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Correspondence

Brief Biography

Juanhui Li is a PhD student in the Data Science and Engineering (DSE) lab at Michigan State University, under the supervision of Dr. Jiliang Tang. She got a Master degree in Computer Science and technology in 2020 from Sun Yat-sen University (SYSU).

Her current research interests include data mining and machine learning especially graph neural networks.

Publications

  • Juanhui Li, Yao Ma, Yiqi Wang, Charu Aggarwal, Chang-Dong Wang, Jiliang Tang: Graph Pooling with Representativeness. In: 20th IEEE International Conference on Data Mining (ICDM2020), 302-311.
  • Juanhui Li, Changdong Wang, Peizhen Li, Jianhuang Lai: Discriminative metric learning for multi-view graph partitioning. In: Pattern Recognition 75 (2018), 199-213.
  • Juanhui Li, Changdong Wang, Ling Huang, Dong Huang, Jianhuang Lai, Pei Chen: Attributed Network Embedding with Micro-meso Structure. In: International Conference on Database Systems for Advanced Applications (DASFAA 2018), Springer (2018), 20-36.
  • Juanhui Li, Ling Huang, Changdong Wang, Dong Huang, Jianhuang Lai: PartNRL: Partial Nodes Representation Learning in Large-Scale Network. In: IEEE Access 7: 56457-56468 (2019).
  • Juanhui Li, Pei-Zhen Li, Chang-Dong Wang, Jian-Huang Lai: Community Detection in Complicated Network Based on the Multi-view Weighted Signed Permanence. In: (IEEE) Trustcom/BigataSE/ISPA, 1589-1596.
  • Wei Shi, Ling Huang, Changdong Wang, Juanhui Li, Yong Tang, Chengzhou Fu: Network Embedding via Community Based Variational Autoencoder. In: IEEE Access 7: 25323-25333 (2019).
  • Peizhen Li, Juanhui Li, Changdong Wang: A SVM-Based EEG Signal Analysis: An Auxiliary Therapy for Tinnitus. In: International Conference on Brain Inspired Cognitive Systems (BICS 2016), 207-219.

Internship Experience

Mininglamp Technology

  • 06/2019-09/2019: Interned in the Knowledge Engineering Lab under Dr. Jie Zhang, and supervised by Dr. Xindong Wu. Developed effective methods to predict the missing entities or relations in temporal knowledge graphs. Wrote a patent about constructing event graphs.

Services

  • KDD 2019: Subreviewer

Teaching Assistant

  • Data Mining, 2018 Spring