Using AI to Identify Web Anomalies

May be an image of ‎map and ‎text that says '‎MD MDPIJ Joumals Topics Search for Articles: Information Title Keyword Author Services Journals Informatics Initiatives Volume Author Affiliation Fmail About Issue Informatics Sign 0.3390/informalics11040083 All Article Types K informatics Search Submit this Journal Open Access Review or this his Joural Article Propose Special Issue Reprints Article Menu Web Traffic Anomaly Detection Using Isolation Forest by Wilson Chua 90 Arsenn Lorette Diamond Pajas 2E M تا Crizelle Shane Castro 2 Sean Patrick Panganiban April Joy Pasuquin Merwin Purganan 区 Rica Malupeng Divine Jessa Pingad John Paul Orolfo Haron Hakeen Lua and Lemuel Clark Velasco 3,4,5‎'‎‎

 

As companies increasingly undergo digital transformation, the value of their data assets also rises, making them even more attractive targets for hackers. The large volume of weblogs warrants the use of advanced classification methodologies in order for cybersecurity specialists to identify web traffic anomalies. This study aims to implement Isolation Forest, an unsupervised machine learning methodology in the identification of anomalous and non-anomalous web traffic.

https://www.mdpi.com/2227-9709/11/4/83

Leave a Reply