Haitao Wang
2020
Towards Accurate and Consistent Evaluation: A Dataset for Distantly-Supervised Relation Extraction
Tong Zhu
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Haitao Wang
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Junjie Yu
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Xiabing Zhou
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Wenliang Chen
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Wei Zhang
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Min Zhang
Proceedings of the 28th International Conference on Computational Linguistics
In recent years, distantly-supervised relation extraction has achieved a certain success by using deep neural networks. Distant Supervision (DS) can automatically generate large-scale annotated data by aligning entity pairs from Knowledge Bases (KB) to sentences. However, these DS-generated datasets inevitably have wrong labels that result in incorrect evaluation scores during testing, which may mislead the researchers. To solve this problem, we build a new dataset NYTH, where we use the DS-generated data as training data and hire annotators to label test data. Compared with the previous datasets, NYT-H has a much larger test set and then we can perform more accurate and consistent evaluation. Finally, we present the experimental results of several widely used systems on NYT-H. The experimental results show that the ranking lists of the comparison systems on the DS-labelled test data and human-annotated test data are different. This indicates that our human-annotated data is necessary for evaluation of distantly-supervised relation extraction.
2017
The representation and extraction of qunatitative information
Tianyong Hao
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Yunyan We
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Jiaqi Qiang
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Haitao Wang
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Kiyong Lee
Proceedings of the 13th Joint ISO-ACL Workshop on Interoperable Semantic Annotation (ISA-13)
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Co-authors
- Tianyong Hao 1
- Yunyan We 1
- Jiaqi Qiang 1
- Kiyong Lee 1
- Tong Zhu 1
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