Ningyi Liao
Ningyi Liao
Home
Publications
Talks
Awards
Experience
Neural Networks
Scalable Heterophilous Graph Neural Network with Decoupled Embeddings
We propose LD² as a scalable heterophilous GNN with linear complexity and lightweight minibatch training.
Jul 31, 2024 14:45 — 15:00
SMU, Singapore
Ningyi Liao
GENTI: GPU-powered Walk-based Subgraph Extraction for Scalable Representation Learning on Dynamic Graphs
A GPU-oriented subgraph representation learning algorithm on dynamic data.
Zihao Yu
,
Ningyi Liao
,
Siqiang Luo
Unifews: Unified Entry-Wise Sparsification for Efficient Graph Neural Network
Graph Neural Networks (GNNs) have shown promising performance in various graph learning tasks, but at the cost of resource-intensive …
Ningyi Liao
,
Zihao Yu
,
Siqiang Luo
Scalable Decoupling Graph Neural Networks with Feature-Oriented Optimization
SCARA extension with a more scalable reuse scheme.
Ningyi Liao
,
Dingheng Mo
,
Siqiang Luo
,
Xiang Li
,
Pengcheng Yin
LD²: Scalable Heterophilous Graph Neural Network with Decoupled Embeddings
A scalable heterophilous GNN with lightweight minibatch training.
Ningyi Liao
,
Siqiang Luo
,
Xiang Li
,
Jieming Shi
Scaling up Graph Neural Networks
Qualifying Examinations report.
Ningyi Liao
SIMGA: A Simple and Effective Heterophilous Graph Neural Network with Efficient Global Aggregation
Graph neural networks (GNNs) realize great success in graph learning but suffer from performance loss when meeting heterophily, i.e. …
Haoyu Liu
,
Ningyi Liao
,
Siqiang Luo
SCARA: Scalable Graph Neural Networks with Feature-Oriented Optimization
A feature-oriented GNN that scales to billion-scale extremely large graphs.
Ningyi Liao
,
Dingheng Mo
,
Siqiang Luo
,
Xiang Li
,
Pengcheng Yin
Achieving Adversarial Robustness via Sparsity
Network pruning has been known to produce compact models without much accuracy degradation. However, how the pruning process affects a …
Ningyi Liao
,
Shufan Wang
,
Liyao Xiang
,
Nanyang Ye
,
Shuo Shao
,
Pengzhi Chu
Cite
×