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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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 ...
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4answers
8k 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 ...
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5answers
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Good implementations of reinforcement 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 ...
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2answers
7k 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 ...
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1answer
404 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 ...
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913 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 ...
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3answers
5k views

Reinforcement learning: Differences between QLearning and SarsaTD?

I apologize if the question doesn't fit any programming language specifications. If it is of real importance, I'm using C++. I'm comparing learning algorithms, and although I know that Sarsa is ...
7
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4answers
889 views

How Do I Run Sutton and Barton's “Reinforcement Learning” Lisp Code?

I have been reading a lot about Reinforcement Learning lately, and I have found "Reinforcement Learning: An Introduction" to be an excellent guide. The author's helpfully provice source code for a lot ...
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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 ...
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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, ...
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3answers
372 views

C++ Reinforcement learning and smart pointers

I am doing my Masters project on robotic's sensorimotor online learning using reinforcement learning methods (Q,sarsa,TD(λ),Actor-Critic,R,etc). I am currently designing the framework on which both ...
6
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1answer
315 views

Are there any active reinforcement learning competitions?

I like doing part-time research in reinforcement learning. In recent years (up to 2009) there was a reinforcement learning competition held at rl-competition.org with some very interesting problems, ...
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3answers
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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 ...
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4answers
851 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 ...
5
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3answers
997 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 ...
5
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1answer
92 views

Eligibility trace reinitialization between episodes in SARSA-Lambda implementation

I'm looking at this SARSA-Lambda implementation (Ie: SARSA with eligibility traces) and there's a detail which I still don't get. (Image from ...
5
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4answers
597 views

Are neural networks really abandonware?

I am planning to use neural networks for approximating a value function in a reinforcement learning algorithm. I want to do that to introduce some generalization and flexibility on how I represent ...
5
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2answers
194 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 ...
4
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1answer
348 views

Q Learning Algorithm for Tic Tac Toe

I could not understand how to update Q values for tic tac toe game. I read all about that but I could not imagine how to do this. I read that Q value is updated end of the game, but I haven't ...
4
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2answers
455 views

n-armed bandit simulation in R

I'm using Sutton & Barto's ebook Reinforcement Learning: An Introduction to study reinforcement learning. I'm having some issues trying to emulate the results (plots) on the action-value page. ...
4
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1answer
660 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 ...
4
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1answer
1k views

SARSA algorithm

I am having trouble understanding the SARSA algorithm: http://en.wikipedia.org/wiki/SARSA In particular, when updating the Q value what is gamma? and what values are used for s(t+1) and a(t+1)? Can ...
4
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1answer
388 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 ...
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3answers
992 views

TD(λ) in Delphi/Pascal (Temporal Difference Learning)

I have an artificial neural network which plays Tic-Tac-Toe - but it is not complete yet. What I have yet: the reward array "R[t]" with integer values for every timestep or move "t" (1=player A ...
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2answers
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What are the uses of recurrent neural networks when using them with Reinforcement Learning?

I do know that feedforward multi-layer neural networks with backprop are used with Reinforcement Learning as to help it generalize the actions our agent does. This is, if we have a big state space, we ...
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2answers
468 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 ...
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608 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 ...
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2answers
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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 ...
3
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1answer
781 views

Use of classical back propagation neural network with TD-learning in board game

I want to ask if it is senseful using a standard backpropagation neural network with TD-learning method in a board game? My method looks like: Play 1 game. Net is playing as both players with ...
3
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2answers
707 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 ...
3
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2answers
487 views

Negative rewards in QLearning

Let's assume we're in a room where our agent can move along the xx and yy axis. At each point he can move up, down, right and left. So our state space can be defined by (x, y) and our actions at each ...
3
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1answer
267 views

Implementing reinforcement learning in NetLogo (Learning in multi-agent models)

I am thinking to implement a learning strategy for different types of agents in my model. To be honest, I still do not know what kind of questions should I ask first or where to start. I have two ...
3
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1answer
433 views

SARSA algorithm for average reward problems

My question is about using the SARSA algorithm in reinforcement learning for an undiscounted, continuing (non-episodic) problem (can it be used for such a problem?) I have been studying the textbook ...
3
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2answers
325 views

How to use MinMax trees with Q-Learning?

How to use MinMax trees with Q-Learning? I want to implement a Q-Learning connect four agent and heard that adding MinMax trees into it helps.
3
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1answer
237 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 ...
2
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2answers
553 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
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2answers
194 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 ...
2
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2answers
320 views

Reducing the number of markov-states in reinforcement learning

I've started toying with reinforcement learning (using the Sutton book). I fail to fully understand is the paradox between having to reduce the markov state space while on the other hand not making ...
2
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1answer
174 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 ...
2
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1answer
210 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 ...
2
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2answers
941 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 ...
2
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2answers
296 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 ...
2
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1answer
107 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
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1answer
751 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
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1answer
647 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
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1answer
952 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
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1answer
23 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
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1answer
30 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, ...
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0answers
93 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 ...
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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 ...