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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5 views

Neural Network Implementation with SGD

What is the best available implementation of neural network, in particular I am looking for the one with training using stochastic gradient descent.
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11 views

How to generate multiple output for ANFIS

I am trying to develop a neuro-fuzzy model for classifying two activity states from movement attributes. I tried this earlier with Mamdani fuzzy where the rules look like as follows- "IF speed is ...
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2answers
23 views

PyBrain AssertionError when setting data for trainer

I am trying to set up a neural network in Python (using PyBrain) for prediction purposes. I already set one up with a small, mock dataset, but when expanding this network to work for larger datasets, ...
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18 views

Matlab GUI background color changing to black when using parallel computing (MLP and SVM)

I designed a GUI in Matlab that uses parallel computing in loops for accelerating speed. When I disable parallel computing everything Is normal but when I activate it background color of my GUI and ...
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2answers
37 views

How to convert standardized outputs of a neural network back to original scale?

In my neural network, I have inputs varying from 0 to 719, and targets varying from 0 to 1340. So, I standardize the inputs and targets by standard scaling such that the mean is 0 and variance is 1. ...
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13 views

theano max pooling - ingnore_border argument does not affect shape

I'm having a little difficulty with max pooling in theano. I am calling downsample.max_pool_2d with input shape (20, 47, 39) and down scale factor (2,2). I want to use the boundary information and ...
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26 views

What is a Recurrent Neural Network, what is a Long Short Term Memory (LSTM) network, and is it always better?

First, let me apologize for cramming three questions in that title. I'm not sure what better way is there. I'll get right to it. I think I understand feedforward neural networks pretty well. But ...
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2answers
37 views

What activation function to use or modifications to make when neural network gives same output on regression with PyBrain?

I have a neural network with one input, three hidden neurons and one output. I have 720 input and corresponding target values, 540 for training, 180 for testing. When I train my network using Logistic ...
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17 views

How is unit classification created in som, using kohonen package in R

Code used: system.time(som_model <- som(train_matrix, grid=som_grid, rlen= p, alpha=c(0.05,0.001), ...
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0answers
8 views

Produce a PMML file for the Nnet model in python

I have a model(Neural Network) in python which I want to convert into a PMML file . I have tried the following: 1.)py2pmml -> Not able to find the source code for this 2.)in R -> PMML in R works ...
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15 views

Partly connected Neural network in Matlab

I am new to the Neural Network toolbox in Matlab. I am trying to build a Neural Network where all the nodes are not connected to each other i.e I want to cut out the connections between some neurons. ...
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26 views

How to prepare my data for my neural network on natural gas future prices

I want to create a nn to predict future prices in natural gas I'm not sure it's a simple time series problem: Each month ( so 12 of these) I follow a future spread ( e.g sep-oct) until the front ...
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43 views

R Code: Using RSNNS to fit a Hybrid RNN-SARFIMA to log10(lynx) time series in R package (tsDyn)

Given that Hybrid RNN-SARFIMA dominates simple SETAR, I am trying to fit a SARFIMA[2,0,0]x0,1,1 model with non-linearity in the residuals adjusted by ELMAN Recurrent Neural Network. I am trying to ...
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1answer
60 views

Is neural net only capable of solving problems with 0..1 input values and 0..1 expected output values?

I've just created my first neural net, which uses gradient method and back propagation learning algorithm. It uses hyperbolic tangent as activation function. The code is well unit tested so I was full ...
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24 views

How to put a panel data set into a neural network in matlab

It may seem a silly problem but here's how it goes: I've used ANN for the purpose of prediction before, but every time, my data set was either time series or cross section. I've never used ANN with ...
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49 views

Neural Network - General Questions [closed]

I am new with Neural Networks, I'm reading about this and I have some questions about it to understand it better. What are the advantages and limitations of Back propagation? What is the meaning of ...
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38 views

How to train neural network with respect to distribution of training set in AdaBoost algorithm?

I'm trying to implement AdaBoost alogirthm. I have 5 different neural networks which and I want to combine their predictions into single one. What I don't understand in AdaBoost algorithm is how im ...
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1answer
29 views

How to test neural network developed with PyBrain

I'm new to machine learning and am trying to learn how to develop neural networks for prediction purposes in Python. I followed a basic tutorial from PyBrain and have successfully set up a neural ...
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14 views

Using java neuroph source codes

i have tried to use neuroph source code in java to create a neural network of more than two input neurons (precisely three) but it displays an input vector size error. Please what's wrong?.
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13 views

Matlab neural network toolbox - get errors of the test data during training process

I know that, when using the Maltab neural network toolbox, I can get the error in percent for the whole training data with the following code: tr = tr_6000; net = net_6000; t = trainTarget; x = ...
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40 views

R package DARCH deep belief neural network cannot learn 'exclusive or' it seems

Thank you in advance for any help. I am trying to implement a deep learning neural network to predict a number of variables (a sort of multivariate non-linear regression). As a first step I am looking ...
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27 views

Use all cores to train ANN via neuralnet

I am training ANN via package neuralnet in R and the problem is that it uses only 1 core in the training process. I've installed package parallel and I've tried to use something like ...
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10 views

GANNs in Weka - how to construct?

I am trying to construct a GANN in Weka. I am trying to create a Neural network with a structure which looks like this - http://i.stack.imgur.com/rgXlQ.jpg How do I do it?I am trying to create a ...
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34 views

Interpreting neurons in the neural network

I have come up with a solution for a classification problem using neural networks. I have got the weight vectors for the same too. The data is 5 dimensional and there are 5 neurons in the hidden ...
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3answers
171 views

What do node gradients represent in a neural network?

I am following along (code is a mess, I'm just messing around) with Introduction to the math of neural networks with this simple 3-layer neural net: My calculations are coming out pretty much the ...
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37 views

Should I train my weak classifier at each AdaBoost iteration?

I'm rather new to machine learning or even programming itself, so I'm sorry if questions that I'm about to ask don't make much sense. So I've been using 5 different, and not so weak classifiers (5 ...
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31 views

Can a restricted boltzmann machine model the frequency of datapoints in a dataset?

I've been playing around with RBMs recently, and while I've gotten them to become good generative models of datasets (i.e. they generate only plausible datapoints), they don't seem to capture the ...
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0answers
30 views

Unsupervised pre-training for convolutional neural network in theano

I would like to design a deep net with one (or more) convolutional layers (CNN) and one or more fully connected hidden layers on top. For deep network with fully connected layers there are methods in ...
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9 views

Ressilient Backpropagation (RPROP)

If I understood correctly how the RPROP works we need to consider only gradient value which is: for output layer: self.gradient = self.activation_function_prim(self.weighted_sum) * ( correct_out - ...
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1answer
11 views

Convert CudaNdarraySharedVariable to TensorVariable

I'm trying to convert a pylearn2 GPU model to a CPU compatible version for prediction on a remote server -- how can I convert CudaNdarraySharedVariable's to TensorVariable's to avoid an error calling ...
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0answers
20 views

Generalized additive neural Network in matlab

I am trying to create a GANN in matlab using the neural network toolbox? Can anyone help me out on how to do it?
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0answers
15 views

How to use neural networks along with GLM to estimate the effect of some parameters on a subject?

I'm working on a set of data about some insurance companies. There is a list of parameters including age, sexuality, etc, which affect the amount of damage on the insurance subject. I want to extract ...
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1answer
32 views

Neural network to approximate the wanted solution of a system of differential equations

I have a target solution for a system of differential equations that has some unknown parameters.I want to find the values of these parameters for which the solution is closer to the target.Can I do ...
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1answer
209 views

Neural Network gives same output for different inputs, doesn't learn

I have a neural network written in standard C++11 which I believe follows the back-propagation algorithm correctly (based on this). If I output the error in each step of the algorithm, however, it ...
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65 views

Predicting next values in time series using Nonlinear autoregressive neural network in matlab

I have an object which is a 2438x1 double. I am using a nonlinear autoregressive network, which is trained on the data in the open loop format. My goal is to train the network on this data, then ...
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13 views

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
74 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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19 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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0answers
9 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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33 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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0answers
15 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
38 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
25 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
48 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 ...
3
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1answer
36 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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0answers
18 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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1answer
11 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
35 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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1answer
30 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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9 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 ...