Основные понятия
This research paper introduces GPAM, a novel framework for few-shot relation extraction with NOTA (none-of-the-above), addressing the challenges of limited data and unknown relation classification by employing Gaussian prototype and adaptive margin techniques.
Статистика
The total accuracy of GPAM exceeds the previous best conventional model MCMN, improving by 5.11%, 4.15%, 8.19%, and 7.13% on four tasks respectively.
GPAM improves the accuracy of NOTA class extraction by 8.85% ∼10.30% at NOTA rate 0.5 compared to the previous best-performing method.
When the number of shots increases from 1 to 5, the accuracy for the NOTA class increases from 84.25 to 93.25 at NOTA rate 0.15, and from 90.75 to 96.10 at NOTA rate 0.5.
As the NOTA rate increases, the performance of traditional models such as Proto-BERT declines to varying degrees.
GPT-4o's performance drops dramatically after adding NOTA samples compared to non-NOTA.
GLM-4's performance gradually decreases as the NOTA rate increases. It drops by 12.92% compared to non-NOTA when NOTA is 0.5.
When the nota rate is 0.5, the introduction of debiased views significantly improves the performance by 5.09% and 6.30% respectively.
Mahalanobis distance shows a more significant improvement in the 5-shot scenario, with increases of 7.70% and 6.38%, respectively.
Multi-prompt strategy has a more significant effect when the NOTA rate is higher, with improvements of 8.80% and 7.17% respectively.
In the other three complex tasks, the presence or absence of margin has a great impact, with an increase of more than 6%.
The PNS strategy shows a modest improvement of only 1.12% for the 5-way-1-shot task with the NOTA rate of 0.15, while it achieved over 3% improvement for the other three tasks.
Цитаты
"To solve this difficult subject, we propose the framework GPAM, a prototypical learning method using Gaussian Prototype and Adaptive Margin."
"Our GPAM is mainly composed of three key modules, the semi-facutal representation, the GMM-prototype metric learning and the decision boundary learning module."
"Sufficient experiments and ablations on the FewRel dataset show that GPAM surpasses previous prototype methods and achieves state-of-the-art performance."