May 19, 2022, 1:12 a.m. | João Vitorino, Rui Andrade, Isabel Praça, Orlando Sousa, Eva Maia

cs.LG updates on arXiv.org arxiv.org

The digital transformation faces tremendous security challenges. In
particular, the growing number of cyber-attacks targeting Internet of Things
(IoT) systems restates the need for a reliable detection of malicious network
activity. This paper presents a comparative analysis of supervised,
unsupervised and reinforcement learning techniques on nine malware captures of
the IoT-23 dataset, considering both binary and multi-class classification
scenarios. The developed models consisted of Support Vector Machine (SVM),
Extreme Gradient Boosting (XGBoost), Light Gradient Boosting Machine
(LightGBM), Isolation Forest (iForest), …

analysis arxiv detection iot learning machine machine learning machine learning techniques

Lead GNSS Data Scientist

@ Lurra Systems | Melbourne

Senior Machine Learning Engineer (MLOps)

@ Promaton | Remote, Europe

Data Analyst (Commercial Excellence)

@ Allegro | Poznan, Warsaw, Poland

Senior Machine Learning Engineer

@ Motive | Pakistan - Remote

Summernaut Customer Facing Data Engineer

@ Celonis | Raleigh, US, North Carolina

Data Engineer Mumbai

@ Nielsen | Mumbai, India