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Hands-On Neural Networks with Keras

You're reading from   Hands-On Neural Networks with Keras Design and create neural networks using deep learning and artificial intelligence principles

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Product type Paperback
Published in Mar 2019
Publisher Packt
ISBN-13 9781789536089
Length 462 pages
Edition 1st Edition
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Author (1):
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Niloy Purkait Niloy Purkait
Author Profile Icon Niloy Purkait
Niloy Purkait
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Table of Contents (16) Chapters Close

Preface 1. Section 1: Fundamentals of Neural Networks FREE CHAPTER
2. Overview of Neural Networks 3. A Deeper Dive into Neural Networks 4. Signal Processing - Data Analysis with Neural Networks 5. Section 2: Advanced Neural Network Architectures
6. Convolutional Neural Networks 7. Recurrent Neural Networks 8. Long Short-Term Memory Networks 9. Reinforcement Learning with Deep Q-Networks 10. Section 3: Hybrid Model Architecture
11. Autoencoders 12. Generative Networks 13. Section 4: Road Ahead
14. Contemplating Present and Future Developments 15. Other Books You May Enjoy

Backpropagation

For the more mathematically oriented, you must be wondering how exactly we descend our gradient iteratively. Well, as you know, we start by initializing random weights to our model, feed in some data, compute dot products, and pass it through our activation function along with our bias to get a predicted output. We use this predicted output and the actual output to estimate the errors in our model's representations, using the loss function. Now here comes the calculus. What we can do now is differentiate our loss function, J(θ), with respect to the weights of our model (θ). This process essentially lets us compare how changes in our model's weights affect the changes in our model's loss. The result of this differentiation gives us the gradient of our J(θ) function at the current model weight (θ) along with the direction of...

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