Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Intrusion Detection in the IoT under Data and Concept Drifts: Online Deep Learning Approach

View through CrossRef
<div>Although the existing machine learning-based intrusion detection systems in the Internet of Things (IoT) usually perform well in static environments, they struggle to preserve their performance over time, in dynamic environments. Yet, the IoT is a highly dynamic and heterogeneous environment, leading to what is known as data drift and concept drift. Data drift is a phenomenon which embodies the change that happens in the relationships among the independent features, which is mainly due to changes in the data quality over time. Concept drift is a phenomenon which depicts the change in the relationships between input and output data in the machine learning model over time. To detect data and concept drifts, we first propose a drift detection technique that capitalizes on the Principal Component Analysis (PCA) method to study the change in the variance of the features across the intrusion detection data streams. We also discuss an online outlier detection technique that identifies the outliers that diverge both from historical and temporally close data points. To counter these drifts, we discuss an online deep neural network that dynamically adjusts the sizes of the hidden layers based on the Hedge weighting mechanism, thus enabling the model to steadily learn and adapt as new intrusion data come. Experiments conducted on an IoT based intrusion detection dataset suggest that our solution stabilizes the performance of the intrusion detection on both the training and testing data compared to the static deep neural network model, which is widely used for intrusion detection.</div>
Institute of Electrical and Electronics Engineers (IEEE)
Title: Intrusion Detection in the IoT under Data and Concept Drifts: Online Deep Learning Approach
Description:
<div>Although the existing machine learning-based intrusion detection systems in the Internet of Things (IoT) usually perform well in static environments, they struggle to preserve their performance over time, in dynamic environments.
Yet, the IoT is a highly dynamic and heterogeneous environment, leading to what is known as data drift and concept drift.
Data drift is a phenomenon which embodies the change that happens in the relationships among the independent features, which is mainly due to changes in the data quality over time.
Concept drift is a phenomenon which depicts the change in the relationships between input and output data in the machine learning model over time.
To detect data and concept drifts, we first propose a drift detection technique that capitalizes on the Principal Component Analysis (PCA) method to study the change in the variance of the features across the intrusion detection data streams.
We also discuss an online outlier detection technique that identifies the outliers that diverge both from historical and temporally close data points.
To counter these drifts, we discuss an online deep neural network that dynamically adjusts the sizes of the hidden layers based on the Hedge weighting mechanism, thus enabling the model to steadily learn and adapt as new intrusion data come.
Experiments conducted on an IoT based intrusion detection dataset suggest that our solution stabilizes the performance of the intrusion detection on both the training and testing data compared to the static deep neural network model, which is widely used for intrusion detection.
</div>.

Related Results

Pelatihan Internet of Things (IoT) dalam peningkatan kompetensi siswa multimedia di SMK Perguruan Buddhi
Pelatihan Internet of Things (IoT) dalam peningkatan kompetensi siswa multimedia di SMK Perguruan Buddhi
Pelatihan Internet of Things (IoT) menjadi bagian penting dalam pengembangan kompetensi siswa jurusan multimedia di SMK Perguruan Buddhi. Era digital menuntut adanya pemahaman mend...
Review of Adaptive Deep Learning Approaches for Intrusion Detection in IoT Network
Review of Adaptive Deep Learning Approaches for Intrusion Detection in IoT Network
As the Internet of Things (IoT) ecosystem continues to expand, the security of IoT networks becomes an increasingly critical concern. The vast and interconnected nature of IoT devi...
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
A Review of Performance, Energy and Privacy of Intrusion Detection Systems for IoT
A Review of Performance, Energy and Privacy of Intrusion Detection Systems for IoT
Internet of Things (IoT) forms the foundation of next generation infrastructures, enabling development of future cities that are inherently sustainable. Intrusion detection for suc...
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic&nbsp;
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic&nbsp;
Abstract Background: To minimize the risk of infection during the COVID-19 pandemic, the learning mode of universities in China has been adjusted, and the online learning o...
Development and application of biological intelligence technology in computer
Development and application of biological intelligence technology in computer
To study the development and application of biological intelligence technology in computers and realize high-precision network anomaly detection, a distributed intrusion detection ...
Ensemble-Based Deep Learning Models for Enhancing IoT Intrusion Detection
Ensemble-Based Deep Learning Models for Enhancing IoT Intrusion Detection
Cybersecurity finds widespread applications across diverse domains, encompassing intelligent industrial systems, residential environments, personal gadgets, and automobiles. This h...
The Storm Time Evolution of the Ionospheric Disturbance Plasma Drifts
The Storm Time Evolution of the Ionospheric Disturbance Plasma Drifts
AbstractIn this paper, we use the C/NOFS and ROCSAT‐1 satellites observations to analyze the storm time evolution of the disturbance plasma drifts in a 24 h local time scale during...

Back to Top