Machine Learning with Graphs - Fall 2019

Machine Learning with Graphs - Fall 2019

Hussain Kara Fallah via YouTube Direct link

Lecture 1 Introduction; Structure of Graphs

1 of 19

1 of 19

Lecture 1 Introduction; Structure of Graphs

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Machine Learning with Graphs - Fall 2019

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Lecture 1 Introduction; Structure of Graphs
  2. 2 Lecture 2 Properties of Networks And Random Graph Models
  3. 3 Lecture 3 Motifs and Structural Roles in Networks
  4. 4 Lecture 4 Community Structure in Networks
  5. 5 Lecture 5 Spectral Clustering
  6. 6 Lecture 6 Message Passing and Node Classification
  7. 7 Lecture 7 Graph Representation Learning
  8. 8 Lecture 8 Graph Neural Networks
  9. 9 Lecture 9 Graph Neural Networks Implementation with Pytorch Geometric
  10. 10 Lecture 10 Deep Generative Models for Graphs
  11. 11 Lecture 11 Link Analysis - PageRank
  12. 12 Lecture 12 Network Effects and Cascading Behavior
  13. 13 Lecture 13 Probabilistic Contagion and Models of Influence
  14. 14 Lecture 14 Influence Maximization in Networks
  15. 15 Lecture 15 Outbreak Detection in Networks
  16. 16 Lecture 16 Network Evolution
  17. 17 Lecture 17 Reasoning over Knowledge Graphs
  18. 18 Lecture 18 Limitations of Graph Neural Networks
  19. 19 Lecture 19 Applications of Graph Neural Networks

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.