Anomaly Detection in Event-triggered Traffic Time Series via Similarity Learning
- AI4TS

Time series analysis has achieved great success in cyber security such as intrusion detection and device identification. Learning similarities among multiple time series is a crucial problem since it serves as the foundation for downstream analysis. Due to the complex temporal dynamics of the event-triggered time series, it often remains unclear which similarity metric is appropriate for security-related tasks, such as anomaly detection and clustering. The overarching goal of this paper is to develop an unsupervised learning framework that is capable of learning similarities among a set of event-triggered time series. From the machine learning vantage point, the proposed framework harnesses the power of both hierarchical multi-resolution sequential autoencoders and the Gaussian Mixture Model (GMM) to effectively learn the low-dimensional representations from the time series. Finally, the obtained similarity measure can be easily visualized for the explanation. The proposed framework aspires to offer a stepping stone that gives rise to a systematic approach to model and learn similarities among a multitude of event-triggered time series. Through extensive qualitative and quantitative experiments, it is revealed that the proposed method outperforms state-of-the-art methods considerably.
View on arXiv@article{dou2025_2506.16855, title={ Anomaly Detection in Event-triggered Traffic Time Series via Similarity Learning }, author={ Shaoyu Dou and Kai Yang and Yang Jiao and Chengbo Qiu and Kui Ren }, journal={arXiv preprint arXiv:2506.16855}, year={ 2025 } }