Stanza: A Nonlinear State Space Model for Probabilistic Inference in
Non-Stationary Time Series
- URL: http://arxiv.org/abs/2006.06553v1
- Date: Thu, 11 Jun 2020 16:06:35 GMT
- Title: Stanza: A Nonlinear State Space Model for Probabilistic Inference in
Non-Stationary Time Series
- Authors: Anna K. Yanchenko and Sayan Mukherjee
- Abstract summary: We propose Stanza, a nonlinear, non-stationary state space model as an intermediate approach to fill the gap between traditional models and modern deep learning approaches for complex time series.
Stanza achieves forecasting accuracy competitive with deep LSTMs on real-world datasets, especially for multi-step ahead forecasting.
- Score: 1.332560004325655
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Time series with long-term structure arise in a variety of contexts and
capturing this temporal structure is a critical challenge in time series
analysis for both inference and forecasting settings. Traditionally, state
space models have been successful in providing uncertainty estimates of
trajectories in the latent space. More recently, deep learning, attention-based
approaches have achieved state of the art performance for sequence modeling,
though often require large amounts of data and parameters to do so. We propose
Stanza, a nonlinear, non-stationary state space model as an intermediate
approach to fill the gap between traditional models and modern deep learning
approaches for complex time series. Stanza strikes a balance between
competitive forecasting accuracy and probabilistic, interpretable inference for
highly structured time series. In particular, Stanza achieves forecasting
accuracy competitive with deep LSTMs on real-world datasets, especially for
multi-step ahead forecasting.
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