Rethink the Evaluation Protocol of Model Merging on Classification Task
Model merging combines multiple fine-tuned models into a single one via parameter fusion, achieving improvements across many tasks. However, in the classification task, we find a misalignment issue between merging outputs and the fine-tuned classifier, which limits its effectiveness. In this paper,...
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Zusammenfassung: | Model merging combines multiple fine-tuned models into a single one via
parameter fusion, achieving improvements across many tasks. However, in the
classification task, we find a misalignment issue between merging outputs and
the fine-tuned classifier, which limits its effectiveness. In this paper, we
demonstrate the following observations: (1) The embedding quality of the
merging outputs is already very high, and the primary reason for the
differences in classification performance lies in the misalignment issue. (2)
We propose FT-Classifier, a new protocol that fine-tunes an aligned classifier
with few-shot samples to alleviate misalignment, enabling better evaluation of
merging outputs and improved classification performance. (3) The misalignment
is relatively straightforward and can be formulated as an orthogonal
transformation. Experiments demonstrate the existence of misalignment and the
effectiveness of our FT-Classifier evaluation protocol. |
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DOI: | 10.48550/arxiv.2412.13526 |