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 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 ...
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14 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 ...
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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 ...
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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 ...
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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 ...
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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 ...
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33 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" ...
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1answer
21 views

can reinforcement learning agent learn a discrete distribution

In a grid-world if i start taking actions following initial policy as a discrete distribution among available actions. let say i have at each state four actions (north, south, east, west), now i ...
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1answer
25 views

Reinforcement learning : Neural Net

While use a neural net to obtain generalization in high state spaces, what are the input units? For example if the state vector is 1 dimensional, say position on the real axis..there would only be ...
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20 views

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....
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126 views

Deep Reinforcement Learning vs. Reinforcement Learning [closed]

What is the difference between deep reinforcement learning and reinforcement learning? I basically know what reinforcement learning is about, but what does the concrete term deep stand for in this ...
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1answer
36 views

What do model.predict() and model.fit() do?

I'm going through this reinforcement learning tutorial and It's been really great so far but could someone please explain what newQ = model.predict(new_state.reshape(1,64), batch_size=1) and ...
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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 ...
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1answer
60 views

How can I improve the performance of a feedforward network as a q-value function approximator?

I'm trying to navigate an agent in a n*n gridworld domain by using Q-Learning + a feedforward neural network as a q-function approximator. Basically the agent should find the best/shortest way to ...
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1answer
71 views

How to implement the state value function?

I'm watching the Berkely CS 294 course about Deep Reinforcement Learning. However, I meet some troubles on the assignment. I tried to implement the equation below. I think it is quite simple but I ...
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1answer
34 views

Q value for the absorbing state

\begin{equation} ​Q_{t+1}(s_t,a_t) = Q_{t}(s_t,a_t) +\alpha (R_{t+1} + \gamma * \max(Q_t(s_{t+1}, a)) - Q_t(s_t, a_t)) \end{equation} In above equation,there is a term max(Q_t(s_{t+1},a)) Now say ...
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101 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 ...
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3answers
213 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 ...
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1answer
98 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....
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1answer
42 views

Double counting in temporal difference learning

I am working on a temporal difference learning example (https://www.youtube.com/watch?v=XrxgdpduWOU), and I'm having some trouble with the following equation in my python implementation as I seem to ...
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7answers
16k 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 ...
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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 ...
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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
108 views

Q-Learning values get too high

I've recently made an attempt to implement a basic Q-Learning algorithm in Golang. Note that I'm new to Reinforcement Learning and AI in general, so the error may very well be mine. Here's how I ...
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1answer
57 views

Action selection with softmax?

I know this might be a pretty stupid question to ask, but what the hell.. I at the moment trying to implement soft max action selector, which uses the boltzmann distribution. Formula What I am ...
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1answer
24 views

Why is the environment state markov?

I had a question related to reinforcement learning, why is the environment state markov? I read it somewhere it is by definition but I can't understand how the definition of environment state implies ...
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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 ...
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1answer
101 views

AI Player is not performing well? why?

I am trying to implement an agent which uses Q-learning to play Ludo. I've trained it with an e-greedy action selector, with an epsilon of 0.1, and a learning rate of 0.6, and discount factor of 0.8. ...
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1answer
47 views

Difference between Value iteration and Policy iteration | Reinforced learning | MDP

In reinforced machine learning, what is the difference between Policy Iteration and Value iteration. As much as i understand, in value iteration you use the Bellman equation to solve for the optimal ...
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2answers
67 views

Simulation and visualization libraries for reinforcement learning in python?

I am aware of keras, block n a few others Python libraries for nn which do RL among others. But is there a library than can make the task of visualizations easy? In terms of 3D model of agents/...
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2answers
30 views

Why do we weight recent rewards higher in non-stationary reinforcement learning?

The book 'Introduction to Reinforcement Learning' by Barto and Sutton, mentions the following about non-stationary RL problems - "we often encounter reinforcement learning problems that are ...
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1answer
33 views

Gradient Temporal Difference Lambda without Function Approximation

In every formalism of GTD(λ) seems to define it in terms of function approximation, using θ and some weight vector w. I understand that the need for gradient methods widely came from their ...
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66 views

Function Approximation: How is tile coding different from highly discretized state space?

I'm transitioning from discretization of a continuous state space to function approximation. My action and state space(3D) are both continuous. My problem suffers majorly from errors due to aliasing ...
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38 views

Continuous-time finite-horizon MDP

Is there any algorithm for solving a finite-horizon semi-Markov-Decision-Process? I want to find the optimal policy for a sequential decision problem with a finite action space, a finite state space, ...
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1answer
79 views

Grid World representation for a neural network

I'm trying to come up with a better representation for the state of a 2-d grid world for a Q-learning algorithm which utilizes a neural network for the Q-function. In the tutorial, Q-learning with ...
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1answer
78 views

Is this a correct implementation of Q-Learning for Checkers?

I am trying to understand Q-Learning, My current algorithm operates as follows: 1. A lookup table is maintained that maps a state to information about its immediate reward and utility for each ...
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1answer
68 views

Reinforcement Learning - How does an Agent know which action to pick?

I'm trying to understand Q-Learning The basic update formula: Q(st, at) += a[rt+1, + d.max(Q(st+1, a)) - Q(st,at)] I understand the formula, and what it does, but my question is: How does the ...
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2answers
166 views

TD learning vs Q learning

In a perfect information environment, where we are able to know the state after an action, like playing chess, is there any reason to use Q learning not TD (temporal difference) learning? As far as I ...
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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, ...
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1answer
45 views

Adding constraints in Q-learning and assigning rewards if constraints are violated

I took an RL course recently and I am writing a Q-learning controller for a power management application where I have continuous states and discrete actions. I am using a neural network (Q-network) ...
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2answers
68 views

Reinforcement Learning: The dilemma of choosing discretization steps and performance metrics for continuous action and continuous state space

I am trying to write an adaptive controller for a control system, namely a power management system using Q-learning. I recently implemented a toy RL problem for the cart-pole system and worked out the ...
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212 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 ...
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2answers
1k 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 ...
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2answers
225 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 ...
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2answers
259 views

Q Learning coefficients overflow

I've been using the blackbox challenge (www.blackboxchallenge.com) to try and learn some reinforcement learning. I've created a task and an environment for the challenge and I'm using PyBrain to ...
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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: ...
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1answer
60 views

Q-learning with linear function approximation

I would like to get some helpful instructions about how to use the Q-learning algorithm with function approximation. For the basic Q-learning algorithm I have found examples and I think I did ...
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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 ...
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81 views

Temporal Difference Learning and Back-propagation

I have read this page of standford - https://web.stanford.edu/group/pdplab/pdphandbook/handbookch10.html. I am not able to understand how TD learning is used in neural networks. I am trying to make a ...
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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, ...