Graph2TS: Structure-Controlled Time Series Generation via Quantile-Graph VAEs
arXiv cs.LG / 3/23/2026
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Key Points
- The paper introduces a structure-residual view of time-series data, separating a global structural backbone from stochastic residual dynamics to preserve temporal organization while modeling variability.
- It represents structure with a quantile-based transition graph that compactly captures global distributional and temporal dependencies in time series.
- Graph2TS uses a quantile-graph conditioned variational autoencoder to generate time series cross-modally from structure rather than labels or metadata.
- Experiments on sunspot, electricity load, ECG, and EEG demonstrate improved distributional fidelity, temporal alignment, and representativeness versus diffusion- and GAN-based baselines.
- The work highlights structure-controlled and cross-modal generation as a promising direction for time-series modeling.
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