Student Work
Predictive Analysis
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open in viewerThe rise of cybercrime has motivated the need for improved early detection and prediction mechanisms to prevent cyber-attacks from causing damage to unsuspecting victims. We developed and analyzed various machine learning algorithms to tackle one approach for early detection, URL classification. Unlike previous research, which focused on binary classification, our approach focuses on classifying URLs to their likely attack category. Through testing and evaluation, we found that ensemble methods perform the best with our optimal feature set, producing accuracies as high as 95%.
- This report represents the work of one or more WPI undergraduate students submitted to the faculty as evidence of completion of a degree requirement. WPI routinely publishes these reports on its website without editorial or peer review.
- Creator
- Publisher
- Identifier
- E-project-101219-164846
- Advisor
- Year
- 2019
- Center
- Sponsor
- Date created
- 2019-10-12
- Resource type
- Major
- Rights statement
Relations
- Dans Collection:
Contenu
Articles
La vignette | Titre | Visibilité | Embargo Release Date | actes |
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MQP-Paper.pdf | Public | Télécharger | ||
Dwan_Tavares_Final_Presentation.pptx | Public | Télécharger | ||
MQP-Paper.docx | Public | Télécharger |
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