Determinação Automática de Limiar de Detecção de Ataques em Redes de Computadores Utilizando Autoencoders
Luan Gonçalves Miranda, Pedro Ivo da Cruz, Murilo Bellezoni Loiola
2025-06-17Anomaly Detection
Abstract
Currently, digital security mechanisms like Anomaly Detection Systems using Autoencoders (AE) show great potential for bypassing problems intrinsic to the data, such as data imbalance. Because AE use a non-trivial and nonstandardized separation threshold to classify the extracted reconstruction error, the definition of this threshold directly impacts the performance of the detection process. Thus, this work proposes the automatic definition of this threshold using some machine learning algorithms. For this, three algorithms were evaluated: the K-Nearst Neighbors, the K-Means and the Support Vector Machine.
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