Published October 16, 2019 | Version 1.0
Journal article Open

Understanding Social Networks using Transfer Learning

  • 1. Institute for Web Science and Technologies (WeST), University of Koblenz–Landau, Koblenz, Germany, 56070
  • 2. Institute for Web Science and Technologies (WeST), University of Koblenz–Landau, Koblenz, Germany, 56070 Web and Internet Science Research Group (WAIS), University of Southampton, UK, SO17 1BJ
  • 3. Namur Centre for Complex Systems (naXys), University of Namur, B-5000 Belgium

Description

A detailed understanding of users contributes to the understanding of the Web’s evolution, and to the development of Web applications.  lthough for new Web platforms such a study is especially important, it is often jeopardized by the lack of knowledge about novel phenomena due to the sparsity of data. Akin to human transfer of experiences from one domain to the next, transfer learning as a subfield of machine learning adapts knowledge acquired in one domain to a new domain. We systematically investigate how the concept of transfer learning may be applied to the study of users on newly created (emerging) Web platforms, and propose our transfer learning–based approach, TraNet. We show two use cases where TraNet is applied to tasks involving the identification of user trust and roles on different Web platforms. We compare the performance of TraNet with other approaches and find that our approach can best transfer knowledge on users across platforms in the given tasks.

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Additional details

Funding

CUTLER – Coastal Urban developmenT through the LEnses of Resiliency 770469
European Commission