Early Rumor Detection Based on Deep Recurrent Q-Learning

Online social networks provide convenient conditions for the spread of rumors, and false rumors bring great harm to social life. Rumor dissemination is a process, and effective identification of rumors in the early stage of their appearance will reduce the negative impact of false rumors. This paper...

Full description

Bibliographic Details
Main Authors: Wei Wang, Yuchen Qiu, Shichang Xuan, Wu Yang
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Security and Communication Networks
Online Access:http://dx.doi.org/10.1155/2021/5569064
id doaj-bcd75ac7332d415886555937472f4b4b
record_format Article
spelling doaj-bcd75ac7332d415886555937472f4b4b2021-06-14T00:17:56ZengHindawi-WileySecurity and Communication Networks1939-01222021-01-01202110.1155/2021/5569064Early Rumor Detection Based on Deep Recurrent Q-LearningWei Wang0Yuchen Qiu1Shichang Xuan2Wu Yang3Information Security Research CenterInformation Security Research CenterInformation Security Research CenterInformation Security Research CenterOnline social networks provide convenient conditions for the spread of rumors, and false rumors bring great harm to social life. Rumor dissemination is a process, and effective identification of rumors in the early stage of their appearance will reduce the negative impact of false rumors. This paper proposes a novel early rumor detection (ERD) model based on reinforcement learning. In the rumor detection part, a dual-engine rumor detection model based on deep learning is proposed to realize the differential feature extraction of original tweets and their replies. A double self-attention (DSA) mechanism is proposed, which can eliminate data redundancy in sentences and words at the same time. In the reinforcement learning part, an ERD model based on Deep Recurrent Q-Learning Network (DRQN) is proposed, which uses LSTM to learn the state sequence features, and the optimization strategy of the reward function is to take into account the timeliness and accuracy of rumor detection. Experiments show that, compared with existing methods, the ERD model proposed in this paper has a greater improvement in the timeliness and detection rate of rumor detection.http://dx.doi.org/10.1155/2021/5569064
collection DOAJ
language English
format Article
sources DOAJ
author Wei Wang
Yuchen Qiu
Shichang Xuan
Wu Yang
spellingShingle Wei Wang
Yuchen Qiu
Shichang Xuan
Wu Yang
Early Rumor Detection Based on Deep Recurrent Q-Learning
Security and Communication Networks
author_facet Wei Wang
Yuchen Qiu
Shichang Xuan
Wu Yang
author_sort Wei Wang
title Early Rumor Detection Based on Deep Recurrent Q-Learning
title_short Early Rumor Detection Based on Deep Recurrent Q-Learning
title_full Early Rumor Detection Based on Deep Recurrent Q-Learning
title_fullStr Early Rumor Detection Based on Deep Recurrent Q-Learning
title_full_unstemmed Early Rumor Detection Based on Deep Recurrent Q-Learning
title_sort early rumor detection based on deep recurrent q-learning
publisher Hindawi-Wiley
series Security and Communication Networks
issn 1939-0122
publishDate 2021-01-01
description Online social networks provide convenient conditions for the spread of rumors, and false rumors bring great harm to social life. Rumor dissemination is a process, and effective identification of rumors in the early stage of their appearance will reduce the negative impact of false rumors. This paper proposes a novel early rumor detection (ERD) model based on reinforcement learning. In the rumor detection part, a dual-engine rumor detection model based on deep learning is proposed to realize the differential feature extraction of original tweets and their replies. A double self-attention (DSA) mechanism is proposed, which can eliminate data redundancy in sentences and words at the same time. In the reinforcement learning part, an ERD model based on Deep Recurrent Q-Learning Network (DRQN) is proposed, which uses LSTM to learn the state sequence features, and the optimization strategy of the reward function is to take into account the timeliness and accuracy of rumor detection. Experiments show that, compared with existing methods, the ERD model proposed in this paper has a greater improvement in the timeliness and detection rate of rumor detection.
url http://dx.doi.org/10.1155/2021/5569064
work_keys_str_mv AT weiwang earlyrumordetectionbasedondeeprecurrentqlearning
AT yuchenqiu earlyrumordetectionbasedondeeprecurrentqlearning
AT shichangxuan earlyrumordetectionbasedondeeprecurrentqlearning
AT wuyang earlyrumordetectionbasedondeeprecurrentqlearning
_version_ 1721378845858201600