Neural Networks for Machine Learning
CtrlK
  • Lec 01: Introduction
    • The Necessity of Machine Learning
    • Neural Networks
    • Models of Neuron
    • Example of Learning
    • Types of Learning
  • Lec 02: The Perceptron Learning Procedure
  • Lec 03: The Backpropagation Learning Procedure
  • Lec 04: Learning Feature - Vectors for Words
  • Lec 05: Object Recognition with Neural Nets
  • Lec 06: Optimization - How to Make the Learning Go Faster
  • Lec 07: Recurrent Neural Network Part 1
  • Lec 08: Recurrent Neural Network Part 2
  • Lec 09: Ways to MAke Neural Network Generalize Better
  • Lec 10: Combining Multiple Neural Network to Improve Generalization
  • Lec 11: Hopfield Nets & Boltzman Machine
  • Lec 12: Restricted Boltzman Machine
  • Lec 13: Staking RBMs to Make Deep Belief Nets
  • Lec 14: Deep Neural Nets with Generative Pre Training
  • Lec 15: Modeling Hierarchical Structure with Neural nets
  • Lec 16: Recent Applications of Deep Nets
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Lec 08: Recurrent Neural Network Part 2

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