Group Equivariant Deep Learning - 2022

Group Equivariant Deep Learning - 2022

Erik Bekkers via YouTube Direct link

Group Equivariant Deep Learning - Lecture 3.2: Equivariant message passing as non-linear convolution

16 of 21

16 of 21

Group Equivariant Deep Learning - Lecture 3.2: Equivariant message passing as non-linear convolution

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Group Equivariant Deep Learning - 2022

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  1. 1 Group Equivariant Deep Learning - Lecture 1.1: Introduction
  2. 2 Group Equivariant Deep Learning - Lecture 1.2: Group theory (product, inverse, representations)
  3. 3 Group Equivariant Deep Learning - Lecture 1.3: Regular group convolutional neural networks
  4. 4 Group Equivariant Deep Learning - Lecture 1.4: Example
  5. 5 Group Equivariant Deep Learning - Lecture 1.5: A Brief History of G-CNNs
  6. 6 Group Equivariant Deep Learning - Lecture 1.6: Group theory (Homogeneous/quotient spaces)
  7. 7 Group Equivariant Deep Learning - Lecture 1.7: Group convolutions are all you need
  8. 8 Group Equivariant Deep Learning - Lecture 2.1: Steerable kernels/basis functions
  9. 9 Group Equivariant Deep Learning - Lecture 2.2: Revisiting Regular G-Convs with Steerable Kernels
  10. 10 Group Equivariant Deep Learning - Lecture 2.3: Group Theory (Irreducible representations, Fourier)
  11. 11 Group Equivariant Deep Learning - Lecture 2.4: Group Theory (Induced representation, feature fields)
  12. 12 Group Equivariant Deep Learning - Lecture 2.5: Steerable group convolutions
  13. 13 Group Equivariant Deep Learning - Lecture 2.6: Activation Functions for Steerable G-CNNs
  14. 14 Group Equivariant Deep Learning - Lecture 2.7: Derivation of Harmonic Networks from Regular G-Convs
  15. 15 Group Equivariant Deep Learning - Lecture 3.1: Motivation for SE(3) equivariant graph NNs
  16. 16 Group Equivariant Deep Learning - Lecture 3.2: Equivariant message passing as non-linear convolution
  17. 17 Group Equivariant Deep Learning - Lecture 3.3: Tensor products as conditional linear layers
  18. 18 Group Equivariant Deep Learning - Lecture 3.4: Group Theory (SO(3) irreps, Wigner-D, Clebsch-Gordan)
  19. 19 Group Equivariant Deep Learning - Lecture 3.5: Literature survey (3D Steerable graph NNs)
  20. 20 Group Equivariant Deep Learning - Lecture 3.6: Literature survey (Regular equivariant graph NNs)
  21. 21 Group Equivariant Deep Learning - Lecture 3.7: Gauge equivariant graph NNs

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