
Yijun Tian
University of Notre Dame
ml: graph-based machine learning
graph neural networks
graph classification
dmkm: graph mining
social network analysis & community mining
graph mining
snlp: language models
ml: unsupervised & self-supervised learning
snlp: question answering
node classification
supervised training
knowledge graphs & kb completion
knowledge distillation
dmkm: linked open data
3
presentations
83
number of views
1
citations
SHORT BIO
Yijun Tian is a Ph.D. candidate in Computer Science and Engineering at the University of Notre Dame. His research interests center around artificial intelligence, machine learning, and data science. His research aims to empower machines with the knowledge to positively influence real-world applications, health, and sciences. He focuses on developing knowledge-centric machine learning algorithms that are effective, efficient, and trustworthy, particularly on graphs. He has served as PC at NeurIPS, ICLR, AAAI, IJCAI, KDD, etc. His work has been recognized with multiple awards and honors from top-tier conferences such as ICLR and AAAI.
Presentations

Graph Neural Prompting with Large Language Models | VIDEO
Yijun Tian and 7 other authors

Boosting Graph Neural Networks via Adaptive Knowledge Distillation
Zhichun Guo and 5 other authors

Heterogeneous Graph Masked Autoencoders
Yijun Tian and 4 other authors