**2**

votes

**1**answer

110 views

### Q-learning: What is the correct state for reward calculation

Q learning - rewards
I'm struggling to interpret the pseudocode for the Q learning algorithm:
1 For each s, a initialize table entry Q(a, s) = 0
2 Observe current state s
3 Do forever:
4 ...

**2**

votes

**1**answer

798 views

### Reinforcement learning methodes that map continuous to continuous

I am building a model where firms have to set prices and make production decisions. Prices are continuous and so are the decision variables. (inventory, last sales, prices...).
What reinforcement ...

**2**

votes

**1**answer

675 views

### Want to implement a reinforcement learning connect four agent

I want to implement a reinforcement learning connect four agent.
I am unsure how to do so and how it should look. I am familiar with the theoretical aspects of reinforcement learning but don't know ...

**2**

votes

**1**answer

1k views

### Reinforcement Learning Beginner Projects [closed]

I once read the book "Reinforcement Learning An Introduction" and found it quite interesting. A lot of time has gone by and I became interested in the topic again.
I would like to try out RL and ...

**2**

votes

**1**answer

36 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

**1**answer

35 views

### How do I combine stochastic policy with Q-value Iteration?

I am trying to use a stochastic policy in my q-value iteration algorithm. As I understand it, stochastic policy is a probability of choosing an action from a particular state. On the other hand, ...

**2**

votes

**0**answers

155 views

### Questions about Q-Learning using Neural Networks

I have implemented Q-Learning as described in,
http://web.cs.swarthmore.edu/~meeden/cs81/s12/papers/MarkStevePaper.pdf
In order to approx. Q(S,A) I use a neural network structure like the following,
...

**2**

votes

**0**answers

100 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 ...

**2**

votes

**0**answers

57 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

**0**answers

217 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 ...

**2**

votes

**1**answer

160 views

### Reinforcement learning for power management

I am working on a power management problem where I control the power management of a computing board based on the occurance of events. I am using Reinforcement learning (the traditional Q-learning) ...

**2**

votes

**1**answer

715 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 back propagation neural network before and the first thing i did to make sure it worked was too ...

**1**

vote

**1**answer

565 views

### Improving Q-Learning

I am currently using Q-Learning to try to teach a bot how to move in a room filled with walls/obstacles. It must start in any place in the room and get to the goal state(this might be, to the tile ...

**1**

vote

**1**answer

160 views

### Reinforcement learning algorithms for continuous states, discrete actions

I'm trying to find optimal policy in environment with continuous states (dim. = 20) and discrete actions (3 possible actions). And there is a specific moment: for optimal policy one action (call it ...

**1**

vote

**1**answer

78 views

### Implementations of Hierarchical Reinforcement Learning

Can anyone recommend a reinforcement learning library or framework that can handle large state spaces by abstracting them?
I'm attempting to implement the intelligence for a small agent in a game ...

**1**

vote

**1**answer

134 views

### Q-Learning: Can you move backwards?

I'm looking over a sample exam and there is a question on Q-learning, I have included it below. In the 3rd step, how come the action taken is 'right' rather than 'up' (back to A2). It appears the Q ...

**1**

vote

**2**answers

74 views

### Reinforcement Learning without Successor State

I'm attempting to pose a problem as a reinforcement learning problem. My difficulty is that the state which an agent is in changes randomly. They must simply choose an action within the state they are ...

**1**

vote

**2**answers

135 views

### Boltzman exploration with more than two actions in Q-learning

I am using Boltzman exploration in Q-learning where I have at least 10 actions in each state. I know that with only two actions, Boltzman exploration can be applied quite simply as follows:
...

**1**

vote

**2**answers

404 views

### Discretization dilemma

I am currently working on famous Mountain Car problem from reinforcement learning. This problem is of continuous nature, meaning I have two variables: one position - ranging from -1.2 to 0.5 and ...

**1**

vote

**1**answer

867 views

### Generalization functions for Q-Learning

I have to do some work with Q Learning, about a guy that has to move furniture around a house (it's basically that). If the house is small enough, I can just have a matrix that represents ...

**1**

vote

**1**answer

69 views

### Implementing SARSA using Gradient Discent

I have successfully implemented a SARSA algorithm (both one-step and using eligibility traces) using table lookup. In essence, I have a q-value matrix where each row corresponds to a state and each ...

**1**

vote

**1**answer

148 views

### Any example code of REINFORCE algorithm proposed by Williams?

Does any one know any example code of an algorithm Ronald J. Williams proposed in
A class of gradient-estimating algorithms for reinforcement learning in neural networks

**1**

vote

**1**answer

151 views

### multiply numbers on all paths and get a number with minimum number of zeros

I have m*n table which each entry have a value .
start position is at top left corner and I can go right or down until I reach lower right corner.
I want a path that if I multiply numbers on that ...

**1**

vote

**1**answer

75 views

### How do you update the weights in function approximation with reinforcement learning?

My SARSA with gradient-descent keep escalating the weights exponentially. At Episode 4 step 17 the value is already nan
Exception: Qa is nan
e.g:
6) Qa:
Qa = -2.00890180632e+303
7) NEXT Qa:
Next ...

**1**

vote

**1**answer

74 views

### How are eligibility traces with sarsa calculated?

Regarding SARSA with reinforcement learning, I'm trying to implement eligibility traces (forward looking).
I found this image:
I'm uncertain what the 'For all s,a:" means (5th line from below)
...

**1**

vote

**1**answer

103 views

### is Q-learning without a final state even possible?

I have to solve this problem with Q-learning.
Well, actually I have to evaluated a Q-learning based policy on it.
I am a tourist manager.
I have n hotels, each can contain a different number of ...

**1**

vote

**1**answer

206 views

### Q-Learning convergence to optimal policy

I am using rlglue based python-rl framework for q-learning.
My understanding is that over number of episodes, the algorithm converges to an optimal policy (which is a mapping which says what action to ...

**1**

vote

**1**answer

923 views

### Q Learning Algorithm Issue

I'm trying to do a simple Q learning algorithm, but for whatever reason it doesn't converge. The agent should basically get from one point on the 5x5 grid to the goal one. When I run it it seems to ...

**1**

vote

**1**answer

449 views

### Training Neural Networks with big linear output

I am programming a Feed Forward Neural Network which I want to use in combination with Reinforcement Learning. I have one hidden layer with tanh as activation function and a linear output layer.
I ...

**1**

vote

**1**answer

168 views

### Action constraints in actor-critic reinforcement learning

I've implemented the natural actor-critic RL algorithm on a simple grid world with four possible actions (up,down,left,right), and I've noticed that in some cases it tends to get stuck oscillating ...

**1**

vote

**1**answer

316 views

### Weight update - Reinforcement Learning + Neural Networks

I am currently trying to understand how TD-Gammon works and have two questions:
1) I found an article which explains the weight update. It consists of three part. The last part is an differentiation ...

**1**

vote

**1**answer

711 views

### PyBrain Reinforcement Learning - Maze and Graph

I was trying to implement in PyBrain something similar to a Maze problem. However, it's more similar to a room with an emergency exit, where you leave an agent in one of the rooms to find the exit.
To ...

**1**

vote

**1**answer

873 views

### Q-learning value update

I am working on the power management of a device using Q-learning algorithm. The device has two power modes, i.e., idle and sleep. When the device is asleep, the requests for processing are buffered ...

**1**

vote

**1**answer

897 views

### How to Learn the Reward Function in a Markov Decision Process

What's the appropriate way to update your R(s) function during Q-learning? For example, say an agent visits state s1 five times, and receives rewards [0,0,1,1,0]. Should I calculate the mean reward, ...

**1**

vote

**1**answer

282 views

### Reinforcement Learning - Optimizing Weights Given Scores

I am working on a project that has a simulated robot exploring an unknown, but patterned environment (such as an office building) by moving around to predefined "sensing locations". In other words, at ...

**1**

vote

**1**answer

294 views

### Q learning algorithm-convergence on a loop(absorbing) state

This question is to do with Q-learning.
Please consider the following:
A loop(absorbing) state J- with reward 100 to go from J to J(J is the final state-the reward from going from I to J is also ...

**1**

vote

**0**answers

13 views

### Difference between batch q learning and growing batch q learning

I am confused about the difference between batch and growing batch q learning. Also, if I only have historical data, can I implement growing batch q learning?
Thank you!

**1**

vote

**0**answers

27 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

**0**answers

102 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 ...

**1**

vote

**1**answer

139 views

### Solving GridWorld using Q-Learning and function approximation

I'm studying the simple GridWorld (3x4, as described in Russell & Norvig Ch. 21.2) problem; I've solved it using Q-Learning and a QTable, and now I'd like to use a function approximator instead of ...

**1**

vote

**1**answer

41 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

**1**answer

159 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 ...

**1**

vote

**1**answer

35 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

**0**answers

31 views

### Which machine learning method/algorthim would suite this scenario

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

**1**answer

47 views

### QLearning usage on a repetitive simulation

I am using Q-Learning algorithm on a simulation. this simulation has limited iterations (600 to 700). the learning process is activated for several runs of this simulation (100 run).
I am new to ...

**1**

vote

**0**answers

39 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

**1**answer

82 views

### Q learning: Relearning after changing the environment

I have implemented Q learning on a grid of size (n x n) with a single reward of 100 in the middle. The agent learns for 1000 epochs to reach the goal by the following agency: He chooses with ...

**1**

vote

**0**answers

39 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 ...

**1**

vote

**1**answer

163 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 ...

**1**

vote

**0**answers

187 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 ...