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Deep Explicit Duration Switching Models for Time Series

About

Many complex time series can be effectively subdivided into distinct regimes that exhibit persistent dynamics. Discovering the switching behavior and the statistical patterns in these regimes is important for understanding the underlying dynamical system. We propose the Recurrent Explicit Duration Switching Dynamical System (RED-SDS), a flexible model that is capable of identifying both state- and time-dependent switching dynamics. State-dependent switching is enabled by a recurrent state-to-switch connection and an explicit duration count variable is used to improve the time-dependent switching behavior. We demonstrate how to perform efficient inference using a hybrid algorithm that approximates the posterior of the continuous states via an inference network and performs exact inference for the discrete switches and counts. The model is trained by maximizing a Monte Carlo lower bound of the marginal log-likelihood that can be computed efficiently as a byproduct of the inference routine. Empirical results on multiple datasets demonstrate that RED-SDS achieves considerable improvement in time series segmentation and competitive forecasting performance against the state of the art.

Abdul Fatir Ansari, Konstantinos Benidis, Richard Kurle, Ali Caner Turkmen, Harold Soh, Alexander J. Smola, Yuyang Wang, Tim Januschowski• 2021

Related benchmarks

TaskDatasetResultRank
Time Series ForecastingTraffic (test)--
192
Time Series ForecastingElectricity (test)--
72
Time Series ForecastingSolar (test)
CRPS0.419
19
Time Series ForecastingWiki (test)
CRPS0.318
19
Time Series ForecastingExchange (test)
CRPS0.013
19
Time-Series Segmentation3 mode system
Accuracy98
3
Time-Series Segmentationdancing bees
Accuracy73
3
Time-Series Segmentationdancing bees K=2
Accuracy91
3
Time-Series Segmentationbouncing ball
Accuracy0.97
3
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