Transcription of Introduction - Deep Learning
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Introduction Lecture slides for Chapter 1 of deep Learning Ian Goodfellow 2016-09-26. Representations Matter APTER 1. Introduction . Cartesian coordinates Polar coordinates y . x r Figure suppose we want to separate ure : Example of di erent representations: (Goodfellow 2016). Depth: Repeated Composition CHAPTER 1. Introduction . Output CAR PERSON ANIMAL. (object identity). 3rd hidden layer (object parts). 2nd hidden layer (corners and contours). 1st hidden layer (edges). Visible layer (input pixels). Figure : Illustration of a deep Learning model. It is di cult for a computer to understand Figure the meaning of raw sensory input data, such as this image represented as a collection (Goodfellow 2016). Computational Graphs CHAPTER 1. Introduction . Element Element Set Set +. +.
Information Theory 4. Numerical Computation 5. Machine Learning Basics Part II: Deep Networks: Modern Practices 6. Deep Feedforward Networks 7. Regularization 8. Optimization 9. CNNs 10. RNNs 11. Practical Methodology 12. Applications Part III: Deep Learning Research 13. Linear Factor Models 14. Autoencoders 15. Representation Learning 16 ...
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Of Deep Learning, Deep, Deep learning, Theory, New End: New Pedagogies for Deep Learning, New Pedagogies for Deep Learning, 21st Century Skills, Learning, Neural networks, Deep neural networks, Theory to Practice for Teachers of English Learners, Graph, Cognitivism, Learning theory, Change theory, Change