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Advanced Deep Learning with Keras

You're reading from   Advanced Deep Learning with Keras Apply deep learning techniques, autoencoders, GANs, variational autoencoders, deep reinforcement learning, policy gradients, and more

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Product type Paperback
Published in Oct 2018
Publisher Packt
ISBN-13 9781788629416
Length 368 pages
Edition 1st Edition
Languages
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Author (1):
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Rowel Atienza Rowel Atienza
Author Profile Icon Rowel Atienza
Rowel Atienza
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Table of Contents (13) Chapters Close

Preface 1. Introducing Advanced Deep Learning with Keras FREE CHAPTER 2. Deep Neural Networks 3. Autoencoders 4. Generative Adversarial Networks (GANs) 5. Improved GANs 6. Disentangled Representation GANs 7. Cross-Domain GANs 8. Variational Autoencoders (VAEs) 9. Deep Reinforcement Learning 10. Policy Gradient Methods Other Books You May Enjoy Index

Policy gradient theorem

As discussed in Chapter 9, Deep Reinforcement Learning, in Reinforcement Learning the agent is situated in an environment that is in state st', an element of state space Policy gradient theorem. The state space Policy gradient theorem may be discrete or continuous. The agent takes an action at from the action space Policy gradient theorem by obeying the policy, Policy gradient theorem. Policy gradient theorem may be discrete or continuous. Because of executing the action at, the agent receives a reward r t+1 and the environment transitions to a new state s t+1. The new state is dependent only on the current state and action. The goal of the agent is to learn an optimal policy Policy gradient theorem that maximizes the return from all the states:

Policy gradient theorem (Equation 9.1.1)

The return, Policy gradient theorem, is defined as the discounted cumulative reward from time t until the end of the episode or when the terminal state is reached:

Policy gradient theorem (Equation 9.1.2)

From Equation 9.1.2, the return can also be interpreted as a value of a given state by following the policy Policy gradient theorem. It can be observed from Equation 9.1.1 that future...

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