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Ensemble Making Few-Shot Learning Stronger
Author(s) -
Qiang Lin,
Yongbin Liu,
Wen Wen,
Zhihua Tao,
Chunping Ouyang,
Yaping Wan
Publication year - 2022
Publication title -
data intelligence
Language(s) - English
Resource type - Journals
eISSN - 2096-7004
pISSN - 2641-435X
DOI - 10.1162/dint_a_00144
Subject(s) - computer science , relation (database) , variance (accounting) , artificial intelligence , machine learning , ensemble learning , economic shortage , ensemble forecasting , shot (pellet) , feature (linguistics) , data mining , linguistics , philosophy , chemistry , accounting , organic chemistry , government (linguistics) , business
Few-shot learning has been proposed and rapidly emerging as a viable means for completing various tasks. Many few-shot models have been widely used for relation learning tasks. However, each of these models has a shortage of capturing a certain aspect of semantic features, for example, CNN on long-range dependencies part, Transformer on local features. It is difficult for a single model to adapt to various relation learning, which results in the high variance problem. Ensemble strategy could be competitive on improving the accuracy of few-shot relation extraction and mitigating high variance risks. This paper explores an ensemble approach to reduce the variance and introduces fine-tuning and feature attention strategies to calibrate relation-level features. Results on several few-shot relation learning tasks show that our model significantly outperforms the previous state-of-the-art models.

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