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A ROBUST JOINT-TRAINING GRAPHNEURALNETWORKS MODEL FOR EVENT DETECTIONWITHSYMMETRY AND A NOISYLABELS

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Author :  Mingxiang Li1 , Huange Xing 1* , Tengyun Wang 2 , Jiaxuan Dai1 , and Kaiming Xiao

Affiliation :  Naval University of Engineering, Wuhan, China 2National University of Defense Technology, Changsha, China

Country :  China

Category :  NLP

Volume, Issue, Month, Year :  12, 2, April, 2023

Abstract :


Events are the core element of information in descriptive corpus. Although many progresses have beenmade in Event Detection (ED), it is still a challenge in Natural Language Processing (NLP) to detect event information from data with unavoidable noisy labels. A robust Joint-training Graph ConvolutionNetworks (JT-GCN) model is proposed to meet the challenge of ED tasks with noisy labels in this paper. Specifically, we first employ two Graph Convolution Networks with Edge Enhancement (EE-GCN) tomake predictions simultaneously. A joint loss combining the detection loss and the contrast loss fromtwonetworks is then calculated for training. Meanwhile, a small-loss selection mechanism is introduced tomitigate the impact of mislabeled samples in networks training process. These two networks gradually reach an agreement on the ED tasks as joint-training progresses. Corrupted data with label noise are generated from the benchmark dataset ACE2005. Experiments on ED tasks has been conducted with bothsymmetry and asymmetry label noise on dif erent level. The experimental results show that the proposedmodel is robust to the impact of label noise and superior to the state-of-the-art models for EDtasks.

Keyword :  Natural Language Processing

Journal/ Proceedings Name :  https://aircconline.com/ijnlc/V12N2/12223ijnlc09.pdf

URL :  https://airccse.org/journal/ijnlc/vol12.html

User Name : Darren
Posted 06-08-2025 on 23:33:29 AEDT



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