Shixiang ZhuHenry Shaowu YuchiYao Xie
We consider the sequential anomaly detection problem in the one-class setting when only the anomalous sequences are available and propose an adversarial sequential detector by solving a minimax problem to find an optimal detector against the worst-case sequences from a generator. The generator captures the dependence in sequential events using the marked point process model. The detector sequentially evaluates the likelihood of a test sequence and compares it with a time-varying threshold, also learned from data through the minimax problem. We demonstrate our proposed method's good performance using numerical experiments on simulations and proprietary large-scale credit card fraud datasets. The proposed method can generally apply to detecting anomalous sequences.
Rituraj SinghKrishanu SainiAnikeit SethiAruna TiwariSumeet SauravSanjay Singh
Talagala, Priyanga DiliniHyndman, Rob JSmith-Miles, KateKandanaarachchi, SevvandiMunoz, Mario A
Priyanga Dilini TalagalaRob J. HyndmanKate Smith‐MilesSevvandi KandanaarachchiMario Andrés Muñoz
Shuo ZhangJiayuan ChenXiaofei ChenQiao JiangHejiao Huang