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Stein Variational Online Changepoint Detection with Applications to Hawkes Processes and Neural Networks

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Bayesian online changepoint detection (BOCPD) (Adams & MacKay, 2007) offers a rigorous and viable way to identify changepoints in complex systems. In this work, we introduce a Stein variational online changepoint detection (SVOCD) method to provide a computationally tractable generalization of BOCPD beyond the exponential family of probability distributions. We integrate the recently developed Stein variational Newton (SVN) method (Detommaso et al., 2018) and BOCPD to offer a full online Bayesian treatment for a large number of situations with significant importance in practice. We apply the resulting method to two challenging and novel applications: Hawkes processes and long short-term memory (LSTM) neural networks. In both cases, we successfully demonstrate the efficacy of our method on real data.

Gianluca Detommaso, Hanne Hoitzing, Tiangang Cui, Ardavan Alamir• 2019

Related benchmarks

TaskDatasetResultRank
Change Point DetectionSynthetic Hawkes Process dataset
FNR33
4
Change Point DetectionWannaCry Cyber Attack
FNR34
4
Change Point DetectionNYC Vehicle Collisions
FNR22
4
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