Fast Convolutional Neural Networks for Graph-Structured Data

Presented by: Xavier Bresson (Swiss Federal Institute of Technology) – Fast Convolutional Neural Networks for Graph-Structured Data

Why CNNs work?

Local stationary points.

CNN for Graph Structured Data
  • Graph -> Euclidean Grid
  • Graph coarse -> Downsampling(pooling)
Related work

Categories of graph CNNs

  1. Spatial approach
  2. Spectral(Fourier) approach
Convolution on Graph
  • Graph Laplace
  • Fourier transform on graph
  • Localized Filters
    Fast Chebyshev Polynomial Kernels
Graph Coarsening
  • Graph partitioning: Balance Cut/Graclus
  • Fast Graph Pooling
Optimization
  • Backpropagation
  • Gradient Descent
Numeric Computation
  • Tensorflow
  • CUDA k40 (GPU x8 faster than CPU)
Result
  • Euclidean CNNs
  • Non-Euclidean CNNs
Future
  • Social networks
  • Gene networks
  • etc.
最后编辑于
©著作权归作者所有,转载或内容合作请联系作者
平台声明:文章内容(如有图片或视频亦包括在内)由作者上传并发布,文章内容仅代表作者本人观点,简书系信息发布平台,仅提供信息存储服务。

推荐阅读更多精彩内容