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Evolutionary Verbalizer Search for Prompt-based Few Shot Text Classification (2306.10514v1)

Published 18 Jun 2023 in cs.CL

Abstract: Recent advances for few-shot text classification aim to wrap textual inputs with task-specific prompts to cloze questions. By processing them with a masked LLM to predict the masked tokens and using a verbalizer that constructs the mapping between predicted words and target labels. This approach of using pre-trained LLMs is called prompt-based tuning, which could remarkably outperform conventional fine-tuning approach in the low-data scenario. As the core of prompt-based tuning, the verbalizer is usually handcrafted with human efforts or suboptimally searched by gradient descent. In this paper, we focus on automatically constructing the optimal verbalizer and propose a novel evolutionary verbalizer search (EVS) algorithm, to improve prompt-based tuning with the high-performance verbalizer. Specifically, inspired by evolutionary algorithm (EA), we utilize it to automatically evolve various verbalizers during the evolutionary procedure and select the best one after several iterations. Extensive few-shot experiments on five text classification datasets show the effectiveness of our method.

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Authors (4)
  1. Tongtao Ling (3 papers)
  2. Lei Chen (485 papers)
  3. Yutao Lai (3 papers)
  4. Hai-Lin Liu (2 papers)
Citations (3)