2023
DOI: 10.48550/arxiv.2303.10856
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Revisiting Realistic Test-Time Training: Sequential Inference and Adaptation by Anchored Clustering Regularized Self-Training

Abstract: Deploying models on target domain data subject to distribution shift requires adaptation. Test-time training (TTT) emerges as a solution to this adaptation under a realistic scenario where access to full source domain data is not available, and instant inference on the target domain is required. Despite many efforts into TTT, there is a confusion over the experimental settings, thus leading to unfair comparisons. In this work, we first revisit TTT assumptions and categorize TTT protocols by two key factors. Am… Show more

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“…A recent study revealed that self-training is effective for TTA (Su et al 2023), however without additional regularizations self-training is easily subject to confirmation bias (Arazo et al 2020). This issue would only exacerbate when test data distribution is highly imbalanced, thus leading to over adaptation or collapsed predictions.…”
Section: Tri-net Self-trainingmentioning
confidence: 99%
“…A recent study revealed that self-training is effective for TTA (Su et al 2023), however without additional regularizations self-training is easily subject to confirmation bias (Arazo et al 2020). This issue would only exacerbate when test data distribution is highly imbalanced, thus leading to over adaptation or collapsed predictions.…”
Section: Tri-net Self-trainingmentioning
confidence: 99%