Deep learning for misinformation detection on online social networks: a survey and new perspectives

Rafiqul Islam1, Shaowu Liu1, Xianzhi Wang2, Guandong Xu1
1Advanced Analytics Institute (AAi), University of Technology Sydney (UTS), Sydney, Australia
2School of Computer Science, University of Technology Sydney (UTS), Sydney, Australia

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