LGAIMay 1, 2025

Test-time Correlation Alignment

arXiv:2505.00533v24 citationsh-index: 2ICML
Originality Incremental advance
AI Analysis

This addresses test-time adaptation for machine learning models under privacy constraints, offering a practical solution with significant efficiency gains, though it is incremental as it builds on existing TTA methods.

The paper tackles the problem of deep neural networks degrading under distribution shifts by proposing Test-time Correlation Alignment (TCA) methods, which achieve higher accuracy with only 4% GPU memory and 0.6% computation time compared to the best baseline and outperform existing methods on CLIP by over 1.86%.

Deep neural networks often degrade under distribution shifts. Although domain adaptation offers a solution, privacy constraints often prevent access to source data, making Test-Time Adaptation (TTA, which adapts using only unlabeled test data) increasingly attractive. However, current TTA methods still face practical challenges: (1) a primary focus on instance-wise alignment, overlooking CORrelation ALignment (CORAL) due to missing source correlations; (2) complex backpropagation operations for model updating, resulting in overhead computation and (3) domain forgetting. To address these challenges, we provide a theoretical analysis to investigate the feasibility of Test-time Correlation Alignment (TCA), demonstrating that correlation alignment between high-certainty instances and test instances can enhance test performances with a theoretical guarantee. Based on this, we propose two simple yet effective algorithms: LinearTCA and LinearTCA+. LinearTCA applies a simple linear transformation to achieve both instance and correlation alignment without additional model updates, while LinearTCA+ serves as a plug-and-play module that can easily boost existing TTA methods. Extensive experiments validate our theoretical insights and show that TCA methods significantly outperforms baselines across various tasks, benchmarks and backbones. Notably, LinearTCA achieves higher accuracy with only 4% GPU memory and 0.6% computation time compared to the best TTA baseline. It also outperforms existing methods on CLIP over 1.86%.

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