1. Anomaly detection: A survey;Chandola;ACM Comput. Surv.,2009
2. A review of time-series anomaly detection techniques: A step to future perspectives;Shaukat;Advances in Information and Communication, Proceedings of the 2021 Future of Information and Communication Conference (FICC), Vancouver, BC, Canada, 29–30 April 2021,2021
3. Guha, S., Mishra, N., Roy, G., and Schrijvers, O. (2016, January 19–24). Robust random cut forest based anomaly detection on streams. Proceedings of the 33rd International Conference on International Conference on Machine Learning, New York, NY, USA.
4. Kejariwal, A. (2022, January 12). Introducing Practical and Robust Anomaly Detection in a Time Series. Twitter Engineering Blog. Web, 15. Available online: https://blog.twitter.com/engineering/en_us/a/2015/introducing-practical-and-robust-anomaly-detection-in-a-time-series.
5. Stanway, A. (2022, January 12). Etsy Skyline. Online Code Repos. Available online: https://github.com/etsy.skyline.