• Stars
    star
    9
  • Rank 1,939,727 (Top 39 %)
  • Language
    Python
  • License
    GNU General Publi...
  • Created over 3 years ago
  • Updated 7 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

A novel architecture and training strategy for graph neural networks (GNN). The proposed architecture, named as Autoencoder-Aided GNN (AA-GNN), compresses the convolutional features at multiple hidden layers, hinging on a novel end-to-end training procedure that learns different graph representations per each layer. As a result, the computational scalability improves and the best graph representations at each layer are learnt in a totally data-driven fashion.

More Repositories

1

awesome-topological-deep-learning

A curated list of topological deep learning (TDL) resources and links.
213
star
2

Simplicial-Attention-Networks

Official Repository for Simplicial Attention Networks
Python
26
star
3

MaRF

Official Repository for MaRF: Representing Mars as Neural Radiance Fields
Python
20
star
4

can

Official repository for Cell Attention Networks
Python
14
star
5

on-oversquashing

Official repository for On Over-Squashing in Message Passing Neural Networks (ICML 2023)
Jupyter Notebook
12
star
6

awesome-ml-summaries

Summaries of relevant research papers in machine learning
7
star
7

Heterogeneous_XNN

Magnetic Resonance Imaging (MRI) for Brain Tumor Classification
Python
4
star
8

Camel-Blue

Computer Aided MEdicaL diagnosis Based on Learning Unsupervised hEterogenous Data
Jupyter Notebook
2
star
9

ADM-HM2-GP13

In this assignment we perform an analysis of Taxis in NYC. In particular, we are curious to answer to some specific research questions (RQs) that may help Taxi drivers in planning their movements throughout the city and the Taxi's users to have hints about the convenience of enjoying this service.
Jupyter Notebook
2
star
10

ADM-HW3-GP2

Jupyter Notebook
1
star
11

ADM-GP22-HW5

Jupyter Notebook
1
star
12

ADM-HW4-GP29

Homework4 for the algorithmic methods of data mining course
Jupyter Notebook
1
star
13

GCNN

This is an implementation of Graph Convolutional Networks for the task of (semi-supervised) classification of nodes in a graph.
Python
1
star
14

inception

Automatic face extraction and classification using Facenet architecture
Python
1
star