Conditionally Identifiable Latent Representation for Multivariate Time Series with Structural Dynamics
About
We propose the Identifiable Variational Dynamic Factor Model (iVDFM), which learns latent factors from multivariate time series with identifiability guarantees. By applying iVAE-style conditioning to the innovation process driving the dynamics rather than to the latent states, we show that factors are identifiable up to permutation and component-wise affine (or monotone invertible) transformations. Linear diagonal dynamics preserve this identifiability and admit scalable computation via companion-matrix and Krylov methods. We demonstrate improved factor recovery on synthetic data, stable intervention accuracy on synthetic SCMs, and competitive probabilistic forecasting on real-world benchmarks.
Minkey Chang, Jae-Young Kim• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Probabilistic time series forecasting | ETTm2 | CRPS0.3397 | 22 | |
| Probabilistic time series forecasting | ETTh2 | CRPS0.2681 | 17 | |
| Probabilistic Forecasting | ETTh1 | CRPS0.2822 | 5 | |
| Probabilistic Forecasting | Weather | CRPS0.271 | 5 |
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