LGMar 17, 2025

Deep Learning Advancements in Anomaly Detection: A Comprehensive Survey

arXiv:2503.13195v167 citationsh-index: 116IEEE Internet of Things Journal
Originality Synthesis-oriented
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It addresses the challenge of detecting anomalies in complex datasets for applications like system failures and fraud, but is incremental as a comprehensive review.

This survey reviews over 180 recent studies on deep learning-based anomaly detection, categorizing methods into reconstruction-based and prediction-based approaches to handle complex, high-dimensional data.

The rapid expansion of data from diverse sources has made anomaly detection (AD) increasingly essential for identifying unexpected observations that may signal system failures, security breaches, or fraud. As datasets become more complex and high-dimensional, traditional detection methods struggle to effectively capture intricate patterns. Advances in deep learning have made AD methods more powerful and adaptable, improving their ability to handle high-dimensional and unstructured data. This survey provides a comprehensive review of over 180 recent studies, focusing on deep learning-based AD techniques. We categorize and analyze these methods into reconstruction-based and prediction-based approaches, highlighting their effectiveness in modeling complex data distributions. Additionally, we explore the integration of traditional and deep learning methods, highlighting how hybrid approaches combine the interpretability of traditional techniques with the flexibility of deep learning to enhance detection accuracy and model transparency. Finally, we identify open issues and propose future research directions to advance the field of AD. This review bridges gaps in existing literature and serves as a valuable resource for researchers and practitioners seeking to enhance AD techniques using deep learning.

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