A Comprehensive Survey on Machine Learning‐Based Intrusion Detection Systems for Secure Communication in Internet of Things
The Internet of Things (IoT) is a distributed system which is made up of the connections of
smart objects (things) that can continuously sense the events in their sensing domain and …
smart objects (things) that can continuously sense the events in their sensing domain and …
Intrusion detection systems in the Internet of things: A comprehensive investigation
Recently, a new dimension of intelligent objects has been provided by reducing the power
consumption of electrical appliances. Daily physical objects have been upgraded by …
consumption of electrical appliances. Daily physical objects have been upgraded by …
IoT intrusion detection taxonomy, reference architecture, and analyses
This paper surveys the deep learning (DL) approaches for intrusion-detection systems
(IDSs) in Internet of Things (IoT) and the associated datasets toward identifying gaps …
(IDSs) in Internet of Things (IoT) and the associated datasets toward identifying gaps …
A survey of outlier detection techniques in IoT: Review and classification
The Internet of Things (IoT) is a fact today where a high number of nodes are used for
various applications. From small home networks to large-scale networks, the aim is the …
various applications. From small home networks to large-scale networks, the aim is the …
Fog-empowered anomaly detection in IoT using hyperellipsoidal clustering
Anomaly detection is important for time-critical Internet of Things (IoT) applications, such as
healthcare and emergency management. The recent introduction of Fog computing …
healthcare and emergency management. The recent introduction of Fog computing …
A hybrid approach to clustering in big data
Clustering of big data has received much attention recently. In this paper, we present a new
clusiVAT algorithm and compare it with four other popular data clustering algorithms. Three …
clusiVAT algorithm and compare it with four other popular data clustering algorithms. Three …
Internet of things: an overview
As technology proceeds and the number of smart devices continues to grow substantially,
the need for ubiquitous context-aware platforms that support an interconnected …
the need for ubiquitous context-aware platforms that support an interconnected …
Real-time urban microclimate analysis using internet of things
Real-time environment monitoring and analysis is an important research area of Internet of
Things (IoT). Understanding the behavior of the complex ecosystem requires analysis of …
Things (IoT). Understanding the behavior of the complex ecosystem requires analysis of …
Modification of supervised OPF-based intrusion detection systems using unsupervised learning and social network concept
Optimum-path forest (OPF) is a graph-based machine learning method that can overcome
some limitations of the traditional machine learning algorithms that have been used in …
some limitations of the traditional machine learning algorithms that have been used in …
A novel insider attack and machine learning based detection for the internet of things
Due to the widespread functional benefits, such as supporting internet connectivity, having
high visibility and enabling easy connectivity between sensors, the Internet of Things (IoT) …
high visibility and enabling easy connectivity between sensors, the Internet of Things (IoT) …