Diffusion-based Time Series Imputation and Forecasting with Structured State Space Models
About
The imputation of missing values represents a significant obstacle for many real-world data analysis pipelines. Here, we focus on time series data and put forward SSSD, an imputation model that relies on two emerging technologies, (conditional) diffusion models as state-of-the-art generative models and structured state space models as internal model architecture, which are particularly suited to capture long-term dependencies in time series data. We demonstrate that SSSD matches or even exceeds state-of-the-art probabilistic imputation and forecasting performance on a broad range of data sets and different missingness scenarios, including the challenging blackout-missing scenarios, where prior approaches failed to provide meaningful results.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Multivariate long-term series forecasting | Exchange (test) | MSE0.061 | 145 | |
| Multivariate Time-series Forecasting | ETTh1 (test) | MSE0.726 | 134 | |
| Multivariate Time-series Forecasting | Weather (test) | MSE0.349 | 124 | |
| Multivariate Time-series Forecasting | ETTm1 (test) | MSE0.464 | 67 | |
| Multivariate Time-series Forecasting | Electricity (test) | -- | 36 | |
| Reconstruction | SleepEDF | PRD37.04 | 8 | |
| Time Series Reconstruction | PTB-XL (test) | PRD23.69 | 8 |