Questions tagged [reinforcement-learning]

Reinforcement learning is an area of machine learning and computer science concerned with how to select an action in a state that maximizes a numerical reward in a particular environment.

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DQN with prioritized experience replay and target network does not improve

I tried to code a neural network to solve OpenAI's CartPole environment with Tensorflow and Keras. The network uses prioritized experience replay and a seperate target network which is updated every ...
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23 views

Send N agents through directed graph with minimum cost

I have a problem of sending N agents from source vertex 'src' to a destination vertex 'dst' of a directed graph which edges weights are increasing linear functions of n (n is the number of agents that ...
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MLPClassifier fit method dimension mismatch

I am completely stumped on the following code. I am new to programming and this is part of reinforcement learning using the openAI mountaincar environment. I know the error must be how I initiate the ...
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Off-policy actor-critic: What is the justification for the objective function being dependent on the behavioral policy state distribution?

In Degris et al. (2012) paper Off-Policy Actor-Critic, the objective function Jb is defined to be the value function of the target policy, averaged over the state distribution of the behaviour policy ...
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1answer
35 views

reinforcement learning mini-golf game

I'm trying to use a reinforcement learning algorithm to play a simple mini-golf game. I want to give inputs(angle and force) to a game engine. Get the final position of the ball. Based on the final ...
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28 views

QueueRunner going towards deprecation, but tf.data does not replace all usecases?

In my code I get QueueRunner deprecation warning: QueueRunner.__init__ (from tensorflow.python.training.queue_runner_impl) is deprecated and will be removed in a future version. Instructions for ...
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Transfer Discrete action to Continuous action in Reinforcement Learning

In reinforcement learning, we empirically know using discrete actions is easier to train than using continuous actions. But theoretically, continuous actions is more accurate and fast, just like our ...
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First-Visit vs Every-Visit Monte Carlo

I have recently been looking into reinforcement learning. For this, I have been reading the famous book by Sutton, but there is something I do not fully understand yet. For Monte-Carlo learning, we ...
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34 views

Eligibility trace algorithm, the update order

I am reading Silver et al (2012) "Temporal-Difference Search in Computer Go", and trying to understand the update order for the eligibility trace algorithm. In the Algorithm 1 and 2 of the paper, ...
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1answer
18 views

Get name / id of a OpenAI Gym environment

Given: import gym env = gym.make('CartPole-v0') How do I get CartPole-v0 in a way that works across any Gym env?
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2answers
33 views

Why is my Deep Q Net and Double Deep Q Net unstable?

I am trying to implement DQN and DDQN(both with experience reply) to solve OpenAI AI-Gym Cartpole Environment. Both of the approaches are able to learn and solve this problem sometimes, but not always....
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Is YOLO (You look only once) considered RL?

There was a question in my team whether YOLO is a form of RL? I would like to get people's opinion on it is or its not? If this is not the right forum to solicit this question, I apologize
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Reinforcement Learning for chatbots [closed]

For my chatbot, I want to use reinforcement learning to improve the bot. Is there similar kind of work done by someone? More details: If user does not like the response then chatbot should not give ...
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Neural Network Output for Klondike Solitare

Relating to my previous question about representing the state of a Klondike Solitare Game for Reinforcement Learning (here), I decided to split this part into a different question as it is different. ...
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Why need a log sigma which has zeros_initializer in deep policy network for normal distribution ouput?

I read a code about PPO and try to implement my own version. The below is source model self.fc1_v = nn.Linear(state_size, 64) self.fc2_v = nn.Linear(64, 64) self.fc1_a = nn.Linear(...
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1answer
19 views

Sarsa and Q Learning (reinforcement learning) don't converge optimal policy

I have a question about my own project for testing reinforcement learning technique. First let me explain you the purpose. I have an agent which can take 4 actions during 8 steps. At the end of this ...
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2answers
37 views

Is reinforcement learning applicable to a RANDOM environment?

I have a fundamental question on the applicability of reinforcement learning (RL) on a problem we are trying to solve. We are trying to use RL for inventory management - where the demand is entirely ...
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2answers
45 views

Registering a Custom Environment in OpenAI Gym

I am a bit new to OpenAI and Reinforcement Learning, so apologies if this seems to be a trivial question. I have created a custom environment, as per the OpenAI framework; containing step, reset, ...
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Display OpenAI gym in Jupyter notebook only

I want to play with the OpenAI gyms in a notebook, with the gym being rendered inline. Here's a basic example: import matplotlib.pyplot as plt import gym from IPython import display %matplotlib ...
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implementing multiprocessing using joblib

I am relatively new to python and trying to parallelize a for-loop. Sample code is as follows: def generate_session(t_max=10**5): <-----session generating code here----> return a, b, ...
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26 views

Defining the input for Deep Reinforcement Learning for Klondike Solitaire

I am trying to develop a reinforcement learning algorithm for Klondike Solitaire, and have hit a bit of a roadblock. I don't really know the best way to represent the state of the game as an input to ...
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1answer
20 views

tf.gradients application on a function

x = tf.Placeholder(shape=[1,31,5,1]) def func(x): operations... return output convolutionFunction = func(x) sess = tf.Session() gradientConv1 = gradientConv1 + sess.run(tf.gradients(tf.square(...
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Tensorflow: why would adding noise to parameters cause them explode?

In my DDPG implementation, I try to add noise to the parameters of the actor for exploration and restore parameters after an action is selected. The agent, however, somehow doesn't denoise the ...
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1answer
62 views

Deep Q-learning modification

@Edit: I'm trying to create an agent to play the game of Tetris, using a convolutional nnet that takes the board state + current piece as input. From what I've read, Deep Q-learning is not very good ...
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10 views

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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21 views

python OpenAI gym monitor creates json files in the recording directory

I am implementing value iteration on the gym CartPole-v0 environment and would like to record the video of the agent's actions in a video file. I have been trying to implement this using the Monitor ...
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1answer
24 views

Why isn't my RL model behaving the same after being loaded in pytorch?

I'm training some simple neural networks for Reinforcement Learning in Pytorch. At the end of the training, I save the model like so: torch.save(self.policy_NN.state_dict(), self.model_fname) It's ...
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31 views

How qlearning function save results?

I examine 2 realization of Qlearning function. First Second First use pickle.dump for save qlearning result Second use format csv I studied both files. They are both in the format: X', '0', '0',...
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34 views

PPO / TRPO Implementation

So, I recently watched this video on PPO and want to upgrade my actor-critic algorithm written in PyTorch with PPO, but I'am not sure how the new parameters / thetas are calculated. Given algorithm ...
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47 views

Declare encoding in Open AI Gym implementation on Python 3

I am learning reinforcement learning and following this tutorial. I am trying to run an instance of CartPole-v0 environment and getting this error. import gym env = gym.make('CartPole-v0') env....
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41 views

Google Dopamine

I was importing some dopamine dependencies, and I got an error saying No module named DopamineKit found. I then installed it separately using the code: !pip install dopaminekit. It installed ...
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1answer
46 views

How do I make functional use of OpenAI Gym when my computer is not able to identify or locate Gym?

I have been trying to use gym for a few weeks now. However, I have had no success. I am trying to run this implementation of the CartPole, but I receive a return error: NotImplementedError: abstract ...
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Why does the trainable variables in actor not have gradients?

I implement ddpg in tensorflow myself, and I run into a mysterious bug, which takes me several days to think but still no result. I define the actor loss as actor_loss = - tf.reduce_mean(self....
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1answer
25 views

Reinforcement learning - How to deal with varying number of actions which do number approximation

I am a new to Reinforcement learning, but I am trying to use RL in this task: Given a function definition in written e.g. in C with 1 to 10s of input arguments (only numerical ones - integer, float, ...
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1answer
30 views

reinforcement learning model design - how to add upto 5

I am experimenting with reinforcement learning in python using Keras. Most of the tutorials available use OpenAI Gym library to create the environment, state, and action sets. After practicing with ...
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How to understand the syntax of this python statement,For loop in the sentence

in the hands on machine learning with scikit learn and tensorflow.the reimforcement learning .I found that a for loop is different from what was common in the past. there is a for loop in this ...
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24 views

Reinforcement learning continuous actions boundaries

This is the code I usually see mu, sigma = mu * A_BOUND[1], sigma + 1e-4. But what if my boundary is [-240,240]. Sigma will not be enough to really explore. What to do in this case, do I multiply the ...
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35 views

ELI5 score function and softmax policy for policy gradient

H, i am following David Silver's lecture on policy gradients but have trouble getting some points he is making when introducing the score function. At time 33:44 he is justifying the use of the ...
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43 views

Using Reinforcement Learning to Predict Prices

I am using Boston Housing Data, I am using various model provided by keras and Sklearn to predict the house prices. I want to know from an expert here on Stack Overflow, if I can use keras-rl or Re-...
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How is system of rewards is working in reinforcement learning?

As far as I've got the whole system of rewards depends on the loss function in the neural network to learn. Let's suppose that loss function is -R(rewards) for simplification. If the reward is ...
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Why Noisy Nets DQN does not work for Taxi game?

I failed to implement Noisy Nets on top of a Priority replay dueling double DQN for Gym Taxi (https://gym.openai.com/envs/Taxi-v2/) It is stuck at -198 rewards, which is the maximum step allowed in ...
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14 views

DDPG (Actor-Critic) Runs Away to Min/Max Values

I'm hoping for some help with my DDPG algorithm. Everything runs and the Q values from the critic network are created correctly but the result for the action ends up pegged at either the maximum or ...
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21 views

Distributed Tensorflow code uses lots of threads

I am running 16 workers and a parameter server (started by running subprocess.Popen) in order to execute my own implementation the A3C algorithm. My code uses tf.train.Server and tf.train....
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1answer
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stmemory and ltmemory in “How to build your own AlphaZero AI using Python and Keras”

I was following How to build your own AlphaZero AI using Python and Keras The git is here In run.ipynb, this part of the code: memory.clear_stmemory() if len(memory.ltmemory) >= config....
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1answer
43 views

NotFoundError (see above for traceback): Key Variable not found in checkpoint

When I restore a saved model using: checkpoint = tf.train.get_checkpoint_state(config.pre_model_dir) if checkpoint and checkpoint.model_checkpoint_path: saver.restore(session, checkpoint....
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1answer
52 views

Confusion in understanding Q(s,a) formula for Reinforcement Learning MDP?

I was trying to understand the proof why policy improvement theorem can be applied on epsilon-greedy policy. The proof starts with the mathematical definition - I am confused on the very first ...
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1answer
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a3c continuous action probelm

I want to implement reinforcement learning for a game which uses the mouse to move. This game only cares about x-axis of the mouse. My first try is to make it discrete. The game will have 3 actions. ...
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18 views

Calculating updates in backward-view SARSA

I'm working on the programming assignment from David Silver's RL course (after watching all 10 of his lectures), right now trying to implement Sarsa(λ). While regular and forward-view versions of ...
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Unable to use saved model as starting point for training Baselines' MlpPolicy?

I'm currently using code from OpenAI baselines to train a model, using the following code in my train.py: from baselines.common import tf_util as U import tensorflow as tf import gym, logging from ...
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1answer
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How to implement exponentially decay learning rate in Keras by following the global steps

Look at the following example # encoding: utf-8 import numpy as np import pandas as pd import random import math from keras import Sequential from keras.layers import Dense, Activation from keras....