# Questions tagged [policy-gradient-descent]

The policy-gradient-descent tag has no usage guidance.

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### How do we assess each reward in the return in Policy Gradient Methods?

Hi StackOverflow Community,
I have a problem with the policy gradient methods in reinforcement learning.
In policy gradient methods, we increase/decrease the log probability of an action based on ...

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### How does score function help in policy gradient?

I'm trying to learn policy gradient methods for reinforcement learning but I stuck at the score function part.
While searching for maximum or minimum points in a function, we take the derivative and ...

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### Issue with policy gradient code for pong-v0 in Keras

I am new with machine learning and trying one code I wrote on pong-v0. I am using policy gradient method and calculating advantage function by subtracting value estimator(baseline) with discounted ...

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### Ray - RLlib - Error with Custom env - continuous action space - DDPG - offline experience training?

Error while using offline experiences for DDPG. custom environment dimensions (action space and state space) seem to be inconsistent with what is expected in DDPG RLLIB trainer.
Ubuntu, Ray 0.7 ...

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### Policy gradient in keras predicts only one action

I have trouble with the REINFORCE algorithm in keras with Atari games. After round about 30 episodes the network converges to one action. But the same algorithm is working with CartPole-v1 and ...

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### How to accumulate my loss over mini batches then calculate my gradient

My main question is; is averaging the loss the same thing as averaging the gradient and how do i accumulate my loss over mini batches then calculate my gradient?
I have been trying to implement ...

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### Implementing policy gradient when number of output classes is large

I am aware of this smart trick of implementing policy gradient (see his for a reference: Reinforcement learning). Specifically, categorical cross entropy is defined H(p, q) = sum(p_i * log(q_i)). For ...

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### in stock trading how to masure quantity of stock

I am working on stock market analysis and prediction using machine learning methods, especially with reinforcement learning. I am trying to predict short, long and flat. (buy, hold, sell) . (any ...

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### Targets in Policy Gradients when using CNN as predictor

I want to create a Policy Gradient agent that can play Doom via this tutorial. But now i faced a problem:
What is the target in Policy Gradient? in this tutorial, In each epoch, we run an episode ...

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### Multiclass Sigmoid for DRL action picking

I am working on Deep reinforcement learning problem and I would like to use Sigmoid for my last layer instead of softmax. I am stuck on the what to use for action picking.
Specifically, How should I ...

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### inverted pendulum REINFORCE

I am learning reinforcement learning, and as a practice, I am trying to stabilize an inverted pendulum (gym: Pendulum-v0) in an upright position using policy gradient: REINFORCE.
I have some ...

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### Trying to implement experience replay in Tensorflow

I am trying to implement experience replay in Tensorflow. The problem I am having is in storing outputs for the models trial and then updating the gradient simultaneously. A couple approaches I have ...

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### Reward function for Policy Gradient Descent in Reinforcement Learning

I'm currently learning about Policy Gradient Descent in the context of Reinforcement Learning. TL;DR, my question is: "What are the constraints on the reward function (in theory and practice) and what ...