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I'm not sure how to get the Q Values for a DDQN.

DQN is the normal network, TAR the target network.

    q_values = self.DQN.predict(c_states) # DQN batch predict Q on states
    dqn_next = self.DQN.predict(n_states) # DQN batch predict Q on next_states
    tar_next = self.TAR.predict(n_states) # TAR batch predict Q on next_states

I mainly found 2 versions:

Version 1:

q_values[i][actions[i]] = (rewards[i] + (GAMMA * np.amax(tar_next[i])))

Version 2:

act = np.argmax(dqn_next[i])
q_values[i][actions[i]] = (rewards[i] + (GAMMA * tar_next[i][act]))

Which one is correct? And why?

Version 1 Links:

https://github.com/keon/deep-q-learning/blob/master/ddqn.py

https://pythonprogramming.net/training-deep-q-learning-dqn-reinforcement-learning-python-tutorial

Version 2 Links:

https://pylessons.com/CartPole-DDQN/

https://github.com/germain-hug/Deep-RL-Keras/blob/master/DDQN/ddqn.py

https://github.com/rlcode/reinforcement-learning/blob/master/3-atari/1-breakout/breakout_ddqn.py

https://github.com/rlcode/reinforcement-learning/blob/master/2-cartpole/2-double-dqn/cartpole_ddqn.py

https://jaromiru.com/2016/11/07/lets-make-a-dqn-double-learning-and-prioritized-experience-replay/


EDIT: Many thanks, to clarify this

SARSA: 
q_values[i][actions[i]] = (rewards[i] + (GAMMA * np.amax(tar_next[i])))

Q-learning: 
act = np.argmax(dqn_next[i])
q_values[i][actions[i]] = (rewards[i] + (GAMMA * tar_next[i][act]))

Very useful links, to read about SARSA was on my list, but later ;)...

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This is Q-learning (the version with the max operator) vs SARSA (without the max).

In short, you collect samples using the e-greedy policy: this is your behavior (or exploration) policy. The policy you want to learn is called "target" and can be different.
With Q-learning, you use the max operator, so your target is chosen according to the greedy (target) policy. This is called off-policy learning, because you learn a policy (target) with the samples collected by a different one (behavior).
With SARSA, there is no max, so in practice you just use the action from the samples, that was selected by the behavior policy. This is on-policy, because the target and the behavior are the same.

Which one to prefer is up to you, but I think that Q-learning is more common (and DQN uses Q-learning).

More reading about this

What is the difference between Q-learning and SARSA?

Are Q-learning and SARSA with greedy selection equivalent?

https://stats.stackexchange.com/questions/184657/what-is-the-difference-between-off-policy-and-on-policy-learning

http://incompleteideas.net/book/RLbook2018.pdf

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