A deep ranking cost-sensitive multi-label model is introduced for distant supervision relation extraction that models class ties between relations via ranking losses and rescales costs for imbalance.
Denoising Distant Supervision for Relation Extraction via Instance-Level Adversarial Training
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abstract
Existing neural relation extraction (NRE) models rely on distant supervision and suffer from wrong labeling problems. In this paper, we propose a novel adversarial training mechanism over instances for relation extraction to alleviate the noise issue. As compared with previous denoising methods, our proposed method can better discriminate those informative instances from noisy ones. Our method is also efficient and flexible to be applied to various NRE architectures. As shown in the experiments on a large-scale benchmark dataset in relation extraction, our denoising method can effectively filter out noisy instances and achieve significant improvements as compared with the state-of-the-art models.
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cs.CL 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Deep Ranking Based Cost-sensitive Multi-label Learning for Distant Supervision Relation Extraction
A deep ranking cost-sensitive multi-label model is introduced for distant supervision relation extraction that models class ties between relations via ranking losses and rescales costs for imbalance.