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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Encog - Using Hybrid Neural Networks

How is using simulated annealing in conjunction with a feed-forward neural network different than simply resetting the weights (and placing the hidden layer into a new error valley) when a local ...
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1answer
39 views

Determine function parameters with neural network

I am currently studying a doctoral thesis in control theory. At the end of every chapter there is a simulation of a relative-with-the-subject problem. I have finished the theory,but for further ...
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17 views

neural network sas code

I'm trying to go from the perceptron code to a NN code in SAS base. I wrote the following code (just for a NN with 2 hidden nodes and 3 variables), but it doesn't work: proc iml; use percept; read ...
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7 views

Neural networks for transliteration

I am investigating the possibility of using neural networks for the task of transliteration (transcription from one script to another). An example of an input = "BRAIN" and the output = "برين". ...
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0answers
19 views

Machine Learning: Simulated Annealing on Autoencoders

I have implemented simulated annealing for solving the cost function of a simple weight tying neural network, but am receiving some weird results. Logic: Forward prop : f(W*x+b), where f = tanh, W ...
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11 views

caret package is not using all the registered cores, using 'nnet' method for training

I am using the train() function of caret package with method='nnet', and I have registered 6 cores using doMC. But it uses only one core. This is my code: library(caret) library(foreach) ...
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0answers
31 views

Neural Network training error stochastic gradient descent

I have this implementation of a feed forward neural network with stochastic gradient descent in python. When training a NN instance with the xor gate, it trains just fine. But when I train the ...
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0answers
24 views

Creating a perceptron network when input array is large

I need to create a perceptron which has two target values(0,1) and 21 input vectors. Each vector is 110592 in size. How do I call the "newp" function for this? ...
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3answers
42 views

Why limit the weight size can prevent overfitting in machine learning

The most popular way to prevent over-fitting is weight decay(L2, L1) in machine learning(Like logistic regression, Neural network, linear regression etc). The purpose of weight decay is preventing the ...
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13 views

Average pooling with Theano

I am trying to implement another pooling function for neural network with Theano, expect of already existing maxpool, for example average pool. Using to this source, where average pooling is already ...
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61 views

Is this a correct simple neural network [on hold]

Hello I think that I have made a simple one layer neural network in C++. Can someone verify that I am on the right track? Thank you in advance. #include<iostream> #include<string> int f; ...
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16 views

Back propagation on a simple function

I'm trying to run a back propagation to learn a simple function. I'm not sure what criteria decides the number of hidden layers and so forth. E.g, for a function like f(x)= x^4 - 15x^2; ...
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20 views

Can feedforward neural networks be trained in parallel in R. Any R package for the same? [closed]

I am training a neural network for around 7000 images of 96by96 pixels using two hidden layers of size 500 and 100. I am using the Neuralnet package of R. But this seem to take a lot of time. Can this ...
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1answer
9 views

Support for NeuronDotNet3.0

I wondered if any of you know, if there is support for NeuronDotNet 3.0. The website neurondotnet.freehostia.com is down, and I am looking for more example Files or instructions how to properly use ...
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1answer
30 views

What values do you supply to the sigmoid activation function?

I have my sigmoid activation function: s(x) = 1/(1+e^(-x)) I have my output neuron: Expecting = 1 Actual = 1.13 I know the value that comes out of the sigmoid activation function is 1.1254 but I ...
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16 views

Theano implementation of Stacked DenoisingAutoencoders - Why same input to dA layers?

In the tutorial Stacked DenoisingAutoencoders on http://deeplearning.net/tutorial/SdA.html#sda, the pretraining_functions return a list of functions which represent the train function of each dA ...
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7 views

Neural network generation for finding whether the image is defective or defect free

I have found the regression values (both defective and defect free) of various features of an image viz. Kurtosis, Skewness, Standard deviation etc. While setting up the neural network is it only ...
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9 views

How can we see Hidden layer activations in a neural network built using FANN?

After training the network, I want to get the activations of the neurons in the hidden layer since it's an autoencoder. Can someone please tell how can we get the activation of the hidden layer for ...
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25 views

Training an LSTM neural network to forecast time series in pybrain, python

I have a neural network created using PyBrain and designed to forecast time series. I am using the sequential dataset function, and trying to use a sliding window of 5 previous values to predict the ...
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0answers
23 views

Plot individual decision boundary for a neuron in feedforward ANN

I have a feedforward neural network with a single hidden layer which I generate using pybrain (I do not insist on using it, any tool will do as long as it solves my problem). It consists of a linear ...
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23 views

Feed Forward Neural Network explanation [closed]

Hai i need explanation and flow diagram for the following program .this my project to find the baby's mood from their cry signal.this is sub program used for matching purpose.the m files are main ...
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1answer
23 views

Neural Network Input Arrangement and Normalization Dependencies

Not sure if this is one or two questions, and while I think that the answer to both questions is "no, it will not make a difference", you and I have both been wildly wrong to other silly questions ...
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29 views

How to build and importance chart with mlp function from RSNNS package in R?

I would like to build a bar plot with the importance of the independent variables ranked by largest value. I am using the mlp function for the model and don't believe I am using the correct output. ...
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17 views

Neural network parameter matrix

I'm trying to understand a Neural network result performed with Mathematica program. The input code is: n0 = InitializeFeedForwardNet[trainingI, trainingO, {3}, RandomInitialization -> ...
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0answers
11 views

Determining which inputs to use with genetic algorithm on a neural network in matlab [closed]

I have a dataset with 41 possible inputs(each with over 10,000 time-steps) and 1 target. Is there a way to determine the optimum inputs and number of inputs given an architecture? Ideally, I would ...
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0answers
17 views

how to write MATLAB code for wavelet neural network [closed]

Wavelet Neural Network for Prediction of Solar radiation I want to apply Artificial Neural Network for Solar Radiation Prediction
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1answer
51 views

How to categorize objects by pattern recognition using NN toolbox (Matlab) for objects having both series and single value data? [closed]

Hope you all are doing great !! I need your help for a project in which I have to categorize objects having some time varying data and static values both as characteristics into 3 categories. I am ...
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11 views

RBF network : Is it better to train the basis function centers together with linear weights

I wondering should I train the basis function centers together with linear weights , or train this two steps separately. Which way is better?
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1answer
27 views

How to speed up the training in neural network when mini-batch training is used?

Can anyone give me some ideas on possible techniques to speed up the training process of multilayer artificial neural network if the training involves mini-batch? So far, I understand that stochastic ...
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0answers
15 views

PyBrain: How is bias added to specific hidden layers of a Neural Network in PyBrain?

I have a Neural Network with two hidden layers. I want to add a bias unit only to the second hidden layer. How do I do that? The code for my network is as follows: nn = FeedForwardNetwork() inLayer ...
3
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1answer
71 views

Deep Belief Networks vs Convolutional Neural Networks

I am new to the field of neural networks and I would like to know the difference between Deep Belief Networks and Convolutional Networks. Also, is there a Deep Convolutional Network which is the ...
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0answers
11 views

mlpack sparse coding solution not found

I am trying to learn how to use the Sparse Coding algorithm with the mlpack library. When I call Encode() on my instance of mlpack::sparse_coding:SparseCoding, I get the error [WARN] There are 63 ...
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31 views

How to force to use another GPU in a cluster? [duplicate]

I am using Caffe which is a framework for convolutional neural networks with GPUs(or CPUs). It uses mainly CUDA 6.0 and I'm training a CNN with a large dataset of images(ImageNet dataset=1.2million of ...
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1answer
39 views

Artificial Neural Network layers

I have decided to try and make a reccognition system. And I want to start with pictures of say, 16x16 pixels. That will be 256 INPUT NEURONS. Now, the output neurons is essensially how many results I ...
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35 views

analyzing neturalnet function from R [migrated]

'neuralnet' package in R allows us to use neural network algorithm with back propagation. I want to use the function for prediction. I saw a tutorial on neuralnet in which iris data was predicted. I ...
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2answers
39 views

How to calculate the derivative of f(net)=tanh(net) in c++

I need to implement a Multilayer Perceptron using Levenberg - Marquardt algorithm. To find slope of activation function (tanh), derivative of tanhx = sec^2 hx haas to be calculated. Is there any ...
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1answer
33 views

How do you decide the parameters of a Convolutional Neural Network for image classification?

I am using Convolutional Neural Networks (Unsupervised Feature learning to detect features + Softmax Regression Classifier) for image classification. I have gone through all the tutorials by Andrew NG ...
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0answers
25 views

Can Someone Explain How To Pretrain a Neural Network

I have read this and this, but was only able to understand so much... which was not very much. I guess I need to better understand how RBMs and autoencoders work and how they can be used to fine-tune ...
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0answers
24 views

Regression vs. Classification Performance

Let's say I am using regression to predict a specific value. Anything less than 5% in accuracy is useless in terms of predicted vs. actual output - i.e. if the output is 55 then only the predicted ...
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14 views

Terminate As Soon As Validaton Error Increases?

I'm trying to avoid overfitting the training data, and have been warned of oscillations. How many oscillations are needed to determine overfitting, or should the training be stopped immediatelly ...
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31 views

What method should I use for image classification?

I am working on an image classification problem where I should be able to classify an image as say a watch with a rectangular dial/ a watch with a circular dial/ a shoe etc.. I have looked into ...
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0answers
13 views

OpenANN/PyBrain : sparse input Vectors

Does the OpenANN (or PyBrain or any other open-source scalable) project have support for sparse inputs vectors?For example input vectors represented in libsvm format? I want to build an autoencoder ...
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0answers
15 views

FANN Sparse input vectors

Is there some alternative way (for example the svmlight/libsvm format) of representing Sparse input vectors for a neural net using the FANN library(or any other library for that matter) than the ...
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0answers
41 views

Face Recognition with NN

There are 15 faces need to be recognized. Each face has 7 properties. We build three layers NN to achieve the recognizing. The input layer include 7 neural And the output include 15 neural (equal to ...
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0answers
48 views

PyBrain RNN prediction failure

I am using a recurrent neural network for time series prediction with LSTM as the activation function. The inputs are sequence datasets, with the output being the next datum after the input sequence. ...
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1answer
31 views

Why hidden layers of neural networks often contain 64, 128, 256 neurons?

When looking for classic neural nets architectures on the web, I find that very often, hidden layers of neural networks contain 32, 64, 128, 256... neurons. Is there a reason for that?
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1answer
45 views

Update ANN's training set

Assume an ANN has trained by 1GB size training data using a long time. Do we need train the data again when just a few rows in the training data changed? or is the design of ANN error?
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1answer
21 views

Is the mini-batch gradient just the sum of online gradients?

I am adapting code for training a neural network that does online training to work for mini-batches. Is the mini-batch gradient for a weight (de/dw) just the sum of the gradients for the samples in ...
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10 views

i have a program in gui interface matlab . how can i can make the same program thorough neural network

this is my code in gui . which i need to made in neural network in matlab . the program is calculating blurr of a hazy image and then calculating blurr with formula. the formula is decribed below. ...
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1answer
18 views

Autoencoders: Papers and Books regarding algorithms for Training

Which are some of the famous research papers and/or books which concern Autoencoders and the various different training algorithms for Autoencoders? I'm talking about research papers and/or books ...