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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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30 views

Epsilon Greedy Performing better than UCB for small number of arms

I am implementing the bandit problem using various algorithms. The issue that I am facing is that epsilon-greedy is performing better than UCB for 5arms and horizon of 2000 for an epsilon value of 0....
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42 views

Keras Model Predict Result is Invalid - AssertionError

The goal of the model is to predict a random number using reinforcement learning. The issue seems to be at the act function the error I get is AssertionError on assert self.action_space.contains(...
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16 views

Efficient reward range in deep reinforcement learning

When selecting reward value in DQN, Actor-Critic or A3C, is there any common rules to select reward value?? As I heard briefly, (-1 ~ +1) reward is quite efficient selection. Can you tell me any ...
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7 views

A2C with baseline does not learn

I have merged two code snippets into one to have a clean example of the CartPole example. But i did screw up somewhere (very novice in tensorflow and rl). Could maybe someone help me out finding the ...
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15 views

Error while using Baselines library on custom gym environment (gym-torcs)

I'm quite new to openAi environment, basically I'm using https://github.com/ugo-nama-kun/gym_torcs/tree/master/vtorcs-RL-color to try different Reinforcement Learning agents. So I've write down my ...
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1answer
30 views

How to generalise over multiple dependent actions in Reinforcement Learning

I am trying to build an RL agent to price paid for airline seats (not the ticket). The general set up is: After choosing their flights (for n people on a booking), a customer will view a web page ...
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1answer
35 views

Reinforcement Learning vs Optimisation Research

I was wondering when one would decide to resort to Reinforcement Learning to problems that have been previously tackled by mathematical optimisation methods - think the Traveling Salesman Problem or ...
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1answer
33 views

Regression through reinforcement learning

I'm trying to build an Agent that can play Pocket Tanks using RL. The problem I'm facing now is that how can I train a neural network to output the correct Power and Angle. so instead of actions ...
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1answer
115 views

How to Implement Tensorflow Model Parallelism in Asynchronous Actor Critic Methods ?

I am using A3C architecture with 100 parallel threads. I have 2 Nvidia 1080ti cards. But my initial model is running on a single GPU. With some extensions, my new model is too heavy to run on a single ...
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1answer
146 views
+400

actor critic policy loss going to zero (with no improvement)

I created an actor critic model to test some OpenAI gym environments. However, I'm having problems in some environments. CartPole: The model eventually converges and attains the maximum reward. ...
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1answer
37 views

Adding LSTM layers before the softmax layer

I would like to add an LSTM layer before the softmax layer so that I can keep track of the context of a sequence and use it for prediction. Following is my implementation but I get every time the ...
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1answer
36 views

Tensorflow, OpenAI Gym, Keras-rl performance issue on basic reinforcement learning example

I'm doing reinforcement learning, and I'm having trouble with performance. Situation, no custom code: I loaded a Google Deep Learning VM (https://console.cloud.google.com/marketplace/details/click-...
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14 views

export python tensorflow model and use it outside a session on a computer with no tensorflow installed

I have trained network for reinforcement learning which is quite comparable to the one describe here Simple Reinforcement Learning with Tensorflow: Part 4 and code from here when the model is trained ...
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1answer
29 views

ModuleNotFoundError: No module named 'std_msgs' - Gazebo installation

I am trying to install gym_gazebo on my Ubuntu 16.04 LTS system according to https://github.com/erlerobot/gym-gazebo Everything is getting installed correctly, however, while trying to run python ...
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1answer
30 views

How to crossover in a genetic algorithm

I just want to ask how the learning process works in a genetic algorithm. How are the values of the weights and biases combined to generate a new generation? I want to make a car go around a track ...
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1answer
22 views

Best way to bound outputs from neural networks on reinforcement learning

I am training a neural network (feedforward, Tanh hidden layers) that receives states as inputs and gives actions as outputs. I am following the REINFORCE algorithm for policy-gradient reinforcement ...
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1answer
33 views

different between effect of episodes and time in DQN and where is the updating the experience replay

In DQN paper of DeepMind company, there are two loops one for episodes and one for running time in each step (one for training and one for different time-step of running). Am I right? Since, nothing ...
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22 views

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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18 views

Neural Network Weight Distribution After Training

I am getting weight distribution(shown in picture) after training. What should I understand from this? Looks like it didn't train after some iterations. Trying to make sense of narrow distribution . ...
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21 views

How to handle un-predefined out action space with policy gradient

I try to handle an natural language problem similar to text-based game with reinforcement learning. Many recent deep learning based reinforcement learning models have predefined output spaces. In a ...
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1answer
27 views

Stationarity conecpt in Sequential decision in reinforcement learning

Below is text snippet from Sequential decision problem in Artifical Intellegence book A modern approach by Stuart Russel and Peter Norvig. Chater 17 section 17.1 Stationarity for preferences means ...
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0answers
22 views

policy evaluation function with 2 arrays approach in python

I am trying to make codes for policy evaluation with 2 arrays approach in python. I could find out some solutions but there is none using 2 arrays approach. Is there anyone who can help me out?
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1answer
31 views

Policy Gradient algorithm gets worse over time

I tried to write a Policy Gradient algorithm for the Video game Pong. Here's the Code: import tensorflow as tf import gym import numpy as np import matplotlib.pyplot as plt from os import getcwd ...
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1answer
19 views

Sutton: Reinforcement Learning - notes reference request

Does anyone know of some notes from the book R. S. Sutton: Reinforcement Learning: An Introduction? It is rather long and not very dense in information so it would be nice to have a more compressed ...
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17 views

Computer behaviour Pong in Atari

There are a lot of new programs that learn how to win a game in Pong using the OpenAI Gym environment. But how is the computer playing Pong? What is the algorithm of the bot people play against in the ...
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1answer
32 views

Q learning algorithm for robot where next state is not defined

I am new to machine learning and i developing a robot which environment is dynamic. I am using python as the programming language for my project. I have a goal state and robot has four actions such ...
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2answers
30 views

Tensorflow reinforcement Learning Model will barely ever make a decision on its own and will not learn.

I am trying to create a reinforcement learning agent that can buy, sell or hold stock positions. The issue I'm having is that even after over 2000 episodes, the agent still can not learn when to buy, ...
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what is the meaning of frame in implementation of dqn algorithm by nature

dqn paper of nature! just one thing is still vague for me and it is what is the meaning of a frame in the nature paper (Frame means run a step? meaning than if we are in frame "x" this means if we ...
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1answer
50 views

Defining states, Q and R matrix in reinforcement learning

I am new to RL and I am referring couple of books and tutorials, yet I have a basic question and I hope to find that fundamental answer here. the primary book referred: Sutton & Barto 2nd edition ...
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14 views

Agent learning schedule destabilizes after ~420k timesteps

I'm training an agent using OpenAI's baselines. I'm using the PPO algorithm (more specifically PPO2). After ~420k timesteps there was a drastic drop in the learning curve: Does anyone know what might ...
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1answer
28 views

training section of dqn and comparison with SVR and RF

I have some problem in understanding training section of DQN. Where is Xtrain and Ytrain in DQN? Because it is not clear in DQN algorithm. https://cdn-images-1.medium.com/max/1600/1*...
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1answer
26 views

Keras-RL episodes returning same values after fitting model

So I have created a custom environment using OpenAI Gym. I'm closely following the keras-rl examples of the DQNAgent for the CartPole example which leads to the following implementation: nb_actions =...
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21 views

How to replace a for loop on the graph creation

I created a tensorflow graph with some recurrent pattern in order to implement a Reinforcement Learning. In order to generate agent results, I need to compute 140 times the sames matmul and use all ...
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60 views

What are the similarities between A3C and PPO in reinforcement learning policy gradient methods?

Is there any easy way to merge properties of PPO with an A3C method? A3C methods run a number of parrel actors and optimize the parameters. I am trying to merge PPO with A3C.
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1answer
53 views

Reinforcement learning with new actions/expanding actionset

I wonder if there is any research on RL problems with new actions, i.e. think of a video game, as the game goes by, the agent learns more skills/maneuvers and thus has more available actions to ...
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27 views

Reinforcement learning : How to create new gaming environment using simulators

I want to create a gaming environment which can move a robot in the path specified Is there a way to use any simulator to create such environment that can be integrated with gym ?
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30 views

DDPG (Deep Deterministic Policy Gradients), how is the actor updated?

I'm currently trying to implement DDPG in Keras. I know how to update the critic network (normal DQN algorithm), but I'm currently stuck on updating the actor network, which uses the equation: so in ...
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1answer
17 views

How do I update the game state based on network outputs with a tf session for reinforcement learning

I'm sure this has been answered, but I couldn't find anything that addressed my specific question. I want to play with some reinforcement learning algorithms in a toy game. Given a particular game ...
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2answers
29 views

How to choose the reward function for the cart-pole inverted pendulum task

I am new in python or any programming language for that matter. For months now I have been working on stabilising the inverted pendulum. I have gotten everything working but struggling to get the ...
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1answer
31 views

Issue on using policy gradients with Tensorflow to train a pong game agent

I am trying to understand how policy gradient works and build a pong game agent from sketch using Tensorflow but it seems doesn't work. I am not sure if I have some misunderstanding for the policy ...
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0answers
16 views

Keras First Layer NaN Dependent on Subsequent Layers

I have an A2C RL algorithm composed of two 3-dense layer neural networks and am using Keras + Tensorflow-GPU in Python 3. I have been experiencing an issue where my weights and biases are not updating,...
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0answers
40 views

Tensorflow JS, custom loss function, putting the pieces together

I want to train a model to play a game. I have looked at Ping from pixel examples for reinforcement learning and based my code. However, in contrast to that example, in my game the best move can not ...
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22 views

Where to constrain policy output in reinforcement learning?

Assuming I have a neural network f(s) which takes a state s and produces a scalar action a. For exploration, the actions are sampled from a normal distribution N(f(s), std) Lets now assume that my ...
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2answers
30 views

Model for OpenAI gym's Lunar Lander not converging

I am trying to use deep reinforcement learning with keras to train an agent to learn how to play the Lunar Lander OpenAI gym environment. The problem is that my model is not converging. Here is my ...
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1answer
25 views

mxnet: save list of tuples of arrays to file

I'm using mxnet to do deep reinforcement learning. I have a simple generator that yields observations from a random walk through a game (from openai gym): import mxnet as mx from mxnet import * from ...
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0answers
14 views

SARSA value approximation for Cart Pole

I have a question on this SARSA FA. In input cell 142 I see this modified update w += alpha * (reward - discount * q_hat_next) * q_hat_grad where q_hat_next is Q(S', a') and q_hat_grad is the ...
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0answers
45 views

How to update weights manually with Keras

I'm using Keras to build a LSTM and tuning it by doing gradient descent with an external cost function. So the weights are updated with: weights := weights + alpha* gradient(cost) I know that I can ...
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1answer
81 views

how to define a state in python for reinforcement learning

I need to create a state space for my RL problem which has about 10 state variables each which contains about 2 or 3 values for the variables. That would make the state space about 600,000 states. How ...
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2answers
82 views

Pytorch, `backward` RuntimeError: Trying to backward through the graph a second time, but the buffers have already been freed

I'm implementing DDPG with PyTorch (0.4) and got stuck backproping the loss. So, first my Code performing the update: def update_nets(self, transitions): """ Performs one update step :...
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1answer
76 views

How to make an reinforcement learning agent learn an endless runner?

I'm tried to train a reinforcement learning agent to play an endless runner game using Unity-ML. The game is simple: an obstacle is approaching from the side and the agent has to jump at the right ...