Network structure inspired by simplified models of biological neurons (brain cells). Neural networks are trained to "learn" by supervised and unsupervised techniques, and can be used to solve optimization problems, approximation problems, classify patterns, and combinations thereof.

learn more… | top users | synonyms (2)

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Export a neural network trained with MATLAB in other programming languages

I trained a neural network using the MATLAB Neural Network Toolbox, and in particular using the command nprtool, which provides a simple GUI to use the toolbox features, and to export a net object ...
4
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5answers
3k views

Programming Neural Networks with Python?

I'm a College student (Economics) and I want to program some monetary models using Neural Networks. I want those models to be able to predict future values of some variables using economic data, but I ...
11
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2answers
4k views

Convolutional neural network - How to get the feature maps?

I read a few books and articles about Convolutional neural network, it seems I understand the concept but I don't know how to put it up like in image below: from 28x28 normalized pixel INPUT we get ...
8
votes
3answers
650 views

Neural Network size for Animation system

I decided to go with a Neural Network in order to create behaviors for an animation engine that I have. The neural network takes in 3 vector3s and 1 Euler angle for every body part that I have. The ...
6
votes
6answers
4k views

Fast sigmoid algorithm

The sigmoid function is defined as: f(x) = 1 / (1 + e ^ (-x)) I found that using the C built-in function exp() to calculate the value of f(x) is still kinda slow. Is there any faster algorithm ...
5
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1answer
3k views

Implementing a perceptron with backpropagation algorithm

I am trying to implement a two-layer perceptron with backpropagation to solve the parity problem. The network has 4 binary inputs, 4 hidden units in the first layer and 1 output in the second layer. ...
5
votes
4answers
8k views

Matlab - Neural network training

I'm working on creating a 2 layer neural network with back-propagation. The NN is supposed to get its data from a 20001x17 vector that holds following information in each row: -The first 16 cells ...
4
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1answer
335 views

Backprop implementation issue

What I am supposed to do. I have an black and white image (100x100px): I am supposed to train a backpropagation neural network with this image. The inputs are x, y coordinates of the image (from 0 ...
3
votes
3answers
469 views

Which algorithms have been proposed to learn the architecture of a deep neural network?

Yoshua Benhgio's Learning Deep Architectures for AI book mentions that we should [...] strive to develop learning algorithms that use the data to determine the depth of the final architecture. ...
19
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7answers
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Backpropagation through time

Does anyone know of a library with a working implementation of backpropagation through time? Any of Java/Python/C#/VB.NET/F# (preferably the last one) will do!
11
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5answers
16k views

Data sets for neural network training

I am looking for some relatively simple data sets for testing and comparing different training methods for artificial neural networks. I would like data that won't take too much pre-processing to turn ...
7
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2answers
2k views

How do I make a U-matrix?

I am about to pull my hair out trying to figure out, how exactly, a U-matrix is constructed for visualization of Self-Organizing-Maps. (SOMS, aka Kohonen Nets). Every last google result I have found ...
6
votes
3answers
6k views

Existing OCR scripts in JavaScript

I have an idea for a CMS enhancement, to extract text information from images (for example, scanned documents), and want to know if there is already anything out there to help me along? Basically, I ...
5
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2answers
876 views

Gradient in continuous regression using a neural network

I'm trying to implement a regression NN that has 3 layers (1 input, 1 hidden and 1 output layer with a continuous result). As a basis I took a classification NN from coursera.org class, but changed ...
5
votes
1answer
913 views

Part 2 Resilient backpropagation neural network

This is a follow-on question to this post. For a given neuron, I'm unclear as to how to take a partial derivative of its error and the partial derivative of it's weight. Working from this web page, ...
5
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1answer
2k views

neural network-back propagation, error in training

after reading some articles about neural network(back-propagation) i try to write a simple neural network by myself. ive decided XOR neural-network, my problem is when i am trying to train the ...
5
votes
4answers
852 views

How to go about searching for a player models in COD with OpenCV

I am attempting to create a program that can find human figures in video of game play of call of duty. I have compiled a list of ~2200 separate images from this video that either contain a human ...
3
votes
1answer
1k views

Using SURF descriptors to detect multiple instances of an object. (in OpenCV)

I'm coding a program in OpenCV, which is supposed to detect objects in a scene,namely products in a supermarket. I plan to use SURF descriptors for this purpose, however everything I've found so far ...
3
votes
6answers
3k views

How to optimize neural network by using genetic algorithm?

I'm quite new with this topic so any help would be great. What I need is to optimize a neural network in MATLAB by using GA. My network has [2x98] input and [1x98] target, I've tried consulting MATLAB ...
2
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4answers
1k views

How do I create a function at runtime in Objective-C

So it's late here, and my google skills seem to be failing me. I've found some great responses on SO before (time and time again), I thought you guys could help. I have a neural network I'm trying ...
2
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3answers
7k views

Neural Network with softmax activation

edit: A more pointed question: What is the derivative of softmax to be used in my gradient descent? ============== This is more or less a research project for a course, and my understanding of NN ...
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1answer
3k views

How can I learn more about solving real life problems using multilayer perceptron? [closed]

I'm learning about multilayer perceptrons, and looking to tackle some real-world problems in Matlab. Perhaps something like medical diagnosis, or speech recognition... But I'm not really sure where to ...
5
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2answers
1k views

Can someone explain Artificial Neural Networks? [closed]

According to Wikipedia (which is a bad source, I know) A neural network is comprised of An input layer of A neurons Multiple (B) Hidden layers each comprised of C neurons. An output layer of "D" ...
5
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1answer
2k views

PyBrain:How can I put specific weights in a neural network?

I am trying to recreate a neural network based on given facts.It has 3 inputs,a hidden layer and an output.My problem is that the weights are also given,so I don't need to train. I was thinking maybe ...
4
votes
1answer
681 views

Is it possible to run a neural network in reverse?

If we have a neural network such as the multilayer perceptron back propagation neural network that uses sigmodial logistic activation functions is it possible to feed the network outputs and have it ...
2
votes
3answers
7k views

How does a back-propagation training algorithm work?

I've been trying to learn how back propagation works with Neural Networks but yet to find a good explanation from a less technical aspect (I have searched most places and found this ...
2
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1answer
161 views

NeuPro Language?

I don't have so much a question about how to program something, but rather I'm looking for information on a specific programming language that I can't seem to find anywhere. It seems to be referenced ...
1
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1answer
95 views

Liquid State Machine: How it works and how to use it?

I am now learning about LSM (Liquid State Machines), and I try to understand how they are used for learning. I am pretty confused from what I read over the web. I'll write what I understood -> It ...
0
votes
1answer
3k views

How to use MLP (Multilayer Perceptron) in R?

I want to train my data using multilayer perceptron in R and see the evaluation result like 'auc score'. There is a package named "monmlp" in R, however I don't know how to use it correctly. I wrote ...
11
votes
2answers
993 views

Multi-layer neural network wont predict negative values

I have implemented a multilayer perceptron to predict the sin of input vectors. The vectors consist of four -1,0,1's chosen at random and a bias set to 1. The network should predict the sin of sum of ...
10
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2answers
2k views

My neural network gets “stuck” while training. Is this normal?

I'm training a XOR neural network via back-propagation using stochastic gradient descent. The weights of the neural network are initialized to random values between -0.5 and 0.5. The neural network ...
6
votes
1answer
1k views

Help me with my backprop implementation in Python

EDIT2: New training set... Inputs: [ [0.0, 0.0], [0.0, 1.0], [0.0, 2.0], [0.0, 3.0], [0.0, 4.0], [1.0, 0.0], [1.0, 1.0], [1.0, 2.0], [1.0, 3.0], [1.0, 4.0], [2.0, 0.0], [2.0, ...
5
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3answers
3k views

Neural Activation Functions - Difference between Logistic / Tanh / etc

I'm writing some basic neural network methods - specifically the activation functions - and have hit the limits of my rubbish knowledge of math. I understand the respective ranges (-1/1) (0/1) etc, ...
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3answers
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Feature extraction from neural networks

I'm doing simple recognition of letters and digits with neural networks. Up to now I used every pixel of letter's image as the input to the network. Needless to say this approach produces networks ...
4
votes
1answer
2k views

XOR Neural Network in Java

I'm trying to implement and train a five neuron neural network with back propagation for the XOR function in Java. My code (please excuse it's hideousness): public class XORBackProp { private static ...
3
votes
2answers
518 views

Neural Network Diverging instead of converging

I have implemented a neural network (using CUDA) with 2 layers. (2 Neurons per layer). I'm trying to make it learn 2 simple quadratic polynomial functions using backpropagation. But instead of ...
3
votes
1answer
951 views

neuralnet prediction returns the same values for all predictions

I'm trying to build a neural net with the neuralnet package and I'm having some trouble with it. I've been successful with the nnet package but no luck with the neuralnet one. I have read the whole ...
3
votes
2answers
434 views

How do I handle uncertainty/missing data in an Artifical Neural Network?

The context: I'm experimenting with using a feed-forward artificial neural network to create AI for a video game, and I've run into the problem that some of my input features are dependent upon the ...
3
votes
1answer
897 views

Neural network learning algorithm with heaviside/step-function

Is there any implementation (or straightforward description) of a training algorithm for feed-forward neural networks which doesn't use a sigmoid or linear squash-function, but a non-differentiable ...
3
votes
2answers
858 views

What is a derivative of the activation function used for in backpropagation?

I am reading this document, and they stated that the weight adjustment formula is this: new weight = old weight + learning rate * delta * df(e)/de * input The df(e)/de part is the derivative of ...
3
votes
1answer
5k views

How to set output size in Matlab newff method

Summary: I'm trying to do classification of some images depending on the angles between body parts. I assume that human body consists of 10 parts(as rectangles) and find the center of each part and ...
2
votes
2answers
682 views

How to use k-fold validation in a neural network

We are writing a small ANN which is supposed to categorize 7000 products into 7 classes based on 10 input variables. In order to do this we have to use k-fold cross validation but we are kind of ...
2
votes
2answers
1k views

Unexpected output while using 'neuralnet' in R

I'm using the neuralnet package of R for the prediction of hand written digits. MNIST database is being used for training and testing of this algorithm. Here is the R code I used: # Importing the ...
2
votes
2answers
4k views

Is it right to normalize data and/or weight vectors in a SOM?

So I am being stumped by something that (should) be simple: I have written a SOM for a simple 'play' two-dimensional data set. Here is the data: You can make out 3 clusters by yourself. Now, ...
2
votes
2answers
605 views

Where can I find a Free Chinese Handwritten Recognition engine for Android/IPhone?

I am interested in developing something that will make use of Chinese handwritten recognition software on smart phones. Before I get started I wanted to check to see if there was any free (for open ...
2
votes
1answer
326 views

Does it make sense to use an “activation function cocktail” for approximating an unknown function through a feed-forward neural network?

I just started playing around with neural networks and, as I would expect, in order to train a neural network effectively there must be some relation between the function to approximate and activation ...
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2answers
211 views

INFOGAIN_LOSS layer

I wish to use a loss layer of type INFOGAIN_LOSS in my model. But I am having difficulties defining it properly. Is there any tutorial/example on the usage of INFOGAIN_LOSS layer? Should the input ...
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1answer
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How to desig MLP neural network in Matlab?

Hi I've design the XOR with a three layered Neural Network. Now I have a new problem similar to xor but still I can't figure out how to solve it . Here's the problem : I want to distinguish the ...
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1answer
1k views

Deriving equation by weights and biases from a neural network

I carried out a neural network with a large database and got great answer in testing it (very small error - nearly 4%). Now I want to using weights and biases to derive an equation in order to get my ...
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3answers
2k views

Convert PMML - Model (Artificial Neural Network) to Java Code

I have a PMML file of a trained Artificial Neural Network (ANN). I would like to create a Java method which simply takes in the inputs and returns the targeted value. This seems pretty easy, but I do ...