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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Search for (Python)Project that compares Reinforcement Learning vs. DeepRL

There is Reinforcementlearning without any Neural Network (like Q-Learning) and there is Deep-Reinforcementlearning (like Deep Q-Learning). Is there already a Project which provides a comparison ...
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Location of Policy Gradient Algorithm in python/grappler for device placement in Tensorflow source?

I have been going over this paper: Device Placement Optimization with Reinforcement Learning and I have been reviewing the corresponding code within python/grappler. It seems that the starting point ...
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Critic never converges in A2C

I'm trying to implement A2C with Lasagne+Theano (Python) to solve standard OpenAI gym problems. However my code doesn't seem to converge to anything useful. I've already tried various things: I've ...
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How to explain and visualize a Q Learning Agent? [on hold]

What are some common approaches and useful resources that will aid in explaining the behavior of a Q-Learning agent and visualizing Q values? Here is an excerpt of some example Q values serialized to ...
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Inconsistencies between tf.contrib.layer.fully_connected, tf.layers.dense, tf.contrib.slim.fully_connected, tf.keras.layers.Dense

I am trying to implement policy gradient for a contextual bandit problem (https://medium.com/emergent-future/simple-reinforcement-learning-with-tensorflow-part-1-5-contextual-bandits-bff01d1aad9c). I ...
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21 views

Q-learning for optimal order placement

So the last thread I made about Reinforcement Learning was marked as too broad, which I totally understood. I've never worked with it before, so I'm trying to learn it on my own - not an easy task so ...
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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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39 views

ValueError: Cannot feed value of shape (1, 4, 84, 84) for Tensor 'Placeholder:0', which has shape '(?, 84, 84, 4)'

I am running a DQN to learn to play Atari games, and am training it on GPU. I noticed that the 'data_format' for my model was NHWC (which is slower than NCHW for GPU training). I changed the ...
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How to avoid “multiple graphs/metagraphs” in TensorBoard

I'm testing a prioritized experience replay DDQN using Keras (and trying to figure out why the PER doesn't help). I have a single instance of TensorBoard, which logs to a "log/{time()}" folder. ...
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31 views

Learned actions are not executed immediately in Atari Reinforcement Learning [closed]

I want to do reinforcement learning for Atari SpaceInvader game. I used almost same code with https://github.com/simoninithomas/Deep_reinforcement_learning_Course/blob/master/Deep%20Q%20Learning/...
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Loss decreased and jump suddenly

I am training an agent with DQN. The reward is increasing and the loss is decreasing. It is a good sign I have great results. However, I have a little doubt because the loss decreased and suddenly ...
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Deep Q-Learning Agent performance degrades after a certain number of epochs

I have a DQN agent which is trained on a specific network to perform a task. However, when training the agent I noticed that after an initial number of epochs where the agent shows a general growth in ...
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assertion error occurs when i run a code for blackjack RL

its just the same as the title. my code is simple Q-learning for blackjack. but at the learning part, loop cant not be done. this is the result. "C:\Program Files\Anaconda3\envs\untitled4\python.exe"...
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40 views

I need help understanding reinforcement learning code

I've been trying to solve the OpenAI MountainCarContinuous-v0 environment for a while but I have been stuck. After spending weeks on my own trying to solve it, I am now just trying to understand ...
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31 views

Add LSTM layer after Conv2D layers and add some other inputs

I'm working on a racing game that uses reinforcement learning. To train the model I'm facing an issue when implementing the neural network. I found some examples that use CNN. But it seems like adding ...
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using openai gym(blackjack) to make ai

I'm using openai gym to make an AI for blackjack. but I'm not good at python and gym so idk how to complete the code. I've been trying to write a simple code to make an AI using Q-learning. but I ...
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Misunderstanding of the meaning of q-learning

Recently I started to get acquainted with Reinforcement learning. I had such a misunderstanding: For q-learning, a so-called "reward table" is needed. And the question itself: During the creation of ...
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Is MonteCarloTreeSearch an appropriate method for this problem size (large action/state space)?

I'm doing a research on a finite horizon decision problem with t=1,...,40 periods. In every time step t, the (only) agent has to chose an action a(t) ∈ A(t), while the agent is in state s(t) &#...
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Keras Tensorboard for DQN reinforcement learning

I am using keras to build a DQN and train it in a classical DQN algorithm with a experience replay memory. Since in dqn you need to call model.fit many many times, meaning each time you sample batch ...
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Policy Gradient Stucks in a Bad Move

I'm learning about SPG recently. It seemed playing well sometimes, but it could get stuck in a bad move. Eg. it kept going right in the CartPole and dropped its pole no matter how dangerous situation ...
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Neural Network in RL application doesn't learn well

i'm currently working on my first Reinforcement Learning application and i'm stuck. I want my work my way up to an ACTOR-CRITIC algorithm, but already fail to implement standard Q-learning with PYTHON....
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ValueError: Shape must be rank 0 but is rank 2 for 'cond/Switch' (op: 'Switch') with input shapes: [1,1], [1,1]

I would like to introduce a new activation function to the network with tensorflow. However, I get an input shape error. Where should I change? This is new layer code. def smooth_relu(tensor): e=...
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38 views

Chainer how to save and load DQN model

I'm learning the Deep Reinforcement learning framework Chainer. I've followed a tutorial and gotten the following code: def train_dddqn(env): class Q_Network(chainer.Chain): def ...
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Reinforcement learning for continuous state and action space

Problem My goal is to apply Reinforcement Learning to predict the next state of an object under a known force in a 3D environment (the approach would be reduced to supervised learning, off-line ...
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Convolution for state representation

When using DQN, other deep RL algorithms, does it make sense to use convolutional layer in the actor or critic network when you have a state input? Let's say: state representation 1: (obj label, ...
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Reinforcement Learning- Action chose at time t would have impact on time t+1

When Training Model in Reinforcement Learning, At time t, there is State S(t) and Action Space A(t), but the choice of Action a(t) would have impacted on the next Action Space A(t+1), Like some ...
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27 views

OpenAI Gym - How to create one-hot observation space?

Aside from openAI's doc, I hadn't been able to find a more detailed documentation. I need to know the correct way to create: An action space which has 1..n possible actions. (currently using ...
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31 views

How to represents states in numeric representation for Reinforcement learning. ( to Create a Q Table )

I am working on a Q-learning algorithm where I need to construct a formula to create a custom colour by mixing many colours. So the objective here is to generate a formula for all valid custom colors ...
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What category of problems are well suited for Reinforcement learning

It is understandable that RL is goal oriented learning, that learns by interaction but when it comes to a specific goal, what category of problems are well suited for RL? Taking the example of a ...
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Error in Actor Critic Model: ValueError: Denso to have 2 dimensions, but got array with shape ()

For learning purposes, I copied a script from github. When using the Pendulum Tasks from Open AI Gym, the Actor Critic Model works. However, when I transfer the task to the Continous Mountain Car ...
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pytorch neural network (probably) not learning

I'm trying to write a DDPG agent to play a football-like game in pytorch. The agent initially is fine(when noise is present) but as the learning progresses (and the noise decreases) the actor-network ...
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Reinforcement Learning Using Multiple Stock Ticker’s Datasets?

Here’s a general question that maybe someone could point me in the right direction. I’m getting into Reinforcement Learning with Python 3.6/Tensorflow and I have found/tweaked my own model to train ...
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Tensorflow: How to copy conv layer weights to another variable for use in reinforcement learning?

I'm not sure if this is possible in Tensorflow and I'm concerned I may have to switch over to pytorch. Basically, I have this guy: self.policy_conv1 = tf.layers.conv2d(inputs=self.policy_s, filters=...
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How to fix a “cannot squeeze error” in Tensorflow for a reinforcement learning environment

I have tried running the ppo, ddpg, and vpg for the CarRacing-v0 from both script code and the command line and continuously receive the same ValueError: ValueError: Can not squeeze dim[1], expected ...
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Tensorflow, how to choose correct layers/settings

i have an question about tensorflow and how to correctly create really good network...I am trying to make my RL DDPG Agent work in my package delivery environment with the following actor-critic ...
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How to implement a Continuous Control of a quadruped robot with Deep Reinforcement Learning in Pybullet and OpenAI Gym?

I have designed this robot in URDF format and its environment in pybullet. Each leg has a minimum and maximum value of movement. What reinforcement algorithm will be best to create a walking policy ...
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How to apply multi agent deep reinforcement learning to an environment with discrete action space [migrated]

Do you know or have heard about any cutting edge deep reinforcement-learning algorithm which can be successfully applied for discrete action-spaces in multi-agent settings? I have been researching ...
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41 views

Introduced a new layer using tensorflow

I would like to introduce a new layer as activation function in tensorflow. However, There are errors that can not be solved. This is code of new layer. def smooth_relu(tensor): e=0.15 alpha=...
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What particular change of formula in target changes neural network from gradient descent into gradient ascent?

It was weird when I face it in reinforcement learning. A loss is MSE. Everything should be perfect to be gradient descent and now it is a gradient ascent. I wanna know the magic. I did numpy neural ...
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How to obtain a single output from a CNN while we feed it multiple number of colour images?

I am doing a Deep-Q Learning task, and I have a sequence of 4 images that I have defined as a state. Now I want to feed these 4 images in a CNN and obtain the softmax of the outputs as to what action ...
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1answer
33 views

How to simulate python key presses in Google Collab notebook?

I have developed a Collab notebook in Python that intends to simulate keyboard keys' presses in order to play a game which it will monitor as a part of reinforcement learning. I have tried using ...
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OpenAI: Blackjack reinforcement on-policy MC control outperformed by heuristic policy

I created code to implement on policy Monte Carlo control on the BlackJack problem from openAIgym in a Python Notebook. import gym import random from matplotlib import pyplot import matplotlib.pyplot ...
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How soft-actor-critic algorithm deal with policy gradient?

So I was reading the soft-actor-critic paper https://arxiv.org/pdf/1801.01290.pdf The actor uses stochastic policy which samples from a distribution. A neural network is used to approximate the ...
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2answers
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Mini-batches in RL

I just read the paper of Mnih (2013) and was really wondering about the aspect that he talks about using RMSprop with minibatches of size 32 (page 6). My understanding of these kinds of reinforcement ...
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Why unwrap an openAI gym?

I'm trying to get some insights into reinforcement learning while using openAI gym as a learning environment. I do this by reading the book Hands-on reinforcement learning with Python. In this book, ...
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tfjs tensorflowjs optimize with custom loss getInputTensorIds problem

I'm trying to use tensorflow to make a DQN agent. I take inspiration from this repository: https://github.com/seann999/dodge_tfjs/blob/master/agent.js I wrote a class Agent which is composed of 2 ...
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How to implement inverting gradient in Tensorflow?

I'm trying implement DDPG in Tensorflow. The action space is continuous with upper bound P_max and lower bound P_min. Based on this paper, the inverting gradients is a good approach for continuous ...
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Creating MonitoredTrainingSession causes InvalidArgumentError in tensorflow

The code used to initiate MonitoredTrainingSession causes a InvalidArgumentError: with tf.train.MonitoredTrainingSession( server.target, is_chief=is_learner, checkpoint_dir=FLAGS.logdir, ...
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Optimizing the value-iteration algorithm in Reinforcement Learning

I have one doubt related to value iteration. I was trying to solve the 'FrozenLake8x8-v0' problem. The algo that I was using mainly calculates reward for each state if we want to take first 1000 steps ...
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1answer
66 views

Pytorch PPO implementation is not learning

This PPO implementation has a bug somewhere and I can't figure out what's wrong. The network returns a normal distribution and a value estimate from the critic. The last layer of the actor provides ...