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Main Authors: He, Congqing, Zhu, Xiangyu, Le, Yuquan, Liu, Yuzhong, Yin, Jianhong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2401.11408
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author He, Congqing
Zhu, Xiangyu
Le, Yuquan
Liu, Yuzhong
Yin, Jianhong
author_facet He, Congqing
Zhu, Xiangyu
Le, Yuquan
Liu, Yuzhong
Yin, Jianhong
contents Event extraction lies at the cores of investment analysis and asset management in the financial field, and thus has received much attention. The 2019 China conference on knowledge graph and semantic computing (CCKS) challenge sets up a evaluation competition for event entity extraction task oriented to the finance field. In this task, we mainly focus on how to extract the event entity accurately, and recall all the corresponding event entity effectively. In this paper, we propose a novel model, Sequence Enhanced BERT Networks (SEBERTNets for short), which can inherit the advantages of the BERT,and while capturing sequence semantic information. In addition, motivated by recommendation system, we propose Hybrid Sequence Enhanced BERT Networks (HSEBERTNets for short), which uses a multi-channel recall method to recall all the corresponding event entity. The experimental results show that, the F1 score of SEBERTNets is 0.905 in the first stage, and the F1 score of HSEBERTNets is 0.934 in the first stage, which demonstarate the effectiveness of our methods.
format Preprint
id arxiv_https___arxiv_org_abs_2401_11408
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SEBERTNets: Sequence Enhanced BERT Networks for Event Entity Extraction Tasks Oriented to the Finance Field
He, Congqing
Zhu, Xiangyu
Le, Yuquan
Liu, Yuzhong
Yin, Jianhong
Computation and Language
Artificial Intelligence
Event extraction lies at the cores of investment analysis and asset management in the financial field, and thus has received much attention. The 2019 China conference on knowledge graph and semantic computing (CCKS) challenge sets up a evaluation competition for event entity extraction task oriented to the finance field. In this task, we mainly focus on how to extract the event entity accurately, and recall all the corresponding event entity effectively. In this paper, we propose a novel model, Sequence Enhanced BERT Networks (SEBERTNets for short), which can inherit the advantages of the BERT,and while capturing sequence semantic information. In addition, motivated by recommendation system, we propose Hybrid Sequence Enhanced BERT Networks (HSEBERTNets for short), which uses a multi-channel recall method to recall all the corresponding event entity. The experimental results show that, the F1 score of SEBERTNets is 0.905 in the first stage, and the F1 score of HSEBERTNets is 0.934 in the first stage, which demonstarate the effectiveness of our methods.
title SEBERTNets: Sequence Enhanced BERT Networks for Event Entity Extraction Tasks Oriented to the Finance Field
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2401.11408