0
votes
1answer
49 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 ...
0
votes
1answer
40 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) ...
-2
votes
1answer
68 views

Best/Easiest module for AI Learning? [closed]

I read this How can I make a AI learn to play a game from zero? A little example, let's say the AI goes to play blackjack, discount all the splits, cards in the deck and so on, the AI could either ...
0
votes
0answers
53 views

3D-Space learning and prediction Matlab

I want suggestions about learning and predicting some object's position before hitting the one out of four sides of wall, in Matlab. I have some priority according to side of wall, and of-course all ...
1
vote
1answer
54 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 ...
2
votes
2answers
147 views

Optimal epsilon (ϵ-greedy) value

ϵ-greedy policy I know the Q-learning algorithm should try to balance between exploration and exploitation. Since I'm a beginner in this field, I wanted to implement a simple version of ...
11
votes
1answer
264 views

When to use a certain Reinforcement Learning algorithm?

I'm studying Reinforcement Learning and reading Sutton's book for a university course. Beside the classic PD, MC, TD and Q-Learning algorithms, I'm reading about policy gradient methods and genetic ...
1
vote
1answer
94 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 ...
0
votes
1answer
45 views

What are the things that I should save to a file/db with Reinforcement Learning?

I'm trying to get into machine learning, and decided to try things out for myself. I wrote a small tic-tac-toe game. So far, the computer plays against itself using random moves. Now, I want to apply ...
3
votes
1answer
840 views

Reinforcement Learning

I want to use this q-learning (reinforcement learning) code. It seems like the code is correct, but I am getting errors and I don't know why: function q=ReinforcementLearning clc; format short; ...
0
votes
1answer
154 views

Q-learning (multiple goals)

i have just started to study Q-learning and see the possibilities of using Q-learning to solve my problem. Problem: I am supposed to detect a certain combination of data, i have four matrices that ...
1
vote
1answer
159 views

Setting gamma and lambda in Reinforcement Learning

In any of the standard Reinforcement learning algorithms that use generalized temporal differencing (e.g. SARSA, Q-learning), the question arises as to what values to use for the lambda and gamma ...
2
votes
2answers
128 views

Qlearning - Defining states and rewards

I need some help with solving a problem that uses the Q-learning algorithm. Problem description: I have a rocket simulator where the rocket is taking random paths and also crashes sometimes. The ...
5
votes
0answers
61 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, ...
1
vote
1answer
134 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 ...
3
votes
1answer
204 views

Multi-Criteria Optimization with Reinforcement Learning

I am working on the power management of a system. The objectives that I am looking to minimize are power consumption and average latency. I have a single objective function having the linearly ...
3
votes
2answers
357 views

Unbounded increase in Q-Value, consequence of recurrent reward after repeating the same action in Q-Learning

I'm in the process of development of a simple Q-Learning implementation over a trivial application, but there's something that keeps puzzling me. Let's consider the standard formulation of Q-Learning ...
4
votes
4answers
566 views

Can evolutionary computation be a method of reinforcement learning?

I am working on a project, a simulated robot learns to do something by neuroevolution So, where is evolutionary computation? Is it a method of reinforcement learning? Or a separate method of machine ...
1
vote
1answer
654 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
2answers
125 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: ...
2
votes
1answer
575 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 ...
4
votes
1answer
222 views

Reinforcement Learning - How to get out of 'sticky' states?

The problem: I've trained an agent to perform a simple task in a grid world (go to the top of the grid while not hitting obstacles), but the following situation always seems to occur. It finds itself ...
1
vote
0answers
116 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 ...
2
votes
1answer
146 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) ...
9
votes
2answers
767 views

Free Energy Reinforcement Learning Implementation

I've been trying to implement the algorithm described here, and then test it on the "large action task" described in the same paper. Overview of the algorithm: In brief, the algorithm uses an RBM ...
11
votes
2answers
5k views

Training a Neural Network with Reinforcement learning

I know the basics of feedforward neural networks, and how to train them using the backpropagation algorithm, but I'm looking for an algorithm than I can use for training an ANN online with ...
4
votes
1answer
415 views

Updates in Temporal Difference Learning

I read about Tesauro's TD-Gammon program and would love to implement it for tic tac toe, but almost all of the information is inaccessible to me as a high school student because I don't know the ...
2
votes
2answers
457 views

Neural Network Learning Without Training Values

I am wondering how to go about training a neural network without providing it with training values. My premise for this is that the neural network(s) will be used on a robot that can receive ...
2
votes
1answer
127 views

Reinforcement learning of a policy for multiple actors in large state spaces

I have a real-time domain where I need to assign an action to N actors involving moving one of O objects to one of L locations. At each time step, I'm given a reward R, indicating the overall success ...
3
votes
2answers
402 views

Reinforcement learning with neo4j: make 2 copies of the graph vs store 2 copies of all values on 1 graph

I'm planning on running a machine learning algorithm that learns node values and edge weights. The algorithm is very similar to the value iteration algorithm here. Each node represents a location and ...
6
votes
2answers
2k views

C++ Reinforcement Learning Library

I have been looking for a C++ Library that implements Reinforcement Learning Algorithms but was not very satisfied with the results. I found the Reinforcement Learning Toolbox 2.0 from the TU Graz ...
2
votes
1answer
183 views

What is the preferred machine learning technique for building a real-time game player simulator? [closed]

I've set out to build an AI-engine that learns to play Tetris, i.e. an engine that can improve it's performance, perhaps by adjusting its heuristics, and so forth. Let's say that I've got the GUI out ...
3
votes
2answers
591 views

What machine learning algorithm should I use for Connect 4?

I have an AI that is good at playing Connect 4 (using minimax). Now I want to use some machine learning algorithm to learn from this AI that I have, and I would like to do that by just letting them ...
2
votes
1answer
509 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 ...
5
votes
3answers
685 views

Generalizing Q-learning to work with a continuous *action* space

I'm trying to get an agent to learn the mouse movements necessary to best perform some task in a reinforcement learning setting (i.e. the reward signal is the only feedback for learning). I'm hoping ...
1
vote
1answer
661 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, ...
18
votes
4answers
7k views

Support Vector Machines — Better than Artificial Neural Networks in which learning situations?

I know SVMs are supposedly 'ANN killers' in that they automatically select representation complexity and find a global optimum (see here for some SVM praising quotes). But here is where I'm unclear ...
31
votes
7answers
3k views

How to train an artificial neural network to play Diablo 2 using visual input?

I'm currently trying to get an ANN to play a video game and and I was hoping to get some help from the wonderful community here. I've settled on Diablo 2. Game play is thus in real-time and from an ...
5
votes
2answers
179 views

Reinforcement Learning With Variable Actions

All the reinforcement learning algorithms I've read about are usually applied to a single agent that has a fixed number of actions. Are there any reinforcement learning algorithms for making a ...
0
votes
2answers
141 views

Looking for ideas/references/keywords: adaptive-parameter-control of a search algorithm (online-learning)

I'm looking for ideas/experiences/references/keywords regarding an adaptive-parameter-control of search algorithm parameters (online-learning) in combinatorial-optimization. A bit more detail: I ...
1
vote
0answers
129 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 ...
1
vote
3answers
435 views

Learning the Structure of a Hierarchical Reinforcement Task

I've been studying hierachial reinforcement learning problems, and while a lot of papers propose interesting ways for learning a policy, they all seem to assume they know in advance a graph structure ...
4
votes
2answers
539 views

Reinforcement learning toy project

My toy project to learn & apply Reinforcement Learning is: - An agent tries to reach a goal state "safely" & "quickly".... - But there are projectiles and rockets that are launched upon the ...
2
votes
2answers
258 views

Reinforcement learning And POMDP

I am trying to use Multi-Layer NN to implement probability function in Partially Observable Markov Process.. I thought inputs to the NN would be: current state, selected action, result state; The ...
0
votes
1answer
672 views

Reinforcement learning with neural networks

I am working on a project with RL & NN I need to determine the action vector structure which will be fed to a neural network.. I have 3 different actions (A & B & Nothing) each with ...
5
votes
3answers
1k views

Reinforcement learning in C# [closed]

I intend to use Reinforcement learning in my project but I do not know much how to implement it.. So I am looking for a library with different RL algorithms that I can use in my C# project.. Thanks ...
14
votes
5answers
2k views

Good implementations of reinforced learning?

For an ai-class project I need to implement a reinforcement learning algorithm which beats a simple game of tetris. The game is written in Java and we have the source code. I know the basics of ...