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Published online by Cambridge University Press:  02 September 2021

Yao Ma
Affiliation:
Michigan State University
Jiliang Tang
Affiliation:
Michigan State University
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  • Bibliography
  • Yao Ma, Michigan State University, Jiliang Tang, Michigan State University
  • Book: Deep Learning on Graphs
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  • Bibliography
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  • Bibliography
  • Yao Ma, Michigan State University, Jiliang Tang, Michigan State University
  • Book: Deep Learning on Graphs
  • Online publication: 02 September 2021
  • Chapter DOI: https://doi.org/10.1017/9781108924184.022
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