Novelty Detection in Time Series via Weak Innovations Representation: A Deep Learning Approach
Wang, Xinyi, Lee, Mei-jen, Zhao, Qing, Tong, Lang
–arXiv.org Artificial Intelligence
We consider novelty detection in time series with unknown and nonparametric probability structures. A deep learning approach is proposed to causally extract an innovations sequence consisting of novelty samples statistically independent of all past samples of the time series. A novelty detection algorithm is developed for the online detection of novel changes in the probability structure in the innovations sequence. A minimax optimality under a Bayes risk measure is established for the proposed novelty detection method, and its robustness and efficacy are demonstrated in experiments using real and synthetic datasets.
arXiv.org Artificial Intelligence
Oct-24-2022
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