DGTR: Dynamic graph transformer for rumor detection
Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors. Existing propagation-based rumor detection methods represent propagation patterns as a static graph structure. They simply consider the struct...
Saved in:
Published in | Frontiers in research metrics and analytics Vol. 7; p. 1055348 |
---|---|
Main Authors | , , , , |
Format | Journal Article |
Language | English |
Published |
Switzerland
Frontiers Media S.A
11.01.2023
|
Subjects | |
Online Access | Get full text |
ISSN | 2504-0537 2504-0537 |
DOI | 10.3389/frma.2022.1055348 |
Cover
Abstract | Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors. Existing propagation-based rumor detection methods represent propagation patterns as a static graph structure. They simply consider the structure information of news distribution in social networks and disregard the temporal information. The dynamic graph is an effective modeling tool for both the structural and temporal information involved in the process of news dissemination. Existing dynamic graph representation learning approaches struggle to capture the long-range dependence of the structure and temporal sequence as well as the rich semantic association between full graph features and individual parts. We build a transformer-based dynamic graph representation learning approach for rumor identification DGTR to address the aforementioned challenges. We design a position embedding format for the graph data such that the original transformer model can be utilized for learning dynamic graph representations. The model can describe the structural long-range reliance between the dynamic graph nodes and the temporal long-range dependence between the temporal snapshots by employing a self-attention mechanism. In addition, the
CLS
token in transformer may model the rich semantic relationships between the complete graph and each subpart. Extensive experiments demonstrate the superiority of our model when compared to the state of the art. |
---|---|
AbstractList | Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors. Existing propagation-based rumor detection methods represent propagation patterns as a static graph structure. They simply consider the structure information of news distribution in social networks and disregard the temporal information. The dynamic graph is an effective modeling tool for both the structural and temporal information involved in the process of news dissemination. Existing dynamic graph representation learning approaches struggle to capture the long-range dependence of the structure and temporal sequence as well as the rich semantic association between full graph features and individual parts. We build a transformer-based dynamic graph representation learning approach for rumor identification DGTR to address the aforementioned challenges. We design a position embedding format for the graph data such that the original transformer model can be utilized for learning dynamic graph representations. The model can describe the structural long-range reliance between the dynamic graph nodes and the temporal long-range dependence between the temporal snapshots by employing a self-attention mechanism. In addition, the
token in transformer may model the rich semantic relationships between the complete graph and each subpart. Extensive experiments demonstrate the superiority of our model when compared to the state of the art. Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors. Existing propagation-based rumor detection methods represent propagation patterns as a static graph structure. They simply consider the structure information of news distribution in social networks and disregard the temporal information. The dynamic graph is an effective modeling tool for both the structural and temporal information involved in the process of news dissemination. Existing dynamic graph representation learning approaches struggle to capture the long-range dependence of the structure and temporal sequence as well as the rich semantic association between full graph features and individual parts. We build a transformer-based dynamic graph representation learning approach for rumor identification DGTR to address the aforementioned challenges. We design a position embedding format for the graph data such that the original transformer model can be utilized for learning dynamic graph representations. The model can describe the structural long-range reliance between the dynamic graph nodes and the temporal long-range dependence between the temporal snapshots by employing a self-attention mechanism. In addition, the CLS token in transformer may model the rich semantic relationships between the complete graph and each subpart. Extensive experiments demonstrate the superiority of our model when compared to the state of the art. Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors. Existing propagation-based rumor detection methods represent propagation patterns as a static graph structure. They simply consider the structure information of news distribution in social networks and disregard the temporal information. The dynamic graph is an effective modeling tool for both the structural and temporal information involved in the process of news dissemination. Existing dynamic graph representation learning approaches struggle to capture the long-range dependence of the structure and temporal sequence as well as the rich semantic association between full graph features and individual parts. We build a transformer-based dynamic graph representation learning approach for rumor identification DGTR to address the aforementioned challenges. We design a position embedding format for the graph data such that the original transformer model can be utilized for learning dynamic graph representations. The model can describe the structural long-range reliance between the dynamic graph nodes and the temporal long-range dependence between the temporal snapshots by employing a self-attention mechanism. In addition, the CLS token in transformer may model the rich semantic relationships between the complete graph and each subpart. Extensive experiments demonstrate the superiority of our model when compared to the state of the art. Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors. Existing propagation-based rumor detection methods represent propagation patterns as a static graph structure. They simply consider the structure information of news distribution in social networks and disregard the temporal information. The dynamic graph is an effective modeling tool for both the structural and temporal information involved in the process of news dissemination. Existing dynamic graph representation learning approaches struggle to capture the long-range dependence of the structure and temporal sequence as well as the rich semantic association between full graph features and individual parts. We build a transformer-based dynamic graph representation learning approach for rumor identification DGTR to address the aforementioned challenges. We design a position embedding format for the graph data such that the original transformer model can be utilized for learning dynamic graph representations. The model can describe the structural long-range reliance between the dynamic graph nodes and the temporal long-range dependence between the temporal snapshots by employing a self-attention mechanism. In addition, the CLS token in transformer may model the rich semantic relationships between the complete graph and each subpart. Extensive experiments demonstrate the superiority of our model when compared to the state of the art.Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors. Existing propagation-based rumor detection methods represent propagation patterns as a static graph structure. They simply consider the structure information of news distribution in social networks and disregard the temporal information. The dynamic graph is an effective modeling tool for both the structural and temporal information involved in the process of news dissemination. Existing dynamic graph representation learning approaches struggle to capture the long-range dependence of the structure and temporal sequence as well as the rich semantic association between full graph features and individual parts. We build a transformer-based dynamic graph representation learning approach for rumor identification DGTR to address the aforementioned challenges. We design a position embedding format for the graph data such that the original transformer model can be utilized for learning dynamic graph representations. The model can describe the structural long-range reliance between the dynamic graph nodes and the temporal long-range dependence between the temporal snapshots by employing a self-attention mechanism. In addition, the CLS token in transformer may model the rich semantic relationships between the complete graph and each subpart. Extensive experiments demonstrate the superiority of our model when compared to the state of the art. |
Author | Zhu, Yangfu Wei, Siqi Wu, Bin Xiang, Aoxue Song, Chenguang |
AuthorAffiliation | 1 Beijing Key Laboratory of Intelligence Telecommunication Software and Multimedia, Beijing University of Posts and Telecommunications , Beijing , China 2 Faculty of Science, Beijing University of Technology , Beijing , China |
AuthorAffiliation_xml | – name: 2 Faculty of Science, Beijing University of Technology , Beijing , China – name: 1 Beijing Key Laboratory of Intelligence Telecommunication Software and Multimedia, Beijing University of Posts and Telecommunications , Beijing , China |
Author_xml | – sequence: 1 givenname: Siqi surname: Wei fullname: Wei, Siqi – sequence: 2 givenname: Bin surname: Wu fullname: Wu, Bin – sequence: 3 givenname: Aoxue surname: Xiang fullname: Xiang, Aoxue – sequence: 4 givenname: Yangfu surname: Zhu fullname: Zhu, Yangfu – sequence: 5 givenname: Chenguang surname: Song fullname: Song, Chenguang |
BackLink | https://www.ncbi.nlm.nih.gov/pubmed/36712701$$D View this record in MEDLINE/PubMed |
BookMark | eNp1kU1rGzEQhkVISVLXPyCXssde7Gj0ueqhUJImDRgKJT0LraS1ZXZXrrQO5N9Xju2QBHrRaKR5n5Hm_YhOhzh4hC4Bzymt1VWbejMnmJA5YM4pq0_QBeGYzTCn8vTV_hxNc15jjEERAMnP0DkVEojEcIHozd3D76_VzdNg-mCrZTKbVTUmM-Q2pt6nqoQqbfuyOj96O4Y4fEIfWtNlPz3ECfpz--Ph-uds8evu_vr7YmaZ4OOMy1o5EA2lDitnGqVkLRtbU89ZQ1rnqCFcSeKt8cqUl7qSMKGIV8yKhtMJut9zXTRrvUmhN-lJRxP080FMS23SGGzndcOF4kQBUwDMYagdxQ1IwYjhomWqsL7tWZtt03tn_VA-2b2Bvr0Zwkov46NWteRAcQF8OQBS_Lv1edR9yNZ3nRl83GZNpARcM4FFKf38utdLk-PUS4HcF9gUc06-1TaMZjfa0jp0GrDeWax3FuudxfpgcVHCO-UR_n_NPwNDp4M |
CitedBy_id | crossref_primary_10_1007_s13042_024_02354_6 crossref_primary_10_1109_ACCESS_2024_3378111 |
Cites_doi | 10.1016/j.procs.2018.10.495 10.1145/3343031.3350850 10.1145/3219819.3219903 10.1089/big.2020.0062 10.1609/aaai.v34i10.7230 10.18653/v1/D19-5316 10.1016/j.neucom.2022.07.057 10.1016/j.ipm.2021.102618 10.1016/j.ipm.2020.102437 10.1609/aaai.v36i4.20385 10.1109/TMM.2016.2617078 10.48550/arXiv.1905.11485 10.1609/aaai.v34i01.5393 10.18653/v1/P18-1184 10.1145/3483595 10.1016/j.ipm.2021.102712 10.1109/TKDE.2019.2961675 10.1145/3308558.3313552 10.1609/aaai.v35i1.16080 10.1007/s10772-018-09573-7 10.1145/1963405.1963500 10.1145/3308558.3313741 10.1145/3395046 10.1609/aaai.v34i05.6405 10.48550/arXiv.2006.10637 |
ContentType | Journal Article |
Copyright | Copyright © 2023 Wei, Wu, Xiang, Zhu and Song. Copyright © 2023 Wei, Wu, Xiang, Zhu and Song. 2023 Wei, Wu, Xiang, Zhu and Song |
Copyright_xml | – notice: Copyright © 2023 Wei, Wu, Xiang, Zhu and Song. – notice: Copyright © 2023 Wei, Wu, Xiang, Zhu and Song. 2023 Wei, Wu, Xiang, Zhu and Song |
DBID | AAYXX CITATION NPM 7X8 5PM DOA |
DOI | 10.3389/frma.2022.1055348 |
DatabaseName | CrossRef PubMed MEDLINE - Academic PubMed Central (Full Participant titles) DOAJ Directory of Open Access Journals |
DatabaseTitle | CrossRef PubMed MEDLINE - Academic |
DatabaseTitleList | PubMed CrossRef MEDLINE - Academic |
Database_xml | – sequence: 1 dbid: DOA name: DOAJ Directory of Open Access Journals url: https://www.doaj.org/ sourceTypes: Open Website – sequence: 2 dbid: NPM name: PubMed url: https://proxy.k.utb.cz/login?url=http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=PubMed sourceTypes: Index Database |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Sciences (General) |
EISSN | 2504-0537 |
ExternalDocumentID | oai_doaj_org_article_b569529149114d018d30b17642a56f49 PMC9875130 36712701 10_3389_frma_2022_1055348 |
Genre | Journal Article |
GroupedDBID | 9T4 AAFWJ AAYXX ACXDI ADBBV AFPKN ALMA_UNASSIGNED_HOLDINGS BCNDV CITATION GROUPED_DOAJ M~E OK1 PGMZT RPM NPM 7X8 5PM |
ID | FETCH-LOGICAL-c465t-5789d16b33d09dab99787bc83e54b2fdd3a25972ecae9a053d9724692e94c6b53 |
IEDL.DBID | DOA |
ISSN | 2504-0537 |
IngestDate | Wed Aug 27 01:17:09 EDT 2025 Thu Aug 21 18:38:41 EDT 2025 Thu Sep 04 19:41:16 EDT 2025 Mon Jul 21 05:42:43 EDT 2025 Tue Jul 01 04:01:28 EDT 2025 Thu Apr 24 23:04:04 EDT 2025 |
IsDoiOpenAccess | true |
IsOpenAccess | true |
IsPeerReviewed | true |
IsScholarly | true |
Keywords | transformer rumor detection rumor propagation dynamic graph neural network |
Language | English |
License | Copyright © 2023 Wei, Wu, Xiang, Zhu and Song. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
LinkModel | DirectLink |
MergedId | FETCHMERGED-LOGICAL-c465t-5789d16b33d09dab99787bc83e54b2fdd3a25972ecae9a053d9724692e94c6b53 |
Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 23 Reviewed by: Fengming Liu, Shandong Normal University, China; Ning Ma, University of Chinese Academy of Sciences (CAS), China This article was submitted to Text-mining and Literature-based Discovery, a section of the journal Frontiers in Research Metrics and Analytics Edited by: Ying Lian, Communication University of China, China |
OpenAccessLink | https://doaj.org/article/b569529149114d018d30b17642a56f49 |
PMID | 36712701 |
PQID | 2771084606 |
PQPubID | 23479 |
ParticipantIDs | doaj_primary_oai_doaj_org_article_b569529149114d018d30b17642a56f49 pubmedcentral_primary_oai_pubmedcentral_nih_gov_9875130 proquest_miscellaneous_2771084606 pubmed_primary_36712701 crossref_citationtrail_10_3389_frma_2022_1055348 crossref_primary_10_3389_frma_2022_1055348 |
ProviderPackageCode | CITATION AAYXX |
PublicationCentury | 2000 |
PublicationDate | 2023-01-11 |
PublicationDateYYYYMMDD | 2023-01-11 |
PublicationDate_xml | – month: 01 year: 2023 text: 2023-01-11 day: 11 |
PublicationDecade | 2020 |
PublicationPlace | Switzerland |
PublicationPlace_xml | – name: Switzerland |
PublicationTitle | Frontiers in research metrics and analytics |
PublicationTitleAlternate | Front Res Metr Anal |
PublicationYear | 2023 |
Publisher | Frontiers Media S.A |
Publisher_xml | – name: Frontiers Media S.A |
References | Alzanin (B2) 2018; 142 Vaswani (B37) 2017 Vaibhav (B36) 2019 Dun (B9) 2021; 35 Wu (B41) 2021 Veličković (B38) 2018 Khoo (B15) 2020; 34 Castillo (B6) 2011 Khattar (B14) 2019 Ma (B23) 2019 Silva (B27) 2021 Wu (B40) 2015 Boididou (B5) 2015 Chen (B8) 2019 Shu (B26) 2020; 8 Bian (B4) 2020; 34 Kenton (B12) Jin (B10) 2016; 19 Ma (B19) 2020 Ma (B20) 2016 Song (B34) 2019; 33 Wang (B39) 2018 Kazemi (B11) 2020; 21 Lin (B17) 2020 Rossi (B25) 2020 Yu (B43) 2017 Liu (B18) 2018 Qian (B24) 2021 Song (B32) Zhang (B44) 2019 Singhal (B29) 2020; 34 Barros (B3) 2021; 55 Kipf (B16) 2017 Sun (B35) 2022 Chen (B7) 2018 Zia (B46) 2019; 22 Ma (B22) 2018 Zhou (B45) 2020; 53 Simonyan (B28) 2015 Ma (B21) 2015 Song (B33) 2022; 505 Kenton (B13) Song (B31); 58 Singhal (B30) 2019 Agichtein (B1) 2008 Yang (B42) 2012 |
References_xml | – volume: 142 start-page: 294 year: 2018 ident: B2 article-title: Detecting rumors in social media: a survey publication-title: Procedia Comput. Sci doi: 10.1016/j.procs.2018.10.495 – start-page: 1 year: 2017 ident: B16 article-title: “Semi-supervised classification with graph convolutional networks,” publication-title: Proceedings of the International Conference on Learning Representations, ICLR 2017 – start-page: 4171 ident: B13 article-title: “Bert: pre-training of deep bidirectional transformers for language understanding,” publication-title: Proceedings of NAACL-HLT – start-page: 354 year: 2018 ident: B18 article-title: “Early detection of fake news on social media through propagation path classification with recurrent and convolutional networks,” publication-title: Proceedings of the Thirty-Second AAAI Conference on Artificial Intelligence – start-page: 1942 year: 2019 ident: B44 article-title: “Multi-modal knowledge-aware event memory network for social media rumor detection,” publication-title: Proceedings of the 27th ACM International Conference on Multimedia doi: 10.1145/3343031.3350850 – start-page: 1 year: 2015 ident: B5 article-title: “The certh-unitn participation@ verifying multimedia use 2015,” publication-title: MediaEval – start-page: 153 year: 2021 ident: B24 article-title: “Hierarchical multi-modal contextual attention network for fake news detection,” publication-title: Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval – start-page: 849 year: 2018 ident: B39 article-title: “Eann: event adversarial neural networks for multi-modal fake news detection,” publication-title: Proceedings of the 24th ACM Sigkdd International Conference on Knowledge Discovery and Data Mining doi: 10.1145/3219819.3219903 – volume: 8 start-page: 171 year: 2020 ident: B26 article-title: Fakenewsnet: a data repository with news content, social context, and spatiotemporal information for studying fake news on social media publication-title: Big Data doi: 10.1089/big.2020.0062 – volume: 34 start-page: 13915 year: 2020 ident: B29 article-title: Spotfake+: a multimodal framework for fake news detection via transfer learning (student abstract) publication-title: Proc. AAAI Conf. Artif. Intell doi: 10.1609/aaai.v34i10.7230 – start-page: 134 year: 2019 ident: B36 article-title: “Do sentence interactions matter? leveraging sentence level representations for fake news classification,” publication-title: Proceedings of the Thirteenth Workshop on Graph-Based Methods for Natural Language Processing, TextGraphs@EMNLP doi: 10.18653/v1/D19-5316 – start-page: 300 year: 2020 ident: B17 article-title: “A graph convolutional encoder and decoder model for rumor detection,” publication-title: Proceedings of the 7th International Conference on Data Science and Advanced Analytics – start-page: 3818 year: 2016 ident: B20 article-title: “Detecting rumors from microblogs with recurrent neural networks,” publication-title: Proceedings of the International Joint Conference on Artificial Intelligence, Vol. 2016 – volume: 505 start-page: 362 year: 2022 ident: B33 article-title: Dynamic graph neural network for fake news detection publication-title: Neurocomputing doi: 10.1016/j.neucom.2022.07.057 – year: 2021 ident: B27 article-title: Propagation2vec: embedding partial propagation networks for explainable fake news early detection publication-title: Inf. Process. Manag doi: 10.1016/j.ipm.2021.102618 – volume: 58 start-page: 1 ident: B31 article-title: A multimodal fake news detection model based on crossmodal attention residual and multichannel convolutional neural networks publication-title: Inf. Process. Manag doi: 10.1016/j.ipm.2020.102437 – start-page: 4611 year: 2022 ident: B35 article-title: “Dual dynamic graph convolutional networks for rumor detection on social media,” publication-title: Proceedings of the AAAI Conference on Artificial Intelligence doi: 10.1609/aaai.v36i4.20385 – volume: 19 start-page: 598 year: 2016 ident: B10 article-title: Novel visual and statistical image features for microblogs news verification publication-title: IEEE Trans. Multimedia doi: 10.1109/TMM.2016.2617078 – volume: 21 start-page: 1 year: 2020 ident: B11 article-title: Representation learning for dynamic graphs: a survey publication-title: J. Mach. Learn. Res doi: 10.48550/arXiv.1905.11485 – start-page: 1 year: 2018 ident: B38 article-title: “Graph attention networks,” publication-title: International Conference on Learning Representations – start-page: 1121 year: 2019 ident: B8 article-title: “Attention-residual network with cnn for rumor detection,” publication-title: Proceedings of the 28th ACM International Conference on Information and Knowledge Management – volume: 34 start-page: 549 year: 2020 ident: B4 article-title: Rumor detection on social media with bi-directional graph convolutional networks publication-title: Proc. AAAI Conf. Artif. Intell doi: 10.1609/aaai.v34i01.5393 – start-page: 651 year: 2015 ident: B40 article-title: “False rumors detection on sina weibo by propagation structures,” publication-title: Proceedings of the 31st International Conference on Data Engineering – start-page: 5455 year: 2020 ident: B19 article-title: “Debunking rumors on twitter with tree transformer,” publication-title: Proceedings of the 28th International Conference on Computational Linguistics – start-page: 1980 year: 2018 ident: B22 article-title: “Rumor detection on twitter with tree-structured recursive neural networks,” publication-title: Proceedings of the 56th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers) doi: 10.18653/v1/P18-1184 – volume: 55 start-page: 1 year: 2021 ident: B3 article-title: A survey on embedding dynamic graphs publication-title: ACM Comput. Surveys doi: 10.1145/3483595 – ident: B32 article-title: Temporally evolving graph neural network for fake news detection publication-title: Inf. Process. Manag doi: 10.1016/j.ipm.2021.102712 – start-page: 1 year: 2012 ident: B42 article-title: “Automatic detection of rumor on sina weibo,” publication-title: Proceedings of the ACM SIGKDD Workshop on Mining Data Semantics – volume: 33 start-page: 3035 year: 2019 ident: B34 article-title: Ced: credible early detection of social media rumors publication-title: IEEE Trans. Knowl. Data Eng doi: 10.1109/TKDE.2019.2961675 – start-page: 183 year: 2008 ident: B1 article-title: “Finding high-quality content in social media,” publication-title: Proceedings of the 2008 International Conference on Web Search and Data Mining – start-page: 5998 year: 2017 ident: B37 article-title: “Attention is all you need,” publication-title: Proceedings of the Neural Information Processing Systems – start-page: 2560 year: 2021 ident: B41 article-title: “Multimodal fusion with co-attention networks for fake news detection,” publication-title: Proceedings of the Association for Computational Linguistics – start-page: 2915 year: 2019 ident: B14 article-title: “Mvae: multimodal variational autoencoder for fake news detection,” publication-title: Proceedings of the International World Wide Web Conferences doi: 10.1145/3308558.3313552 – volume: 35 start-page: 81 year: 2021 ident: B9 article-title: Kan: Knowledge-aware attention network for fake news detection publication-title: Proc. AAAI Conf. Artif. Intell doi: 10.1609/aaai.v35i1.16080 – start-page: 1 year: 2015 ident: B28 article-title: “Very deep convolutional networks for large-scale image recognition,” publication-title: Proceedings of the 3rd International Conference on Learning Representations – volume: 22 start-page: 21 year: 2019 ident: B46 article-title: Long short-term memory recurrent neural network architectures for urdu acoustic modeling publication-title: Int. J. Speech Technol doi: 10.1007/s10772-018-09573-7 – start-page: 675 year: 2011 ident: B6 article-title: “Information credibility on Twitter,” publication-title: Proceedings of the 20th International Conference on World Wide Web doi: 10.1145/1963405.1963500 – start-page: 3901 year: 2017 ident: B43 article-title: “A convolutional approach for misinformation identification,” publication-title: Proceedings of the 26th International Joint Conference on Artificial Intelligence – start-page: 3049 year: 2019 ident: B23 article-title: “Detect rumors on twitter by promoting information campaigns with generative adversarial learning,” publication-title: Proceedings of the International World Wide Web Conferences doi: 10.1145/3308558.3313741 – start-page: 40 year: 2018 ident: B7 article-title: “Call attention to rumors: Deep attention based recurrent neural networks for early rumor detection,” publication-title: Proceedings of the Pacific-Asia Conference on Knowledge Discovery and Data Mining – start-page: 39 year: 2019 ident: B30 article-title: “Spotfake: a multi-modal framework for fake news detection,” publication-title: Proceedings of the Fifth International Conference on Multimedia Big Data – volume: 53 start-page: 1 year: 2020 ident: B45 article-title: A survey of fake news: fundamental theories, detection methods, and opportunities publication-title: ACM Comput. Surveys doi: 10.1145/3395046 – start-page: 4171 ident: B12 article-title: “Bert: pre-training of deep bidirectional transformers for language understanding,” publication-title: Proceedings of the Conference of the North American Chapter of the Association for Computational Linguistics – volume: 34 start-page: 8783 year: 2020 ident: B15 article-title: Interpretable rumor detection in microblogs by attending to user interactions publication-title: Proc. AAAI Conf. Artif. Intell doi: 10.1609/aaai.v34i05.6405 – year: 2020 ident: B25 article-title: Temporal graph networks for deep learning on dynamic graphs publication-title: arXiv preprint doi: 10.48550/arXiv.2006.10637 – start-page: 1751 year: 2015 ident: B21 article-title: “Detect rumors using time series of social context information on microblogging websites,” publication-title: Proceedings of the 24th ACM International on Conference on Information and Knowledge Management |
SSID | ssj0001921175 |
Score | 2.2211983 |
Snippet | Social media rumors have the capacity to harm the public perception and the social progress. The news propagation pattern is a key clue for detecting rumors.... |
SourceID | doaj pubmedcentral proquest pubmed crossref |
SourceType | Open Website Open Access Repository Aggregation Database Index Database Enrichment Source |
StartPage | 1055348 |
SubjectTerms | dynamic graph neural network Research Metrics and Analytics rumor detection rumor propagation transformer |
Title | DGTR: Dynamic graph transformer for rumor detection |
URI | https://www.ncbi.nlm.nih.gov/pubmed/36712701 https://www.proquest.com/docview/2771084606 https://pubmed.ncbi.nlm.nih.gov/PMC9875130 https://doaj.org/article/b569529149114d018d30b17642a56f49 |
Volume | 7 |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwrV1LS8QwEA7iyYv4tr6o4EGFsm3z2njzLYIeZBf2FpJmiop2Ze3-fydpd9kV0YuXlrYpDZMZ5vuS9BtCjmRuC8GzMsnAqcRrTCW26yCxHNmzKKF0QTL_4VHc9dn9gA9mSn35PWGNPHBjuI7lQvFcIZBH5O7SrOtoajOJsNlwUbLw616q0hky9drgFq9B2SxjIgtTnXIUZIby3Fe25dTX-5lJREGv_yeQ-X2v5EzyuVkhyy1qjM-b3q6SBajWyGobl5_xcSsefbJO6NVt7-ksvmoKzcdBjzquJ-gURjGe4tH4HY8O6rAPq9og_Zvr3uVd0hZGSAomeJ1glCmXCUupS5UzViEVlLboUuDM5qVz1CCrkTkUBpTBMHN4gTw4B8UKYTndJIvVsIJtEjPHFBgQpmDAUieNxIQPwnUFgCg5jUg6sZIuWtVwX7ziTSN78IbV3rDaG1a3ho3I6fSVj0Yy47fGF97004Ze7TrcQB_QrQ_ov3wgIoeTgdMYHX7Jw1QwHH_qXCKCQoiViohsNQM5_RQV0i-7ZxGRc0M815f5J9XLc1DgVsjyMPnv_Efnd8mSL2Hvp3WybI8s1qMx7CPQqe1B8OmDMAP1BfvE-G4 |
linkProvider | Directory of Open Access Journals |
openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=DGTR%3A+Dynamic+graph+transformer+for+rumor+detection&rft.jtitle=Frontiers+in+research+metrics+and+analytics&rft.au=Wei%2C+Siqi&rft.au=Wu%2C+Bin&rft.au=Xiang%2C+Aoxue&rft.au=Zhu%2C+Yangfu&rft.date=2023-01-11&rft.pub=Frontiers+Media+S.A&rft.eissn=2504-0537&rft.volume=7&rft_id=info:doi/10.3389%2Ffrma.2022.1055348&rft.externalDocID=PMC9875130 |
thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=2504-0537&client=summon |
thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=2504-0537&client=summon |
thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=2504-0537&client=summon |