Semi-Supervised Event Extraction Incorporated With Topic Event Frame

Supervised Meta-event extraction suffers from two limitations: (1) The extracted meta-events only contain local semantic information and do not present the core content of the text; (2) model performance is easily degraded because of labeled samples with insufficient number and poor quality. To over...

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Veröffentlicht in:Journal of database management 2023-02, Vol.34 (1), p.1-26
Hauptverfasser: Wu, Gongqing, Miao, Zhuochun, Hu, Shengjie, Wang, Yinghuan, Zhang, Zan, Bao, Xianyu
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Sprache:eng
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Zusammenfassung:Supervised Meta-event extraction suffers from two limitations: (1) The extracted meta-events only contain local semantic information and do not present the core content of the text; (2) model performance is easily degraded because of labeled samples with insufficient number and poor quality. To overcome these limitations, this study presents an approach called frame-incorporated semi-supervised topic event extraction (FISTEE), which aims to extract topic events containing global semantic information. Inspired by the frame-based knowledge representation, a topic event frame is developed to integrate multiple meta-events into a topic event. Combined with the tri-training algorithm, a strategy for selecting unlabeled samples is designed to expand the training sets, and labeling models based on conditional random field (CRF) are constructed to label meta-events. The experimental results show that the event extraction performance of FISTEE is better than supervised learning-based approaches. Furthermore, the extracted topic events can present the core content of the text.
ISSN:1063-8016
1533-8010
DOI:10.4018/JDM.318453