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.

learn more… | top users | synonyms

7
votes
1answer
137 views

Learning of Outcome Space Given Noisy Actions and Non-Monotonic Reinforcment

I'm looking to construct or adapt a model preferably based in RL theory that can solve the following problem. Would greatly appreciate any guidance or pointers. I have a continuous action space, ...
4
votes
1answer
41 views

Generalizing the Policy for Model-based reinforcement learning algorithm with large state and action spaces

I am using a model-based single agent reinforcement learning approach for autonomous flight. In this project I used a simulator to collect training data (state , action , ending state) so that a ...
3
votes
1answer
817 views

Understanding Policy iteration on 4x3 grid world

I am supposed to come up with an MDP agent that uses policy iteration and value iteration for an assignment and compare its performance with the utility value of a state. So how does an mdp agent, ...
3
votes
1answer
916 views

XOR Hebbian test/example neural network

I just finished writing some code that runs a hebbian learning feedforward neural network. I've done a backpropagation neural network before and the first thing I did to make sure it worked was too ...
2
votes
1answer
245 views

Deep Neural Network combined with qlearning

I'm using joint positions from a Kinect camera as my state space but I think it's going to be too large (25 joints x 30 per second) to just feed into SARSA or Qlearning. Right now I'm using the ...
2
votes
1answer
301 views

PyBrains Q-Learning maze example. State values and the global policy

I am trying out the PyBrains maze example my setup is: envmatrix = [[...]] env = Maze(envmatrix, (1, 8)) task = MDPMazeTask(env) table = ActionValueTable(states_nr, actions_nr) table.initialize(0.) ...
2
votes
1answer
254 views

How can I deal with a randomization issue in Echo State Networks?

I am using Echo State Networks(ESN) as a Q-function in a Reinforcement Learning task. I have managed to achieve high accuracy, 90% in average, on the test phase with particular reservoir topology (...
2
votes
1answer
532 views

Q-learning implementation

I am trying to implement Q-learning, in an environment where R (rewards) are stochastich time-dependent variables, and they are arrive in real time, after const time interval deltaT. States S (scalars)...
2
votes
1answer
133 views

Reinforcement Learning for Continuous State Spaces with Discrete Actions (in NetLogo)

For anybody unfamiliar, NetLogo is an agent-based modeling language. In this case the agents are simulating organisms in a dynamic environment where they search for energy. The energy moves ...
1
vote
1answer
38 views
+100

sknn - input dimension mismatch on second fit

I was attempting to create a neural network that utilizes reinforcement learning. I picked scikit-neuralnetwork as the library (because it's simple). It seems though, that fitting twice crashes Theano....
1
vote
1answer
100 views

DeepMind-Atari-Deep-Q-Learner (DQN) can not run game roms other than breakout

I am studying https://github.com/kuz/DeepMind-Atari-Deep-Q-Learner these days. I successfully trained breakout on my machine. However, when I tried to run the games downloaded from http://www.atariage....
1
vote
1answer
84 views

Reinforcement Learning-TD learning from afterstates

I'm making a program that teaches 2 players to play a simple board game using Reinforcement Learning and the Temporal Difference learning method (TD(λ) ) based on afterstates. Learning occurs by ...
1
vote
1answer
44 views

Clustering on this reinforcement learning approach?

I am trying to create an agent that selects an action depending on a state that gives back maximum reward. To keep things simple I will keep it to two actions and 24 different states. The states is ...
1
vote
1answer
64 views

matlab simulation for value functions

I want to simulate the following value functions. d is a decision matrix x=t+beta * w' y=alpha*(c+beta * v') v=max{x , y} if x>y then v=x and d= 2 if x a=phi * t+beta * w' b=phi * c+beta * v' ...
1
vote
1answer
157 views

Pybrain Reinforcement Learning dynamic output

Can you use Reinforcement Learning from Pybrain on dynamic changing output. For example weather: lets say you have 2 attributes Humidity and Wind and the output will be either Rain or NO_Rain ( and ...
1
vote
1answer
207 views

How to apply reinforcement learning?

I understand it in concept. You have an agent and an environment. And then you have a set of states, which each have a value. The agent then either choses to "explore" or "exploit" and modifies it's ...
0
votes
1answer
18 views

Does Preprocessing In Deep Q/Reinforcement Learning Lessen Accuracy?

I've been reading up on deep reinforcement learning such as here: https://www.nervanasys.com/demystifying-deep-reinforcement-learning/ It will be a while before I understand all the math but that ...
0
votes
1answer
23 views

Problems in reinforcement learning: bug, parameters tuning, and training period

I am currently training a reinforcement learning agent using a simple Neural Network with 100 hidden elements to solve 2048 game. I am using DQN's reinforcement learning algorithm (i.e. Q-learning ...
0
votes
1answer
34 views

What is action and reward in a neural network which learns weights by reinforcement learning

My goal is to predict customer churn. I want to use reinforcement learning to train a recurrent neural network which predicts a target response for its input. I understand that the state is ...
0
votes
1answer
56 views

How to calculate gradients for a neural network with theano when using Q-Learning

I am trying to use a standard fully-connected neural net as the basis for action values in Q-Learning. I am using http://deeplearning.net/tutorial/mlp.html#mlp as a reference specifically this line: ...
0
votes
1answer
14 views

confusion about apprenticeship learning algorithm step

I've been following the paper here http://ai.stanford.edu/~ang/papers/icml04-apprentice.pdf but cannot figure out what operation the division symbol in section 3.1 indicates. All of the mu vectors are ...
0
votes
1answer
182 views

Named entity recognition with a small data set (corpus)

I want to develop a Named entity recognition system in Persian language but we have a small NER tagged corpus for training ans test. Maybe In the future we'll have a better and bigger corpus. By the ...
0
votes
1answer
110 views

Q Learning Grid World Scenario

I'm researching on "GridWorld" from Q-learning Perspective.I have issues regarding the following question 1) If there is a case where rewards are positive for goals, negative for running ...
0
votes
1answer
79 views

Best way to assign penalty in neural networks?

I have a directed weighted graph data structure where the weight between say Node A and Node B tells about the number of times a transition from Node A to Node B was taken. The aim of the data ...
5
votes
0answers
106 views

How to accumulate and appy gradients for Async n-step DQNetwork update in Tensorflow?

I am trying to implement Asynchronous Methods for Deep Reinforcement Learning and one of the steps requires to accumulate the gradient over different steps and then apply it. What is the best way to ...
4
votes
0answers
192 views

Neural Network Reinforcement Learning Requiring Next-State Propagation For Backpropagation

I am attempting to construct a neural network incorporating convolution and LSTM (using the Torch library) to be trained by Q-learning or Advantage-learning, both of which require propagating state T+...
2
votes
0answers
63 views

Parametrization of sparse sampling algorithms

I have a question about the parametrization of C, H and lambda in the paper: "A Sparse Sampling Algorithm for Near-Optimal Planning in Large Markov Decision Processes" (or for anyone with some general ...
2
votes
0answers
314 views

Encog : Reinforcement Learning / Actor-Critic Model

I have a basic neural net problem where I want a "rocket" to maintain it's altitude at a given height. (This is a simple version of the problem, it will get more complex). I am using the encog ...
1
vote
0answers
209 views

How to teach neural network a policy for a board game using reinforcement learning?

I need to use reinforcement learning to teach a neural net a policy for a board game. I chose Q-learining as the specific alghoritm. I'd like a neural net to have the following structure: layer - ...
1
vote
0answers
51 views

Utilities of states in Reinforcement Learning

In Artificial Intelligence A Modern Approach (3rd Edition-Russell) book, we have a 4*3 world like this : and with some computation that i didn't understand we reach to this utilities for each ...
1
vote
0answers
30 views

Choosing the active features for function approx with radial basis functions in reinforcement learning?

I don't understand how eligibility traces fit in with reinforcement learning when using radial basis functions (RBFs) to approximate the value function with continuous state variables. In particular, ...
1
vote
0answers
50 views

Neural network weights update without target

I am trying to create a feed forward neural network for learning to play poker. I have a lot of data for games of poker (several hundred thousand hands). The snag is that in a game of poker there is ...
1
vote
0answers
51 views

Learning approach to deciding which UI to present

This application has it's roots in public transport. Users opening the application and looking at the departure times of buses for specific stops (page 1) or planning a journey from location A to B ...
1
vote
0answers
48 views

How to avoid using max() in implementation of Value Iteration?

On this page you'll find the Value Iteration algorithm. http://artint.info/html/ArtInt_227.html I have implemented the table Q(s,a) using dictionary of dictionary. In Python: q = {s: {a: value}} ...
1
vote
0answers
46 views

Reinforcement learning in netlogo

I'm trying to do a model of reinforcement learning but I can't get my turtles to hatch correctly. Here's how the program is meant to work. To start, a state is chosen at random. This is the state-...
1
vote
0answers
276 views

Memory error after running pyBrain NFQ learner for a few minutes

O. Using reinforcement learning from pyBrain we are trying to solve a game. We use NFQ and an ActionValueNetwork as controller. We have our self-made task and are using the experiment setup from ...
1
vote
0answers
819 views

A policy iteration problem in reinforcement learning

I have to solve a problem with policy iteration, the model is showed in and I make a Java program to simulate, the policy algorithm is based on Sutton and Barto's book on Reinforcement learning. ...
1
vote
0answers
139 views

Dual optimization with reinforcement learning

I have an objective function having parameters of power consumption (p) and latency (d). I want to minimize the power consumption given a latency constraint (seconds). The optimization problem can be ...
1
vote
0answers
156 views

Implementing HexQ Algorithm

Does anyone know if there's an open source implementation (in any language) of the HexQ algorithm for hierarchy discovery in reinforcement learning, or something like it? I'd like to evaluate it in ...
0
votes
0answers
6 views

How can I choose the features my q-learning with linear function approximation

I am developing AI using reinforcement-learning. It is a game that player should avoid bricks falling from sky. There are 20 bricks falling to the ground. game screen shot , game play video link ...
0
votes
0answers
15 views

Continuous action space reinforcement learning in Lua/Torch

I've found Kai Arulkumaran's implementation of A3C (asynchronous advantage actor-critic) for discrete actions, but I'm not sure how to go about extending it to continuous action spaces. It defines ...
0
votes
0answers
18 views

Choosing reward function for optimization in Reinforcement Learning

I am working on a sequential decision making process, where a battery controller, given the renewable energy for a state, should follow an optimal policy that minimizes a global objective (minimze ...
0
votes
0answers
14 views

approximate Q-learning for function approximation is not working

I am trying to apply approximate Q-learning algorithm for a linear function approximation but within few iterations parameter values are reaching infinity. There is high oscillation which I believe is ...
0
votes
0answers
34 views

Is there an easy way to implement a Optimizer.Maximize() function in TensorFlow

There are several experiments that rely on gradient ascent rather than gradient descent. I have looked into some approaches to using "cost" and the minimize function to simulate the "maximize" ...
0
votes
0answers
22 views

Reinforcement Learning transition matrix from data

In this paper http://www.cs.rochester.edu/~tetreaul/eacl06-2.pdf they use data from an Intelligent Tutoring System to build a probability matrix that is used as input to the Mablab MDPToolbox that ...
0
votes
0answers
213 views

Tensorflow and Multiprocessing: Passing Sessions

I have recently been working on a project that uses a neural network for virtual robot control. I used tensorflow to code it up and it runs smoothly. So far, I used sequential simulations to evaluate ...
0
votes
0answers
47 views

How do I apply Q-learning to a physical system?

We are two french mechanical engineering students interested in reinforcement learning trying to apply Q-learning to a rotary inverted pendulum for a project. We have watched David Silver's "youtube ...
0
votes
0answers
20 views

Reinforcement learning in Netlogo: Error: No urn specified

I'm totally new to NetLogo, and am trying to create an agent-based reinforcement learning (RL) model. I have recreated a toy model to get help on. Here, one agent is doing RL by interacting with two ...
0
votes
0answers
36 views

Feature generations and output for Q learning with linear function approximation

I am trying to implement an Q learning algorithm from this paper http://www.research.ibm.com/people/z/zadrozny/kdd2002-Reinf.pdf. It is about marketing campaign maximization and has temporal features ...
0
votes
0answers
233 views

How to online train a neural network in pybrain?

I created a pacman game and trained a pacman agent using Q-learning algorithm. Now I'm trying to use it with neural networks. I'm using pybrain. For training, at any particular state, the state ...