Preserving Temporal Dynamics in Time Series Generation
Ci Lin, Futong Li, Tet Yeap, and Iluju Kiringa

TL;DR
This paper introduces an MCMC-based framework to enhance the fidelity of synthetic multivariate time series by preserving temporal dynamics and transition laws, addressing limitations of existing GAN approaches.
Contribution
It proposes a model-agnostic MCMC method that corrects distribution shifts in generated time series, explicitly maintaining temporal transition consistency.
Findings
Improved autocorrelation and skewness alignment in synthetic data.
Enhanced predictive and discriminative scores across multiple datasets.
Theoretical analysis of deviation accumulation in sequential generative models.
Abstract
Time-series data augmentation plays a crucial role in regression-oriented forecasting tasks, where limited data restricts the performance of deep learning models. While Generative Adversarial Networks (GANs) have shown promise in synthetic time-series generation, existing approaches primarily focus on matching marginal data distributions and often overlook the temporal dynamics that naturally exist in the original multivariate time series. When generating multivariate time series, this mismatch leads to distribution shift and temporal drift, thereby degrading the fidelity of the synthetic sequences. In this work, we propose a model-agnostic Markov Chain Monte Carlo (MCMC)-based framework to mitigate distribution shift and preserve temporal dynamics in synthetic time series. We provide a theoretical analysis of how conditional generative models accumulate deviations under sequential…
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