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PAS: Estimating the target accuracy before domain adaptation

About

The goal of domain adaptation is to make predictions for unlabeled samples from a target domain with the help of labeled samples from a different but related source domain. The performance of domain adaptation methods is highly influenced by the choice of source domain and pre-trained feature extractor. However, the selection of source data and pre-trained model is not trivial due to the absence of a labeled validation set for the target domain and the large number of available pre-trained models. In this work, we propose PAS, a novel score designed to estimate the transferability of a source domain set and a pre-trained feature extractor to a target classification task before actually performing domain adaptation. PAS leverages the generalization power of pre-trained models and assesses source-target compatibility based on the pre-trained feature embeddings. We integrate PAS into a framework that indicates the most relevant pre-trained model and source domain among multiple candidates, thus improving target accuracy while reducing the computational overhead. Extensive experiments on image classification benchmarks demonstrate that PAS correlates strongly with actual target accuracy and consistently guides the selection of the best-performing pre-trained model and source domain for adaptation.

Raphaella Diniz, Jackson de Faria, Martin Ester• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationOffice-31
Average Accuracy100
308
Image ClassificationOffice-Home v1 (target set)
Pearson Correlation Coefficient0.81
24
ClassificationImageCLEF
I -> P Rate0.0036
23
Image ClassificationDomainNet
Accuracy (avg)76.3
13
Transferability EstimationDomainNet
Pearson Correlation Coefficient0.53
4
Transferability EstimationOffice-Home
Pearson Correlation0.76
4
Transferability EstimationOffice-31
Pearson Correlation Coefficient0.63
4
Transferability EstimationImageCLEF
Pearson Correlation0.44
4
Transferability EstimationTotal All Benchmarks
Pearson Correlation (PCC)0.83
4
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