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Three Heads Better than One:Pure Entity,Relation Label and Adversarial Training for Cross-domain Few-shot Relation Extraction

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摘要 In this paper,we study cross-domain relation extraction.Since new data mapping to feature spaces always differs from the previously seen data due to a domain shif,few-shot relation extraction often perform poorly.To solve the problems caused by cross-domain,we propose a method for combining the pure entity,relation labels and adversarial(PERLA).We first use entities and complete sentences for separate encoding to obtain context-independent entity features.Then,we combine relation labels which are useful for relation extraction to mitigate context noise.We combine adversarial to reduce the noise caused by cross-domain.We conducted experiments on the publicly available cross-domain relation extraction dataset Fewrel 2.o[1]o,and the results show that our approach improves accuracy and has better transferability for better adaptation to cross-domain tasks.
机构地区 School of Computer
出处 《Data Intelligence》 EI 2023年第3期807-823,共17页 数据智能(英文)
基金 The State Key Program of National Natural Science of China,Grant/Award Number:61533018 National Natural Science Foundation of China,Grant/Award Number:61402220 The Philosophy and Social Science Foundation of Hunan Province,Grant/Award Number:16YBA323 Natural Science Foundation of Hunan Province,Grant/Award Number:2020J4525,2022J30495 Scientific Research Fund of Hunan Provincial Education Department,Grant/Award Number:18B279,19A439.
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