LGAIDec 30, 2024

Class-based Subset Selection for Transfer Learning under Extreme Label Shift

arXiv:2501.00162v1h-index: 5
Originality Highly original
AI Analysis

This addresses a critical bottleneck in transfer learning for scenarios with significant distributional shifts, offering a novel approach to improve model adaptation.

The paper tackles the problem of few-shot transfer learning under extreme label shift by proposing a method that selects and weighs source classes to minimize Wasserstein distance between domains, achieving superior performance on several datasets, including cases with disjoint label spaces.

Existing work within transfer learning often follows a two-step process -- pre-training over a large-scale source domain and then finetuning over limited samples from the target domain. Yet, despite its popularity, this methodology has been shown to suffer in the presence of distributional shift -- specifically when the output spaces diverge. Previous work has focused on increasing model performance within this setting by identifying and classifying only the shared output classes between distributions. However, these methods are inherently limited as they ignore classes outside the shared class set, disregarding potential information relevant to the model transfer. This paper proposes a new process for few-shot transfer learning that selects and weighs classes from the source domain to optimize the transfer between domains. More concretely, we use Wasserstein distance to choose a set of source classes and their weights that minimize the distance between the source and target domain. To justify our proposed algorithm, we provide a generalization analysis of the performance of the learned classifier over the target domain and show that our method corresponds to a bound minimization algorithm. We empirically demonstrate the effectiveness of our approach (WaSS) by experimenting on several different datasets and presenting superior performance within various label shift settings, including the extreme case where the label spaces are disjoint.

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