Questions tagged [experience-replay]

For questions related to the "experience replay" buffer (as used in the Deep Q Network and similar works).

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Where does this variation of the importance sampling weight come from?

I have seeing a variation in importance sampling (IS) in Prioritized Experience Replay (PER) in some implementations regarding the original paper approach stated as (in section 3.4): $$ w_{i}=\left(\...
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54 views

Why is it necessary to divide the priority range according to the batch size in Prioritized Experience Replay?

According to DeepMinds's paper Prioritized Experience Replay (2016), specifically Appendix B.2.1 "Proportional prioritization" (p. 13), one should equally divide the priority range $[0, p_\...
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83 views

What is the difference between random and sequential sampling from the reply memory?

I was working on an RL problem and I am confused at one specific point. We use replay memory so that the network learns about previous actions and how these actions lead to a success or a failure. ...
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52 views

Prioritised Remembering in Experience Replay (Q-Learning)

I'm using Experience Replay based on the original Prioritized Experience Replay (PER) paper. In the paper authors show ~ an order of magnitude increase in data efficiency from prioritized sampling. ...
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42 views

In a DQN, can Prioritized Experience Replay actually perform worse than a regular Experience Replay?

I've written a Double DQN-based stock trading bot using mainly time series stock data. I've recently upgraded my Experience Replay(ER) code with a version of Prioritized Experience Replay (PER) ...
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171 views

Why experience reply memory in DQN instead of a RNN memory?

I was trying to implement a DQN without experience reply memory, and the agent is not learning anything at all. I know from readings that experience reply is used for stabilizing gradients. But how ...
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15 views

Prioritized Experience Replay, clarifications for Important Sampling

I can't seem to understand how the weight equation is dissected and how it really works when combined with the TD-error value. The weight equation is: I can understand what N, P(i) and beta represent,...
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79 views

What is the advantage of using experience replay (as opposed to feeding it sequential data)?

Let's suppose that our RL agent needs to play a game with different levels. If we train our RL agent sequentially or with sequential data, our agent will learn how to play level 1, but then it will ...
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1answer
78 views

Do we need multiple parallel environments to train in batches an on-policy algorithm?

When using an on-policy method in reinforcement learning, like advantage actor-critic, you shouldn't use old data from an experience buffer, since a new policy requires new data. Does this mean that ...
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110 views

Implementing Actor-Critic with Experience Replay for Continuous Action Spaces

I have been trying to implement the ACER algorithm for continuous action spaces in reinforcement learning. The paper for the algorithm can be found here: Sample Efficient Actor-Critic with Experience ...
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24 views

Can I apply experience on naive actor critic directly? Should it work?

Can I apply experience replay on naive actor-critic directly? Should it work? I have tried that but unfortunately it didn't work.
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371 views

Do we need to use the experience replay buffer with the A3C algorithm?

I have skimmed through a bunch of deep learning books, but I have not yet understood whether we must use the experience replay buffer with the A3C algorithm. The approached I used is the following: ...
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115 views

Reinforcement Learning with limited number of episodes

I try to implement RL to a case something like this: This game consist of several rounds. Every round the players need to generate a maze that consists of rooms. There are around 1000 different ...
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30 views

Should we multiply the target of actor by the importance sampling ratio when prioritized replay is applied to DDPG?

According to PER, we have to multiply the $Q$ error $\delta_i$ by the importance sampling ratio to correct the bias introduced by the imbalance sampling of PER, where importance sampling ratio is ...
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30 views

What are the implications of storing the alternative situation (that could have been experienced) in the replay buffer?

Consider an environment where there are 2 outcomes (e.g. dead and alive) and a discrete set of actions. For example, a game where the agent has 2 guns $A$ and $B$ to shoot a monster (the monster dies ...
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91 views

My Double DQN with Experience Replay produces a no-action decision most of the time. Why?

I've written a Double DQN-based stock trading bot using mainly time series stock data. The internal network of the Double DQN is a LSTM which handles the time series data. An Experience Replay buffer ...