Anomaly Detection
Anomaly detection focuses on identifying unusual patterns or deviations from expected behavior within data, aiming to improve system reliability and safety across diverse applications. Current research emphasizes unsupervised and self-supervised learning approaches, employing architectures like autoencoders, transformers, and graph neural networks, often incorporating techniques such as Bayesian inference and metric learning to enhance robustness and interpretability. The field's significance stems from its broad applicability, ranging from fraud detection and medical diagnosis to industrial process monitoring and network security, with ongoing efforts to develop more efficient, accurate, and explainable methods.
Papers
Enhanced Federated Anomaly Detection Through Autoencoders Using Summary Statistics-Based Thresholding
Sofiane Laridi, Gregory Palmer, Kam-Ming Mark Tam
Interdependency Matters: Graph Alignment for Multivariate Time Series Anomaly Detection
Yuanyi Wang, Haifeng Sun, Chengsen Wang, Mengde Zhu, Jingyu Wang, Wei Tang, Qi Qi, Zirui Zhuang, Jianxin Liao
Convolutional Neural Network Design and Evaluation for Real-Time Multivariate Time Series Fault Detection in Spacecraft Attitude Sensors
Riccardo Gallon, Fabian Schiemenz, Alessandra Menicucci, Eberhard Gill
A Theoretical Framework for AI-driven data quality monitoring in high-volume data environments
Nikhil Bangad, Vivekananda Jayaram, Manjunatha Sughaturu Krishnappa, Amey Ram Banarse, Darshan Mohan Bidkar, Akshay Nagpal, Vidyasagar Parlapalli
Self-Supervised Anomaly Detection in the Wild: Favor Joint Embeddings Methods
Daniel Otero, Rafael Mateus, Randall Balestriero
Applying Quantum Autoencoders for Time Series Anomaly Detection
Robin Frehner, Kurt Stockinger
BlockFound: Customized blockchain foundation model for anomaly detection
Jiahao Yu, Xian Wu, Hao Liu, Wenbo Guo, Xinyu Xing