Neural Graph Databases
Building foundation models and systems for understanding graph databases.
Neural graph database, reasoning, and geometric deep learning
I work on neural graph databases, abductive and deductive reasoning in knowledge graphs, AI for mathematics, and geometric deep learning.
I am a PhD student in HKUST-KnowComp supervised by Prof. Yangqiu Song. I received my bachelor's degree in Artificial Intelligence from Beihang University in June 2025.
Before joining HKUST, I interned at Magic Group for two years, supervised by Prof. Jianxin Li, Prof. Qingyun Sun, and Prof. Xingcheng Fu. I received support from the Beijing Natural Science Foundation in 2024 and have served as a reviewer or program committee member for IJCAI, ICML, ARR, NeurIPS, AAAI, and ICLR.
I am open to collaborations around graph learning, reasoning, and neural graph data management.
Building foundation models and systems for understanding graph databases.
Studying the fusion of deductive and abductive reasoning over knowledge graphs.
Exploring autonomous AI mathematicians and reasoning-oriented learning.
Understanding data through Riemannian geometry and hyperbolic representation learning.
Controllable logical hypothesis generation for abductive reasoning in knowledge graphs.
Topics include masked diffusion for reasoning, molecular generation, and geometry-consistent federated graph learning.
Topics include hyperbolic knowledge tracing and robust information bottleneck learning.
Riemannian diffusion framework for graph generation and prediction.
Geometry-aware VLMs for galaxy-scale understanding.
Topics include Riemannian experts, graph information bottleneck, and graph dataset condensation.
Hyperbolic geometric latent diffusion model for graph generation.