2024
DOI: 10.20517/jsss.2023.51
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TENNER: intrusion detection models for industrial networks based on ensemble learning

Nicole do Vale Dalarmelina,
Pallavi Arora,
Geraldo Pereira Rocha Filho
et al.

Abstract: In the pursuit of discerning patterns within computer network attacks, the utilization of Machine Learning and Deep Learning algorithms has been prevalent for crafting detection models based on extensive network traffic datasets. Furthermore, enhancing detection efficacy is feasible by applying cluster learning techniques, wherein multiple Machine Learning models collaborate to yield detection outcomes. Nevertheless, it is imperative to discern the optimal features within the dataset for training the intrusion… Show more

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