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Adnan Shahid Khan

Researcher at Universiti Malaysia Sarawak

Publications -  62
Citations -  1050

Adnan Shahid Khan is an academic researcher from Universiti Malaysia Sarawak. The author has contributed to research in topics: Relay & Authentication. The author has an hindex of 11, co-authored 61 publications receiving 408 citations. Previous affiliations of Adnan Shahid Khan include Universiti Teknologi Malaysia.

Papers
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Network Intrusion Detection System: A systematic study of Machine Learning and Deep Learning approaches

TL;DR: The concept of IDS is clarified and the taxonomy based on the notable ML and DL techniques adopted in designing network‐based IDS (NIDS) systems is provided, which highlights various research challenges and provided the future scope for the research in improving ML andDL‐based NIDS.
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Secure Trust-Based Blockchain Architecture to Prevent Attacks in VANET.

TL;DR: A novel secure trust-based architecture that utilizes blockchain technology has been proposed to increase security and privacy to mitigate the aforementioned MAC layer attacks.
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A review of vehicle to vehicle communication protocols for VANETs in the urban environment

TL;DR: A brief review of most significant position based unicast routing protocols designed for vehicle to vehicle communications in the urban environment and their working features for exchanging information between vehicular nodes is presented.
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Defending Malicious Script Attacks Using Machine Learning Classifiers

TL;DR: Experimental results show that the proposed efficient method of detecting previously unknown malicious java scripts using an interceptor at the client side by classifying the key features of the malicious code can efficiently classify malicious code from benign code with promising results.
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Anomaly Detection Using Deep Neural Network for IoT Architecture

TL;DR: An efficient anomaly detection mechanism using mutual information (MI), considering a deep neural network (DNN) for an IoT network is proposed and it was observed that using only the 16–35 best numerical features selected using MI instead of 80 features of the dataset result in almost negligible degradation in the model's performance but helped in decreasing the overall model’s complexity.