Stein Variational Online Changepoint Detection with Applications to Hawkes Processes and Neural Networks
About
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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Change Point Detection | Synthetic Hawkes Process dataset | FNR33 | 4 | |
| Change Point Detection | WannaCry Cyber Attack | FNR34 | 4 | |
| Change Point Detection | NYC Vehicle Collisions | FNR22 | 4 |