Graph2TS: Structure-Controlled Time Series Generation via Quantile-Graph VAEs

arXiv cs.LG / 3/23/2026

💬 OpinionSignals & Early TrendsModels & Research

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.

Abstract

Although recent generative models can produce time series with close marginal distributions, they often face a fundamental tension between preserving global temporal structure and modeling stochastic local variations, particularly for highly volatile signals with weak or irregular periodicity. Direct distribution matching in such settings can amplify noise or suppress meaningful temporal patterns. In this work, we propose a structure-residual perspective on time-series generation, viewing temporal data as the combination of a structural backbone and stochastic residual dynamics, thereby motivating the separation of global organization from sample-level variability. Based on this insight, we represent time-series structure using a quantile-based transition graph that compactly captures global distributional and temporal dependencies. Building on this representation, we propose Graph2TS, a quantile-graph conditioned variational autoencoder that performs cross-modal generation from structural graphs to time series. By conditioning generation on structure rather than labels or metadata, the model preserves global temporal organization while enabling controlled stochastic variation. Experiments on diverse datasets, including sunspot, electricity load, ECG, and EEG signals, demonstrate improved distributional fidelity, temporal alignment, and representativeness compared to diffusion- and GAN-based baselines, highlighting structure-controlled and cross-modal generation as a promising direction for time-series modeling.

Graph2TS: Structure-Controlled Time Series Generation via Quantile-Graph VAEs | AI Navigate