This repository is the implementation of GCN-LPA (arXiv):
Unifying Graph Convolutional Neural Networks and Label Propagation
Hongwei Wang, Jure Leskovec
arXiv Preprint, 2020
GCN-LPA is an end-to-end model that unifies Graph Convolutional Neural Networks (GCN) and Label Propagation Algorithm (LPA) for adaptive semi-supervised node classification.
data/
citeseer/
cora/
pubmed/
ms_academic_cs.npz
(Coauthor-CS)ms_academic_phy.npz
(Coauthor-Phy)
src/
: implementation of GCN-LPA.
$ python main.py
Note: The default dataset is Citeseer.
Hyper-parameter settings for other datasets are provided in main.py
.
The code has been tested running under Python 3.6.5, with the following packages installed (along with their dependencies):
- tensorflow == 1.12.0
- networkx == 2.1
- numpy == 1.14.3
- scipy == 1.1.0
- sklearn == 0.19.1
- matplotlib == 2.2.2