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You're reading from  Deep Reinforcement Learning Hands-On. - Second Edition

Product typeBook
Published inJan 2020
Reading LevelIntermediate
PublisherPackt
ISBN-139781838826994
Edition2nd Edition
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Maxim Lapan
Maxim Lapan
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Maxim Lapan

Maxim has been working as a software developer for more than 20 years and was involved in various areas: distributed scientific computing, distributed systems and big data processing. Since 2014 he is actively using machine and deep learning to solve practical industrial tasks, such as NLP problems, RL for web crawling and web pages analysis. He has been living in Germany with his family.
Read more about Maxim Lapan

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Actor-critic

The next step in reducing the variance is making our baseline state-dependent (which is a good idea, as different states could have very different baselines). Indeed, to decide on the suitability of a particular action in some state, we use the discounted total reward of the action. However, the total reward itself could be represented as a value of the state plus the advantage of the action: Q(s, a) = V(s) + A(s, a). You saw this in Chapter 8, DQN Extensions, when we discussed DQN modifications, particularly dueling DQN.

So, why can't we use V(s) as a baseline? In that case, the scale of our gradient will be just advantage, A(s, a), showing how this taken action is better in respect to the average state's value. In fact, we can do this, and it is a very good idea for improving the policy gradient method. The only problem here is that we don't know the value, V(s), of the state that we need to subtract from the discounted total reward, Q(s, a). To solve...

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Deep Reinforcement Learning Hands-On. - Second Edition
Published in: Jan 2020Publisher: PacktISBN-13: 9781838826994

Author (1)

author image
Maxim Lapan

Maxim has been working as a software developer for more than 20 years and was involved in various areas: distributed scientific computing, distributed systems and big data processing. Since 2014 he is actively using machine and deep learning to solve practical industrial tasks, such as NLP problems, RL for web crawling and web pages analysis. He has been living in Germany with his family.
Read more about Maxim Lapan