Anomaly Transformer: Time Series Anomaly Detection with Association Discrepancy
Unsupervised detection of anomaly points in time series is a challenging problem, which requires the model to learn informative representation and derive a distinguishable criterion. In this paper, we propose the Anomaly Transformer in these three folds:
- An inherent distinguishable criterion as Association Discrepancy for detection.
- A new Anomaly-Attention mechanism to compute the association discrepancy.
- A minimax strategy to amplify the normal-abnormal distinguishability of the association discrepancy.
- Install Python 3.6, PyTorch >= 1.4.0. (Thanks Élise for the contribution in solving the environment. See this issue for details.)
- Download data. You can obtain four benchmarks from Google Cloud. All the datasets are well pre-processed. For the SWaT dataset, you can apply for it by following its official tutorial.
- Train and evaluate. We provide the experiment scripts of all benchmarks under the folder
./scripts
. You can reproduce the experiment results as follows:
bash ./scripts/SMD.sh
bash ./scripts/MSL.sh
bash ./scripts/SMAP.sh
bash ./scripts/PSM.sh
Especially, we use the adjustment operation proposed by Xu et al, 2018 for model evaluation. If you have questions about this, please see this issue or email us.
We compare our model with 15 baselines, including THOC, InterFusion, etc. Generally, Anomaly-Transformer achieves SOTA.
If you find this repo useful, please cite our paper.
@inproceedings{
xu2022anomaly,
title={Anomaly Transformer: Time Series Anomaly Detection with Association Discrepancy},
author={Jiehui Xu and Haixu Wu and Jianmin Wang and Mingsheng Long},
booktitle={International Conference on Learning Representations},
year={2022},
url={https://openreview.net/forum?id=LzQQ89U1qm_}
}
If you have any question, please contact [email protected].