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.

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1answer
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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 ...
2
votes
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
5k 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
2k 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 ...
10
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5answers
12k 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 ...
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 ...
5
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1answer
1k 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 ...
3
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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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1answer
155 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 ...
0
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1answer
2k 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 ...
6
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1answer
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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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2answers
2k 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, ...
4
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3answers
2k views

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 ...
4
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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" ...
3
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1answer
1k views

Neural Networks: Sigmoid Activation Function for continuous output variable

Okay, so I am in the middle of Andrew Ng's machine learning course on coursera and would like to adapt the neural network which was completed as part of assignment 4. In particular, the neural ...
3
votes
2answers
385 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
685 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
373 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
721 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
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2answers
726 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
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1answer
2k views

Why is a bias neuron necessary for a backpropagating neural network that recognizes the XOR operator?

I posted a question yesterday regarding issues that I was having with my backpropagating neural network for the XOR operator. I did a little more work and realized that it may have to do with not ...
2
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2answers
539 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
299 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
532 views

Can I export my (Matlab-based) neural network to PHP?

I have trained a neural network in Matlab (Using the neural network toolbox). Now I would like to export the calculated weights and biases to another platform (PHP) in order to make calculations with ...
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2answers
3k 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, ...
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1answer
2k views

Multilayer perceptron - backpropagation

I have a school project to program multilayer perceptron that classify data into three classes. I have implemented backpropagation algorithm from ...
1
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1answer
976 views

Neural network not converging

I'm new to Neural Networks, and programming generally. I've written a neural network in java, and i'm looking at football data. I have two inputs: 1) Home team win % over n games 2) Away team win % ...
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3answers
5k 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 ...
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1answer
1k views

difference between artificial neural network and Bayesian network

I am a student working on an internship project where in we are using Bayesian networks to predict a possible outcome from a given set of discrete parent variables.We now intend to use artificial ...
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3answers
1k views

Optimization of Neural Network input data

I'm trying to build an app to detect images which are advertisements from the webpages. Once I detect those I`ll not be allowing those to be displayed on the client side. Basically I'm using ...
0
votes
1answer
507 views

FANN XOR training

I am developing a piece of software that uses FANN, the Fast Artificial Neural Network library. I have tried after numerous failed attempts at writing my own ANN code to compile a FANN sample program, ...
0
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1answer
2k views

R neuralnet does not converge within stepmax for time series

everyone I'm writing a neural network for prediction of elements in a time series x + sin(x^2) in R, using the neuralnet package. This is how training data is being generated, assuming a window of 4 ...
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1answer
76 views

Finding best neural network structure using optimization algorithms and cross-validation in MATLAB

I'm using optimization algorithm to find best structure+inputs of a patternnet neural network in MATLAB R2014a using5-fold cross validation`. Where should i initialize weights of my neural network? ...
10
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2answers
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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 ...
10
votes
2answers
850 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 ...
7
votes
4answers
10k views

how to begin neural network programming [closed]

i am quite a novice in the field of neural networks . I have read some theory regarding neural networks. Now i want to do some real coding to realize the neural networks studies in my theory class . ...
7
votes
2answers
2k views

Need a specific example of U-Matrix in Self Organizing Map

I'm trying to develop an application using SOM in analyzing data. However, after finishing training, I cannot find a way to visualize the result. I know that U-Matrix is one of the method but I cannot ...
4
votes
3answers
835 views

_convertToOneOfMany in PyBrain

I follow the PyBrain tutorial Classification with Feed-Forward Neural Networks and want to build my own classifier. I do not understand how _convertToOneOfMany modifies outputs. Why would initial ...
4
votes
4answers
4k views

Neural Networks in MATLAB, initial weights

I made Neural Network in MATLAB with newff(...). When you train it with the same inputs and outputs, the training results are different on different runs. I understand that it is happening because the ...
4
votes
3answers
246 views

Neural Network Output Grouping 0.5?

I tried to write a Neural Network system, but even running through simple AND/OR/NOR type problems, the outputs seem to group around 0.5 (for a bias of -1) and 0.7 (for a bias of 1). It doesn't look ...
4
votes
2answers
895 views

How to implement fact related to false positive vs. false negative balance in neural network?

I have a yes/no classification problem, where false positives are worse than false negatives. Is there a way to implement this fact into neural network especially in MATLAB's Neural Network Toolbox?
3
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3answers
1k views

Neural Network Cost Function in MATLAB

How would I implement this neural network cost function in matlab: Here are what the symbols represent: % m is the number of training examples. [a scalar number] % K is the number of output ...
3
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1answer
329 views

Problems while using ScikitLearn's Neural Network implementation

I am trying to implement image processing using Neural Network implementation given by Scikit Learn. I have close to 10,000 color images in 'JPG' format, I converted those images into 'PNG' format and ...
3
votes
2answers
751 views

Having problems saving a neural net plot using neuralnet package - R

I'm using the neuralnet package in R, however am having problems saving the plot to disk. data(iris) attach(iris) library(neuralnet) nn <- neuralnet(as.numeric(Species) ~ Sepal.Length + ...
3
votes
1answer
2k views

Matlab SOM Toolbox U-Matrix Visualization

I'm using the SOM Toolbox to analyze data collected from a database of cars. My problem is when visualizing the Unified Distance Matrix. Quoting the documentation for som_umat: Compute and return ...
3
votes
1answer
4k views

Using nntool [MATLAB] from command line

I have this code: in = [5 columns of data-points]; out = [1 column of data-points]; net = newfit(in,out,5); net = train(net,in,out); now I want to access the error variable that is generated (so ...
2
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2answers
485 views

neuralnet in R - Getting same output for all input values

I am trying to prepare a neural net to forecast number of claims for a product based on two parameters 'no' & 'age'. Following data set is the input to neuralnet. structure(list(no = ...
2
votes
1answer
321 views

Neural Network with backpropogation not converging

Basically I'm trying to implement backpropogation in a network. I know the backpropogation algorithm is hard coded, but I'm trying to make it functional first. It works for one set of inputs and ...
2
votes
2answers
1k views

Back propagation Error Function

I have a quick question regarding back propagation. I am looking at the following: http://www4.rgu.ac.uk/files/chapter3%20-%20bp.pdf In this paper it says calculate the error the neuron error as: ...