Persistent URL of this record https://hdl.handle.net/1887/3484562
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- Title pages_Contents
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- Part I : Chapter 4
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- Part I : Chapter 5
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- Part II : Chapter 6
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- Part II : Chapter 8
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- Acknowledgements_Curriculum Vitae
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Information diffusion analysis in online social networks based on deep representation learning
With the emergence of online social networks (OSNs), the way people create and share information has changed, which becomes faster and broader than traditional social media. Understanding how information (both good and harmful) spreads through OSNs, as well as what elements drive the success of information diffusion, has significant implications for a wide range of real-world applications. In this thesis, we conduct research to analysis the diffusion of information in OSNs via using deep representation learning. Specifically, we aim to develop deep learning- based models to solve two specific tasks, i.e., information cascades modeling and rumor detection.
- All authors
- Chen, X.
- Supervisor
- Bonsangue, M.M.; Zhang, F.
- Co-supervisor
- Zhou, F.
- Committee
- Isufi, E.; Khokhar, A.A.; Plaat, A.; Verbeek, F.; Verberne, S.
- Qualification
- Doctor (dr.)
- Awarding Institution
- Leiden Institute of Advanced Computer Science (LIACS), Faculty of Science, Leiden University
- Date
- 2022-10-25
- ISBN (print)
- 9789464690576