2021
DOI: 10.3390/fi13120318
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Models versus Datasets: Reducing Bias through Building a Comprehensive IDS Benchmark

Abstract: Today, deep learning approaches are widely used to build Intrusion Detection Systems for securing IoT environments. However, the models’ hidden and complex nature raises various concerns, such as trusting the model output and understanding why the model made certain decisions. Researchers generally publish their proposed model’s settings and performance results based on a specific dataset and a classification model but do not report the proposed model’s output and findings. Similarly, many researchers suggest … Show more

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