Enhancing Intrusion Detection Systems through Advanced Machine Learning Techniques

dc.contributor.advisorCruz, Alfredo
dc.contributor.authorGonzález Cartagena, Rafael
dc.date.accessioned2025-07-21T17:30:10Z
dc.date.issued2025-05
dc.descriptionDesign Project Article for the Graduate Programs at Polytechnic University of Puerto Rico
dc.description.abstractThe rise in cyberattacks during the Covid – 19 pandemics has intensified the need for intrusion detection systems. This study investigates three machine learning algorithms: Random Forest Classifier, Convolutional Neural Network – Focal Loss, and Convolutional Neural Network – Cross Entropy Loss, under two project development lifecycles. Using the NSL – KDD Dataset, which contains network connection records classified into normal traffic or a multitude of different attacks, each of system is evaluated across multiple data handling staged, including scaling, balancing and feature selection. Results indicate that the Random Forest Classifier is best for binary classification, no matter the project development approach used (F1 Score: 99.92% in both cases); whereas Convolutional Neural Network – Cross Entropy Loss works best for multi – class classification when under the micro – detectors approach (F1 Score: 99.59%). As such, the findings of this research would offer practical guidance for designing machine learning systems for intrusion detection systems. Key Terms – Convolutional Neural Networks, Disposable Micro – Detectors, Intrusion Detection Systems, and Random Forest Classifier.
dc.identifier.citationGonzález Cartagena, R. (2025). Enhancing Intrusion Detection Systems through Advanced Machine Learning Techniques [Unpublished manuscript]. Graduate School, Polytechnic University of Puerto Rico.
dc.identifier.urihttps://hdl.handle.net/20.500.12475/3075
dc.language.isoen
dc.publisherPolytechnic University of Puerto Rico
dc.relation.haspartSan Juan
dc.relation.ispartofComputer Science Program
dc.relation.ispartofseriesSpring-2025
dc.rights.holderPolytechnic University of Puerto Rico, Graduate School
dc.rights.licenseAll rights reserved
dc.subject.lcshPolytechnic University of Puerto Rico--Graduate students--Research
dc.subject.lcshPolytechnic University of Puerto Rico--Graduate students--Posters
dc.subject.lcshPolytechnic University of Puerto Rico--Subject headings--Unassigned
dc.titleEnhancing Intrusion Detection Systems through Advanced Machine Learning Techniques
dc.typeArticle
dc.typePoster

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