Time Series Class - Part 2 - Professor Chris Williams, University of Edinburgh

Time Series Class - Part 2 - Professor Chris Williams, University of Edinburgh

Alan Turing Institute via YouTube Direct link

Intro

1 of 30

1 of 30

Intro

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Time Series Class - Part 2 - Professor Chris Williams, University of Edinburgh

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

  1. 1 Intro
  2. 2 Time Series
  3. 3 Overview
  4. 4 Inference Problems
  5. 5 Recursion formula
  6. 6 Viterbl alignment
  7. 7 Training a HMM
  8. 8 Aside: learning a Markov model
  9. 9 EM parameter updates
  10. 10 Outline
  11. 11 Linear-Gaussian HMMS
  12. 12 Inference Problem - filtering
  13. 13 Simple example
  14. 14 Applications
  15. 15 Extensions
  16. 16 Switching Linear Dynamical System (SLDS)
  17. 17 Factorial Switching Linear Dynamical System (FSLDS)
  18. 18 Control Theory
  19. 19 Conditional Random Fields (CRFS)
  20. 20 Recurrent Neural Networks
  21. 21 Sequential Data
  22. 22 Simplest recurrent network
  23. 23 Recurrent network unfolded in time
  24. 24 Vanishing and exploding gradients
  25. 25 speech recognition with recurrent networks
  26. 26 speech recognition with stacked LSTMs
  27. 27 recurrent network language models
  28. 28 recurrent encoder-decoder
  29. 29 Encoder-Recurrent-Decoder Networks
  30. 30 Summary

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.