Few-Shot Open Relation Extraction with Gaussian Prototype and Adaptive Margin

34 Pages Posted: 12 May 2025

See all articles by Tianlin Guo

Tianlin Guo

affiliation not provided to SSRN

Lingling Zhang

affiliation not provided to SSRN

Jiaxin Wang

affiliation not provided to SSRN

Yunkuo Lei

affiliation not provided to SSRN

Yifei Li

affiliation not provided to SSRN

Zhuoya Zhao

affiliation not provided to SSRN

Haofen Wang

Tongji University

Yaqiang Wu

affiliation not provided to SSRN

Jun Liu

Xi'an Jiaotong University (XJTU)

Abstract

Few-shot relation extraction with none-of-the-above (FsRE with NOTA) aims at predicting labels in few-shot scenarios with unknown classes. FsRE with NOTA is more challenging than the conventional few-shot relation extraction task, since the boundaries of unknown classes are complex and difficult to learn. Meta-learning based methods, especially prototype-based methods, are the mainstream solutions to this task. They obtain the classification boundary by learning the sample distribution of each class. However, their performance is limited because few-shot overfitting and NOTA boundary confusion lead to misclassification between known and unknown classes. To this end, we propose a novel framework based on Gaussian prototype and adaptive margin named GPAM for FsRE with NOTA, which includes three modules, semi-factual representation, GMM-prototype metric learning and decision boundary learning. The first two modules obtain better representations to solve the few-shot problem through debiased information enhancement and Gaussian space distance measurement. The third module learns more accurate classification boundaries and prototypes through adaptive margin and negative sampling. In the training procedure of GPAM, we use contrastive learning loss to comprehensively consider the effects of range and margin on the classification of known and unknown classes to ensure the model's stability and robustness. Sufficient experiments and ablations on the FewRel dataset show that GPAM surpasses previous prototype methods and achieves state-of-the-art performance.

Keywords: Relation Extraction with None-of-the-Above, Few-shot learning, Semi-Facutal Representation, Gaussian Distance Metric, Prototype learning

Suggested Citation

Guo, Tianlin and Zhang, Lingling and Wang, Jiaxin and Lei, Yunkuo and Li, Yifei and Zhao, Zhuoya and Wang, Haofen and Wu, Yaqiang and Liu, Jun, Few-Shot Open Relation Extraction with Gaussian Prototype and Adaptive Margin. Available at SSRN: https://ssrn.com/abstract=5251204 or http://dx.doi.org/10.2139/ssrn.5251204

Tianlin Guo

affiliation not provided to SSRN ( email )

No Address Available

Lingling Zhang (Contact Author)

affiliation not provided to SSRN ( email )

No Address Available

Jiaxin Wang

affiliation not provided to SSRN ( email )

No Address Available

Yunkuo Lei

affiliation not provided to SSRN ( email )

No Address Available

Yifei Li

affiliation not provided to SSRN ( email )

No Address Available

Zhuoya Zhao

affiliation not provided to SSRN ( email )

No Address Available

Haofen Wang

Tongji University ( email )

1239 Siping Road
Shanghai, 200092
China

Yaqiang Wu

affiliation not provided to SSRN ( email )

No Address Available

Jun Liu

Xi'an Jiaotong University (XJTU) ( email )

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
9
Abstract Views
51
PlumX Metrics