Test-time Assessment of a Model's Performance on Unseen Domains via Optimal Transport
Akshay Mehra, Yunbei Zhang, and Jihun Hamm

TL;DR
This paper introduces a test-time metric based on Optimal Transport that accurately predicts a model's performance on unseen domains using only unlabeled test data and source domain information.
Contribution
It proposes a novel Optimal Transport-based metric for estimating model performance on unseen domains solely from test data and source domain statistics.
Findings
The metric is highly correlated with actual model performance on unseen domains.
It outperforms entropy-based metrics in predicting unseen domain performance.
Demonstrated effectiveness on standard benchmark datasets and corruptions.
Abstract
Gauging the performance of ML models on data from unseen domains at test-time is essential yet a challenging problem due to the lack of labels in this setting. Moreover, the performance of these models on in-distribution data is a poor indicator of their performance on data from unseen domains. Thus, it is essential to develop metrics that can provide insights into the model's performance at test time and can be computed only with the information available at test time (such as their model parameters, the training data or its statistics, and the unlabeled test data). To this end, we propose a metric based on Optimal Transport that is highly correlated with the model's performance on unseen domains and is efficiently computable only using information available at test time. Concretely, our metric characterizes the model's performance on unseen domains using only a small amount of…
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Taxonomy
TopicsNon-Destructive Testing Techniques · Advancements in Photolithography Techniques · Geophysical Methods and Applications
