DPNPED: Dynamic Perception Network for Polysemous Event Trigger Detection

Event detection is the process of analyzing event streams to detect the occurrences of events and categorize them. General methods for solving this problem are to identify and classify event triggers. Most previous works focused on improving the recognition and classification networks which neglecte...

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Main Authors: Jun Xu, Mengshu Sun
Format: Article
Language:English
Published: IEEE 2022-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9905582/
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author Jun Xu
Mengshu Sun
author_facet Jun Xu
Mengshu Sun
author_sort Jun Xu
collection DOAJ
description Event detection is the process of analyzing event streams to detect the occurrences of events and categorize them. General methods for solving this problem are to identify and classify event triggers. Most previous works focused on improving the recognition and classification networks which neglected the representation of polysemous event triggers. Polysemy is habitually somewhat confusing in semantic understanding and hard to detect. To improve polysemous trigger detection, this paper proposes a novel framework called DPNPED, which dynamically adjusts the network depth between polysemous and common words. Firstly, to measure the polysemy, the difficulty factor is devised based on the frequency of a word as an event trigger. Secondly, the DPNPED utilizes a confidence measure to automatically adjust the network depth by comparing the predicted and initial probability distribution. Finally, our model applies focal loss to dynamically integrate the difficulty factor and confidence measure to enhance the learning of polysemous triggers. The experimental results show that our method achieves a noticeable improvement in polysemous event trigger detection.
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spelling doaj.art-e47a3746af3b47a7998a2ae8f613f7f92022-12-22T02:23:28ZengIEEEIEEE Access2169-35362022-01-011010480110481010.1109/ACCESS.2022.32106979905582DPNPED: Dynamic Perception Network for Polysemous Event Trigger DetectionJun Xu0https://orcid.org/0000-0001-9565-6106Mengshu Sun1https://orcid.org/0000-0003-2639-9462Ant Financial Services Group, Zhejiang, Hangzhou, ChinaAnt Financial Services Group, Zhejiang, Hangzhou, ChinaEvent detection is the process of analyzing event streams to detect the occurrences of events and categorize them. General methods for solving this problem are to identify and classify event triggers. Most previous works focused on improving the recognition and classification networks which neglected the representation of polysemous event triggers. Polysemy is habitually somewhat confusing in semantic understanding and hard to detect. To improve polysemous trigger detection, this paper proposes a novel framework called DPNPED, which dynamically adjusts the network depth between polysemous and common words. Firstly, to measure the polysemy, the difficulty factor is devised based on the frequency of a word as an event trigger. Secondly, the DPNPED utilizes a confidence measure to automatically adjust the network depth by comparing the predicted and initial probability distribution. Finally, our model applies focal loss to dynamically integrate the difficulty factor and confidence measure to enhance the learning of polysemous triggers. The experimental results show that our method achieves a noticeable improvement in polysemous event trigger detection.https://ieeexplore.ieee.org/document/9905582/Artificial intelligencetext miningtext recognition
spellingShingle Jun Xu
Mengshu Sun
DPNPED: Dynamic Perception Network for Polysemous Event Trigger Detection
IEEE Access
Artificial intelligence
text mining
text recognition
title DPNPED: Dynamic Perception Network for Polysemous Event Trigger Detection
title_full DPNPED: Dynamic Perception Network for Polysemous Event Trigger Detection
title_fullStr DPNPED: Dynamic Perception Network for Polysemous Event Trigger Detection
title_full_unstemmed DPNPED: Dynamic Perception Network for Polysemous Event Trigger Detection
title_short DPNPED: Dynamic Perception Network for Polysemous Event Trigger Detection
title_sort dpnped dynamic perception network for polysemous event trigger detection
topic Artificial intelligence
text mining
text recognition
url https://ieeexplore.ieee.org/document/9905582/
work_keys_str_mv AT junxu dpnpeddynamicperceptionnetworkforpolysemouseventtriggerdetection
AT mengshusun dpnpeddynamicperceptionnetworkforpolysemouseventtriggerdetection