Computer Science ›› 2021, Vol. 48 ›› Issue (5): 117-123.doi: 10.11896/jsjkx.200400057

Special Issue: Big Data & Data Scinece

• Database & Big Data & Data Science • Previous Articles     Next Articles

Social Rumor Detection Method Based on Multimodal Fusion

ZHANG Shao-qin1, DU Sheng-dong1,2,3, ZHANG Xiao-bo1,2,3, LI Tian-rui1,2,3   

  1. 1 School of Information Science and Technology,Southwest Jiaotong University,Chengdu 611756,China
    2 Institute of Artificial Intelligence,Southwest Jiaotong University,Chengdu 611756,China
    3 National Engineering Laboratory of Integrated Transportation Big Data Application Technology,Chengdu 611756,China
  • Received:2020-04-14 Revised:2020-07-13 Online:2021-05-15 Published:2021-05-09
  • About author:ZHANG Shao-qin,born in 1994,postgraduate.Her main research interests include data mining and natural language processing.(zsq1024@163.com)
    LI Tian-rui,born in 1969,Ph.D,professor,Ph.D supervisor,is a distinguished member of China Computer Federation.His main research interests include big data intelligence,rough sets and granular computing.
  • Supported by:
    National Key R&D Program of China (2017YFB1401400).

Abstract: With the development of social networking platforms,social networks have become an important source of information for people.However,the convenience of social networks has also led to the rapid propagation of false rumors.Compared with textual rumors,social network rumors with multimedia content are more likely to mislead users and get dissemination,so the detection of multi-modal rumors is of great significance in real life.Several multi-modal rumor detection methods have been proposed,but the visual features and joint representation of text and visual features have not been fully explored in current approaches.To make up for these shortcomings,an end-to-end multi-modal fusion network based on deep learning is developed.Firstly,the visual features of each region of interest in the image are extracted.Then,the text and the visual features are updated and fused by using a multi-head attention mechanism.Finally,these features are concatenated based on the attention mechanism for the detection of multi-modal rumors in social networks.Comparative experiments on the public data sets of Twitter and Weibo are conducted and experimental results show that the proposed method has a 13.4% F1 value increase on Twitter data set and a 1.6% F1 value increase on Weibo data set.

Key words: Deep learning, Multi-moda, Object detection, Rumor detection

CLC Number: 

  • TP391
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