Emergent deep learning for anomaly detection in internet of everything

Y Djenouri, D Djenouri, A Belhadi… - IEEE Internet of …, 2021 - ieeexplore.ieee.org
This research presents a new generic deep learning (DL) framework for anomaly detection
in the Internet of Everything (IoE). It combines decomposition methods, deep neural …

A novel LDVP-based anomaly detection method for data streams

X Yu, H Wang, K Dong, C Chen - International Journal of …, 2024 - Taylor & Francis
Recently, some progress has been made in anomaly detection for data streams. However,
these methods still exhibit deficiencies in effectively balancing computational efficiency and …

MEOD: memory-efficient outlier detection on streaming data

A Karale, M Lazarova, P Koleva, V Poulkov - Symmetry, 2021 - mdpi.com
In this paper, a memory-efficient outlier detection (MEOD) approach for streaming data is
proposed. The approach uses a local correlation integral (LOCI) algorithm for outlier …

Advanced Memory Efficient Outlier Detection Approach for Streaming Data using Swarm Optimization

A Karale, M Lazarova, P Koleva… - 2021 44th International …, 2021 - ieeexplore.ieee.org
Outlier detection techniques detect abnormal behavior in data and are useful in a variety of
applications. In a real-life scenario, various applications generate large-scale data every …

[PDF][PDF] MEOD: Memory-Efficient Outlier Detection on Streaming Data. Symmetry 2021, 13, 458

A Karale, M Lazarova, P Koleva, V Poulkov - 2021 - pdfs.semanticscholar.org
In this paper, a memory-efficient outlier detection (MEOD) approach for streaming data is
proposed. The approach uses a local correlation integral (LOCI) algorithm for outlier …

[ZITATION][C] Modeling of Small Unmanned Helicopter Using a Self-Constructed Kernel Function APSO-LSSVM

J Zhou, J Shi, W Wang, J Lu - Unmanned Systems, 2025 - World Scientific
The complex nonlinear and strongly coupled dynamics of small unmanned helicopters make
mathematical modeling challenging. Traditional approaches often rely on least squares …