RG-TTA: Regime-Guided Meta-Control for Test-Time Adaptation in Streaming Time Series
Indar Kumar, Akanksha Tiwari, Sai Krishna Jasti, Ankit Hemant Lade

TL;DR
RG-TTA introduces a regime-aware meta-controller that dynamically adjusts adaptation intensity for streaming time series forecasting, improving accuracy and efficiency across diverse datasets.
Contribution
It proposes a novel regime-guided meta-control mechanism that modulates test-time adaptation based on distributional similarity, enhancing model performance and efficiency.
Findings
RG-TTA achieves lower MSE in 69.6% of experiments.
RG-EWC reduces MSE by 14.1% over standalone EWC.
RG-TTA reduces MSE by 5.7% and runs 5.5% faster.
Abstract
Test-time adaptation (TTA) enables neural forecasters to adapt to distribution shifts in streaming time series, but existing methods apply the same adaptation intensity regardless of the nature of the shift. We propose Regime-Guided Test-Time Adaptation (RG-TTA), a meta-controller that continuously modulates adaptation intensity based on distributional similarity to previously-seen regimes. Using an ensemble of Kolmogorov-Smirnov, Wasserstein-1, feature-distance, and variance-ratio metrics, RG-TTA computes a similarity score for each incoming batch and uses it to (i) smoothly scale the learning rate -- more aggressive for novel distributions, conservative for familiar ones -- and (ii) control gradient effort via loss-driven early stopping rather than fixed budgets, allowing the system to allocate exactly the effort each batch requires. As a supplementary mechanism, RG-TTA gates…
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