ltd

Subject

Artificial Intelligence,Computational Theory and Mathematics,Computer Vision and Pattern Recognition,Information Systems,Computer Science (miscellaneous),Software

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1. Research on Situational Awareness of Network Security Based on Machine Learning;2024 2nd International Conference on Mechatronics, IoT and Industrial Informatics (ICMIII);2024-06-12

2. Intelligent monitoring of malicious intrusion behavior for power communication network channel;Fourth International Conference on Mechanical, Electronics, and Electrical and Automation Control (METMS 2024);2024-06-05

3. Comparing Metaheuristic Search Techniques in Addressing the Effectiveness of Clustering-Based DDoS Attack Detection Methods;Electronics;2024-02-27

4. A multi-constraint transfer approach with additional auxiliary domains for IoT intrusion detection under unbalanced samples distribution;Applied Intelligence;2023-12-30

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