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