About Article

Cybersecurity Deep: Approaches, Attacks Dataset, and Comparative Study

ABSTRACT Cyber attacks are increasing rapidly due to advanced digital technologies used by hackers. In addition, cybercriminals are conducting cyber attacks, making cyber security a rapidly grow ing field. Although machine learning techniques worked well in solving large-scale cybersecurity problems, an emerging concept of deep learning (DL) that caught on during this period caused information security specialists to improvise the result. The deep learning techniques analyzed in this study are convolution neural networks, recurrent neural networks, and deep neural networks in the context of cybersecurity.A framework is proposed, and a real- time laboratory setup is performed to capture network packets and examine this captured data using various DL techniques. A comparable interpretation is presented under the DL techni ques with essential parameters, particularly accuracy, false alarm rate, precision, and detection rate. The DL techniques experimen tal output projects improvise the performance of various real- time cybersecurity applications on a real-time dataset. CNN model provides the highest accuracy of 98.64% with a precision of 98% with binary class. The RNN model offers the second- highest accuracy of 97.75%. CNN model provides the highest accuracy of 98.42 with multiclass class. The study shows that DL techniques can be effectively used in cybersecurity applications. Future research areas are being elaborated, including the poten tial research topics to improve several DL methodologies for cybersecurity applications.

RELATED Articles

Education system in Pakistan

Lorem ipsum dolor sit amet, consectetur adipiscing elit. Phasellus feugiat nisi non nunc elementum, id tincidunt enim scelerisque. Vestibulum ante ipsum primis in faucibus orci luctus et ultrices posuere cubilia curae; Maecenas fringilla, magna in dapibus scelerisque, purus enim accumsan libero, et ...