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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How to analyse the performance of ANN using NN Toolbox in Matlab? The performance graph is attached

I am using ORL face Database for face recognition. There are 40 subjects each with 10 images each. The size of each image is 112 * 92 pixels. For feature extraction and dimensionality reduction, I ...
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9 views

In R Extending S3 Neural Net Class: “nnet” but would like to call methods without warnings

When I try the following I get an error warning after calling summary. library("nnet") df <- data.frame(matrix(rnorm(10*10),10), list( l = rep(c("a","b"),5))) setClass("xnet", ...
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how to derive the XOR by using these neural networks?

I want to model a NN that solves the XOR problem, so I know that a solution to x1 xor x2 = (x1 or x2) and not(x1 and x2) so I have the following models of NN: The problem that I have is when I ...
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9 views

Artificial neural networks - matlab : How to create a train, a test and a validationset with newff

Beste I've the question how I could evaluate an artificial neural network, like in the ANNtool. First of all, I've the following matlab code to create a simple ANN % generation of examples and ...
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7 views

Pybrain recurrent network for regression - how to properly kickstart trained network for predictions

I am trying to solve regression task using recurrent neural network (I use pybrain to build it). After my network is fit I want to use it to make predictions. But prediction of recurrent network is ...
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25 views

LSTM network learning

I have attempted to program my own LSTM (long short term memory) neural network. I would like to verify that the basic functionality is working. I have implemented a Back propagation through time BPTT ...
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0answers
24 views

Convolutional Neural Network vs Feedforward Backpropagation Neural Network for 3D Object Recognition

I am working on a problem in which I have to recognize very simple objects from 3D data collected from Kinect depth sensors. I converted the depth data to an indexed image and have implemented regular ...
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9 views

PyBrain Recurrent Neural Network with 10,000 Inputs & Outputs

I am trying to use PyBrain to generate a Recurrent Neural Network for a simple collaborative filtering exercise to recommend books. I have a corpus of approximately 10,000 or so books, which give me ...
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19 views

ADADELTA preserving randomly initialized weights in neural network

I am attempting to train a 2 hidden layer tanh neural neural network on the MNIST data set using the ADADELTA algorithm. Here are the parameters of my setup: Tanh activation function 2 Hidden ...
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1answer
20 views

update of weights in a neural network

I was trying to program the perceptron learning rule for the case of an AND example. Graphically we will have: where the value of x0=1, the algorithm for updating the weights is: and I have made ...
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1answer
19 views

How Get Weight Matrix from NN FANN?

I'm using FANN to use Neural Network. (Link to FANN) I need to get the matrix of weight after trained the network, but I didn't find anything from documentation. (Link to documentation) Do you know ...
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2answers
26 views

How to do machine learning when the inputs are of different sizes?

In standard cookbook machine learning, we operate on a rectangular matrix; that is, all of our data points have the same number of features. How do we cope with situations in which all of our data ...
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9 views

Creating a vector of forecasted values using neural networks in R

I am having a problem with obtaining a vector of forecast values using R. My code is as follows: library(nnet) library(RSNNS) library(stats) library(iterators) library(doParallel) mydata<- ...
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1answer
14 views

Software packages for neural network

I am looking for a very lightweight neural network package to solve the following problem: 2 input units, 4 hidden units, 2 output units different activation functions for different connections ...
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27 views

artificial neural networks python libraries, what's the best choice for beginner? [on hold]

https://wiki.python.org/moin/PythonForArtificialIntelligence the wiki.python page list some of the libraries available on Python Artificial Neural Network, but which one is the best... neurolab ...
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1answer
22 views

How to predict using model generated by Torch?

I have executed the neuralnetwork_tutorial.lua. Now that I have the model, I would like to test it with some of my own handwritten images. But I have tried many ways by storing the weights, and now by ...
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29 views

Calling the abstract base class constructor

The library has a class of neural network. If I create one network - all work fine, but when I create two or more networks - one of them stops learning. After several hours of searching the error I ...
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22 views

Classification of multiple input - multiple output neural networks matlab

I am trying to write a Matlab ANN code for my 789 samples of 8 inputs with 789 samples of 3 outputs, for which I'm using the pattern recognition. I should classify my output to a {0,1} c-dimensional ...
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29 views

How to improve gradient descent backpropogation speed in MATLAB Neural Network Toolbox?

I am currently training several hundred different permutations of neural networks. Using Levenberg-Marquardt backpropogation yields results relatively fast, however I prefer if I use gradient descent ...
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1answer
29 views

Which method should theoretically be best?

Say I want to recognize my characters using neural network(s). Let's cut it down to 5 letters, the binary form of image to 16x16, input + 2 layers network, unipolar function inside both layers. ...
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21 views

ReLU in Deep Neural Net trained with Contrastive Divergence

I am trying to adopt the code for Deep Learning with Contrastive Divergence from http://deeplearning.net/tutorial/DBN.html#dbn to work with real valued input data instead of binary as described in the ...
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21 views

Temporal convolution for NLP

I'm trying to follow Kalchbrenner et al. 2014 (http://nal.co/papers/Kalchbrenner_DCNN_ACL14) (and basically most of the papers in the last 2 years which applied CNNs to NLP tasks) and implement the ...
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1answer
23 views

Unit testing backpropagation neural network code

I am writing a backprop neural net mini-library from scratch and I need some help with writing meaningful automated tests. Up until now I have automated tests that verify that weight and bias ...
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1answer
31 views

Get argument value from function call

How do I get (potentially un-filled) value of argument in function call? I am trying to get an information if linout is true or false for fitted nnet model. Example: library(nnet) df <- ...
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14 views

What does the “plot interval” scroll bar do in the MATLAB Neural Network Toolbox

What does the "Plot Interval" bar (in the image below) change when moved to say a 100 epochs? I noticed that the training time is decreased significantly the larger the interval is but I do not ...
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2answers
36 views

Calculating error for a neural network

I have written a back-propagation MLP neural network and I want training to stop when the error is less than or equal to 0.01 I have my dataset which has been split to be 60% training data, 20% ...
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1answer
11 views

confusion matrix as the result of neural network in matlab

2 questions, 1- I used neural network matlab toolbox to train a neural for classification, but each time I close the program and train and test the NN, I got different results!! do you know what ...
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1answer
22 views

OCR for different sizes of text with NN?

How to deal with recognition of a pattern where the input character font size in the image is different in size than the those it was trained with? How do I input this to my trained neural network?At ...
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0answers
15 views

[caffe]How to tune a traning schema for a different dataset?

Currently I am following the caffe imagenet example but apply it on my own training dataset. My dataset is about 2000 classes and about 10 ~ 50 images each class. Actually I was classifying vehicle ...
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11 views

How to train neural network in MATLAB in mutliple levels?

I am using Neural Network to classify the images. I want to train the NN in 3 levels. Level 1. train using 3 categories of images Level 2. 3 categories Level 3. 2 categories What is the approach ...
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18 views

Use genetic algorithm for neural network training in Matlab

I wanna train my network with GA. What should I change in code net = newff([-2 2],[4 1],{'tansig','purelin'},'trainlm','learngdm','msereg'); for this goal solving?
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35 views

Back-propagation KL-divergence for training “one level neural network”

I am new in machine-learning and python, I had read the paper http://nlp.stanford.edu/~socherr/EMNLP2013_RNTN.pdf, I should use Back-propagation KL-divergence for training “one level neural network” ...
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1answer
14 views

How can I use a neural network to model a quadratic equation?

A lot of examples I've seen about neural network to model mathematical functions are using sin / cos / etc. These are nicely bounded between 0 and 1. What if I wanted to model something that was ...
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12 views

how patch training for xor in neural network works?

how to calculate the error for xor patch training in neural network before updating the weights? for example if i got the following feed forward result : x|y| output 1|1|0.9 1|0|0.65 0|1|0.08 ...
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172 views

Neural Network not learning - MNIST data - Handwriting recognition

I have written a Neural Network Program. It works for Logic Gates, but when I try to use it for recognizing handwritten digits - it simply does not learn. Please find the code below: // This is a ...
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1answer
36 views

Theano: Reconstructing convolutions with stride (subsampling) in an autoencoder

I want to train a simple convolutional auto-encoder using Theano, which has been working great. However, I don't see how one can reverse the conv2d command when subsampling (stride) is used. Is there ...
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0answers
38 views

Glass wearing detection Matlab [closed]

I am doing a project just to detect if the person is wearing glasses or not. I have a training database. I want to use a neural network for this. I want to train the neural network with features of ...
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23 views

Neural network opencv 3.0

I am pretty new to neural networks in opencv. I read through the documentation and this is how i have implemented the training of the network cv::Ptr<cv::ml::ANN_MLP> classifier = ...
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40 views

using convolutional neural network library 'caffe' to train a dataset [closed]

Has anyone used the "caffe" library to training some dataset before? I am trying to do that recently but couldn't find some good examples/tutorials, even the tutorial in the caffe website is very ...
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1answer
31 views

Encog regularization for C# samples/usage

I wonder did Encog developers implemented regularization for backpropogation algorithm? I seen RegularizationStrategy class for java, but didn't find something similar for C#.
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11 views

Java, Weka : Linear Regression? MultilayerPerceptron?

I am a newbie to the world of ML. Currently self-studying with some books and pdf files.. I am writing a program which automatically calculates the trade allocations. I recently learnt about Weka and ...
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0answers
18 views

Is it possible to input values greater than 1 in Fast Artificial Neural Networks? If so, how can I add values like 100,200,300 etc as input to FANN?

Is it possible to input values greater than 1 in Fast Artificial Neural Networks? If so, how can I add values like 100,200,300 etc as input to Fast Artificial Neural Networks?
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11 views

confidence interval of neural network MATLAB

I am using DNN for predicting an outcome of a process (with MATLAB NN toolbox). Is there any way to have confidence interval of the outputs? I asked this question in mathworks website and some one ...
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1answer
60 views

C++ heap corruption on new

I'm writing simple ANN (neural network) for functions' approximation. I got crash with message: "Heap corrupted". I found few advices how to resolve it, but nothing help. I got error at first line of ...
3
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1answer
49 views

How to train a neural network to detect presence of a pattern?

The question phrasing is vague - and I'm happy to change it based on feedback. But, I am trying to train a neural network to detect fraudulent transactions on a website. I have a lot of parameters as ...
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1answer
39 views

Neural network to solve AND

I'm working on implementing a back propagation algorithm. Initially I worked on training my network to solve XOR to verify that it works correctly before using it for my design. After reading this I ...
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30 views

What are limitation of perceptrons ?

I've been studying Geoff Hinton's lectures and I came across perceptrons.. and couldn't understand the section on.. What exactly are limitations of perceptrons Thanks
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1answer
22 views

How do I interpret the output of a neurolab simulation?

I am using neurolab to simulate a neural network to classify a dataset into a binary classification. I have the data in a dataframe.I am creating a neural network with one input value and one output ...
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1answer
14 views

how should a neural network learn clusters assuming a particular weight matrix and learning rate?

let us consider a set of six points S={a(-1,1),b(-1,2),c(1,0),d(1,2),e(2,-1),f(2,2)} on a two dimensional eucledian plane.initially the six points form three clusters as {a,b},{d,f} and {c,e}.given ...
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1answer
53 views

How to encode the complex data for the neural network in the best way?

The data consist from the several records. A record is as the following: [bit vector, numeric vector, a few numeric values]. Bit vector has the different length for each record and the same is true ...