Automatic Multi-Label Prompting: Simple and Interpretable Few-Shot Classification
Abstract
Automatic Multi-Label Prompting (AMuLaP) automatically selects label mappings for few-shot text classification using one-to-many label mappings and a statistics-based algorithm, achieving competitive GLUE benchmark performance.
Prompt-based learning (i.e., prompting) is an emerging paradigm for exploiting knowledge learned by a pretrained language model. In this paper, we propose Automatic Multi-Label Prompting (AMuLaP), a simple yet effective method to automatically select label mappings for few-shot text classification with prompting. Our method exploits one-to-many label mappings and a statistics-based algorithm to select label mappings given a prompt template. Our experiments demonstrate that AMuLaP achieves competitive performance on the GLUE benchmark without human effort or external resources.
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