Systematic Approach to Analyze The Avast IOT-23 Challenge Dataset For Malware Detection Using Machine Learning
Muhammad Talha Jahangir, Muhammad Wakeel, Humza Asif, A.M.A. Bin Ateeq
Abstract
The integration of the Internet of Things (IoT) becomes more ingrained in our lives, it has gained significant importance for manufacturing companies. By enabling real time monitoring of machine status, evaluating product quality, and observing environmental conditions within factories. IoT empowers managers to make well considered decisions that reduce risks and alleviate losses. However, the growing reliance on IoT devices and services has also given rise to concerns about security and safety due to possible anomalies within IoT networks. Swiftly identifying and resolving these anomalies are crucial to prevent potential harm or losses. The proposed method introduces an innovative approach that leverages machine learning and deep learning techniques for the rapid classification of malicious software attacks on IoT networks. The central goal of this research is to conduct a thorough examination of the Avast IoT-23 dataset with the aim of pinpointing the most effective algorithm in terms of performance and efficiency. In this proposed methodology, the Decision Tree (DT) algorithm stands out as the most efficient and effective choice due to its high accuracy and low time complexity cost.