Author:
Calikus Ece,Nowaczyk Slawomir,Dikmen Onur
Abstract
AbstractContextual anomaly detection aims to identify objects that are anomalous only within specific contexts, while appearing normal otherwise. However, most existing methods are limited to a single context defined by user-specified features. In practice, identifying the right context is not trivial, even for domain experts. Moreover, for high-dimensional data, the notion of meaningful contexts that can unveil anomalies becomes substantially more complex. For instance, multiple useful contexts can often capture different phenomena. In this work, we introduce ConQuest, a new unsupervised contextual anomaly detection approach that automatically discovers and incorporates multiple contexts useful for detecting and interpreting anomalies. Through experiments on 25 datasets, we show that ConQuest outperforms various state-of-the-art methods. We also demonstrate its benefits in terms of increased direct interpretability.
Funder
Stiftelsen för Kunskaps- och Kompetensutveckling
Publisher
Springer Science and Business Media LLC
Reference35 articles.
1. Aggarwal, C.C.: Outlier Analysis, pp. 237–263. Springer, Cham (2015)
2. Salvador, S., Chan, P., Brodie, J.: Learning states and rules for time series anomaly detection. In: FLAIRS Conference, pp. 306–311. (2004)
3. Weigend, A.S., Mangeas, M., Srivastava, A.N.: Nonlinear gated experts for time series: discovering regimes and avoiding overfitting. Int. J. Neural Syst. 6(04), 373–399 (1995)
4. Kou, Y., Lu, C.-T., Chen, D.: Spatial weighted outlier detection. In: Proceedings of the 2006 SIAM International Conference on Data Mining, pp. 614–618. SIAM (2006)
5. Shekhar, S., Lu, C.-T., Zhang, P.: Detecting graph-based spatial outliers: algorithms and applications (a summary of results). In: Proceedings of the Seventh ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp. 371–376. (2001)