Litcius/Paper detail

Machine Learning Approach on Multiclass Classification of Internet Firewall Log Files

Md. Habibur Rahman, Taminul Islam, Md Masum Rana, Rehnuma Tasnim, Tanzina Rahman Mona, Md. Mamun Sakib

202311 citationsDOI

Abstract

Firewalls are critical components in securing communication networks by screening all incoming (and occasionally exiting) data packets. Filtering is carried out by comparing incoming data packets to a set of rules designed to prevent malicious code from entering the network. To regulate the flow of data packets entering and leaving a network, an Internet firewall keeps a track of all activity. While the primary function of log files is to aid in troubleshooting and diagnostics, the information they contain is also very relevant to system audits and forensics. Firewall”s primary function is to prevent malicious data packets from being sent. In order to better defend against cyberattacks and understand when and how malicious actions are influencing the internet, it is necessary to examine log files. As a result, the firewall decides whether to ‘allow.,’ ‘deny.,’ ‘drop,’ or ‘reset-both’ the incoming and outgoing packets. In this research, we apply various categorization algorithms to make sense of data logged by a firewall device. Harmonic mean F1 score, recall, and sensitivity measurement data with a 99% accuracy score in the random forest technique are used to compare the classifier's performance. To be sure, the proposed characteristics did significantly contribute to enhancing the firewall classification rate, as seen by the high accuracy rates generated by the other methods.

Topics & Concepts

Firewall (physics)Computer scienceNetwork packetApplication firewallStateful firewallContext-based access controlThe InternetComputer networkData miningOperating systemEntropy (arrow of time)PhysicsQuantum mechanicsExtremal black holeCharged black holeNetwork Security and Intrusion DetectionNetwork Packet Processing and OptimizationInternet Traffic Analysis and Secure E-voting