Papers with low-resource applications

1 papers
Jointly Reparametrized Multi-Layer Adaptation for Efficient and Private Tuning (2023.findings-acl)

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Challenge: Efficient finetuning of pretrained language transformers requires a large number of tunable parameters.
Approach: They propose a language transformer finetuning strategy that introduces task-specific parameters in multiple transformer layers.
Outcome: The proposed method outperforms other methods with 4,100 parameters on GLUE tasks with 5% of full finetuning performance.

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