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Associate Professor

Supervisor of Master's Candidates

E-Mail:

Date of Employment:2025-05-21

School/Department:软件学院

Education Level:博士研究生

Business Address:新主楼C808,G517

Gender:Male

Contact Information:18810578537

Degree:博士

Status:Employed

Alma Mater:北京航空航天大学

Discipline:Software Engineering
Computer Science and Technology

Junfan Chen

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Gender:Male

Education Level:博士研究生

Alma Mater:北京航空航天大学

Paper

Current position: Home / Paper
Parameter-free Automatically Prompting: A Latent Pseudo Label Mapping Model for Prompt-based Learning

Journal:Findings of the Association for Computational Linguistics: EMNLP 2022 (EMNLP)
Abstract:Prompt-based learning has achieved excellent performance in few-shot learning by mapping the outputs of the pre-trained language model to the labels with the help of a label mapping component. Existing manual label mapping (MLM) methods achieve good results but heavily rely on expensive human knowledge. Automatic label mapping (ALM) methods that learn the mapping functions with extra parameters have shown their potentiality. However, no effective ALM model comparable to MLM methods is developed yet due to the limited data. In this paper, we propose a Latent Pseudo Label Mapping (LPLM) method that optimizes the label mapping without human knowledge and extra parameters. LPLM is built upon a probabilistic latent model and is iteratively self-improved with the EM-style algorithm. The empirical results demonstrate that our LPLM method is superior to the mainstream ALM methods and significantly outperforms the SOTA method in few-shot classification tasks. Moreover, LPLM also shows impressively better performance than the vanilla MLM method which requires extra task-specific prior knowledge.
Co-author:Jirui Qi,Richong Zhang,Junfan Chen, Jaein Kim, Yongyi Mao
Indexed by:国际学术会议
Page Number:3952-3962
Translation or Not:no
Date of Publication:2022-01-01