L-GTA: Latent Generative Modeling for Time Series Augmentation
Abstract
Data augmentation is becoming increasingly important across various areas of time series analysis, including forecasting, classification, and anomaly detection.
We introduce the Latent Generative Temporal Augmentation (L-GTA) model, a generative approach based on a Variational Autoencoder with a Bi-LSTM backbone and temporal self-attention.
The model learns a latent representation for each timestep and applies controlled perturbations such as jittering, magnitude warping, or drift.
We define an equivariance objective to further encourage consistency between latent space and data space transformations.
As a result, the augmented samples show predictable and interpretable transformation signatures.
We evaluate L-GTA on several real-world datasets against SOTA generative methods, including TimeGAN, TimeVAE, and Diffusion-TS, as well as direct transformation approaches.
Across experiments on downstream forecasting, distribution fidelity, and controllability of transformation intensity, L-GTA consistently outperforms competing approaches.
In downstream forecasting, it reduces prediction error by up to 26% compared to the strongest generative method and 27% relative to using the original data without augmentation.
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