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You're reading from  Reinforcement Learning Algorithms with Python

Product typeBook
Published inOct 2019
Reading LevelBeginner
PublisherPackt
ISBN-139781789131116
Edition1st Edition
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Author (1)
Andrea Lonza
Andrea Lonza
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Andrea Lonza

Andrea Lonza is a deep learning engineer with a great passion for artificial intelligence and a desire to create machines that act intelligently. He has acquired expert knowledge in reinforcement learning, natural language processing, and computer vision through academic and industrial machine learning projects. He has also participated in several Kaggle competitions, achieving high results. He is always looking for compelling challenges and loves to prove himself.
Read more about Andrea Lonza

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Policy gradient methods

The algorithms that have been learned and developed so far are value-based, which, at their core, learn a value function, V(s), or action-value function, Q(s, a). A value function is a function that defines the total reward that can be accumulated from a given state or state-action pair. An action can then be selected, based on the estimated action (or state) values.

Therefore, a greedy policy can be defined as follows:

Value-based methods, when combined with deep neural networks, can learn very sophisticated policies in order to control agents that operate in high-dimensionality spaces. Despite these great qualities, they suffer when dealing with problems with a large number of actions, or when the action space is continuous.

In such cases, maximum operation is not feasible. Policy gradient (PG) algorithms exhibit incredible potential in such contexts...

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Reinforcement Learning Algorithms with Python
Published in: Oct 2019Publisher: PacktISBN-13: 9781789131116

Author (1)

author image
Andrea Lonza

Andrea Lonza is a deep learning engineer with a great passion for artificial intelligence and a desire to create machines that act intelligently. He has acquired expert knowledge in reinforcement learning, natural language processing, and computer vision through academic and industrial machine learning projects. He has also participated in several Kaggle competitions, achieving high results. He is always looking for compelling challenges and loves to prove himself.
Read more about Andrea Lonza