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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7 views

Error in a neural network layer class, R

I come from a C++ / Java background, and am trying to implement a neural network layer class. The neural network equations are linear output equal gain times input plus bias; and squashed output is ...
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0answers
18 views

Plot in for loop

I have implemented the single layer perceptron using the following code: %% clear all;close all;clc %% uni1 = 0.5 + rand(250,2); uni2 = 1.5 + rand(250,2); n = size(uni1,1); m = size(uni2,2); uni1 = ...
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0answers
8 views

Biogeography-Based Optimizer (BBO) for training Multi-Layer Perceptron (MLP) - Breast cancer dataset [on hold]

How to extent with 10-fold cross validation and performance metrics the Biogeography-Based Optimizer (BBO) for training Multi-Layer Perceptron (MLP) script??? ...
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1answer
19 views

Classification by neural network from a feature in a piecewise manner

Suppose I wish to predict a binary class {0, 1}. One of the feature x is a real. Can a neural network produce a model such that the model predicts class 1 if a < x < b (given a, b are reals such ...
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0answers
15 views

In a neural network of n features which predict a continuous variable X, how to tell the feature which contributes the most to the output value X? [migrated]

Say I have a neural network which uses some input features say N, some inut layers say L which predict a continous variable say X. Can we say which features or combination of 2 features of the initial ...
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0answers
3 views

Pybrain time series prediction using LSTM recurrent nets

I have a question in mind which relates to the usage of pybrain to do regression of a time series. I plan to use the LSTM layer in pybrain to train and predict a time series. I found an example code ...
0
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1answer
12 views

When encoding weights in a neural network as a chromosome in a genetic algorithm, can a binary string be too long to function properly?

I have a feedforward neural network that I want to train using a genetic algorithm. I have read that the best option is to use a binary string of the weights represented as grey codes. But in my ...
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0answers
19 views

Combining SOM and k-Means for Clustering of Face Data with size 80*3408

In order to improve the final performance of the SOM, besides training the SOM with the Kohonen algorithm, the k-means algorithm is included in the design. The k-means algorithm is utilized in pattern ...
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1answer
12 views

Neural network value calculation?

I have 3 neurons x1, x2, x3. Now I know my value is being overflowed by the actual result value at output (as it is wrong answer) and my weights need new value, but how much value to be set for each ...
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0answers
14 views

Neural Network in R with Continuous Outcome?

I tried to use the library "neuralnet" to get a neural network to calculate a continuous outcome (for example temperature values), but its not working, i got the error: Error in neurons[[i]] %*% ...
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0answers
13 views

How to identify patterns in a log file using a neural network? [on hold]

I want to identify patterns in a log(text) file which has large no of records like below. and then system should be able to automatically generate a record with same format but some values are ...
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0answers
39 views

How can I prevent a Hebbian learning algorithm from learning the exact same function for each of the output neurons?

Suppose that your have a neural net with 5 input neurons fully connected to 2 output neurons. The input sequence is constructed in such a way that there are two distinct input patterns that often ...
0
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1answer
36 views

Elman Network in Pybrain

I'm trying to make an Elman Network (aka Simple Recurent Network) with Pybrain, I think the code should look something like this: n = RecurentNetwork() n.addInputModule(LinearLayer(5, name = 'in')) ...
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0answers
63 views

Writing your own neural network [closed]

I'm a beginner in c++ and these few weeks I have been really interested in N.N's. I just wrote one in c++ and it kind of works, my question is: Does writing your own neural network have any ...
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2answers
35 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 ...
0
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1answer
23 views

What is an epoch in ANN's and how does it translate into code in MATLAB?

I'm trying to understand (and visualize) what an epoch exactly is with regards to training an ANN. We have a training set of ~7000 products which have 10 characteristics (the inputs). These products ...
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1answer
59 views

how can i convert my cpu code of dot product of two matrices to GPU in matlab

I want to take weighted sum of two matrices in GPUarray to be fast. for example my code on cpu is given below: mat1 = rand(19,19); mat2= rand(19,19); Receptive_fieldsize = [4,3]; overlap = 1; ...
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0answers
34 views

r package for bayesian neural network [closed]

is there any package or function in R that can perform bayesian neural network except brnn package? i want to test the model with different priors for the parameters except normal distribution. i also ...
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1answer
15 views

neural networks for Farsi OCR

I'm trying to implement a farsi OCR using neural networks,I am using 5000 training examples each is a 70 * 79 matrix,concretely I have a 5530 units input layer and one hidden layer(4000 units) and a ...
1
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1answer
26 views

Neural network using R “nnet” package- NAs when using SIZE >2

Have a problem with building a model using nnet package. If I understood right the SIZE parameter is the number of neurons in the hidden layer. I used size=2 or 1, but this gives me bad results. I try ...
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2answers
30 views

Multiclass target detection : N X (1 vs all) or 1 X (N vs all)?

I am doing a multiclass classification using neural networks. Say I have 10 target classes and one null (non-of-the-above-targets). Is it better that I train a neural network separately for each ...
0
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1answer
37 views

Artificial Neural Network for formula classification/calculation

I am trying to create an ANN for calculating/classifying a/any formula. I initially tried to replicate Fibonacci Sequence. I using the inputs: [1,2] output [3] [2,3] output [5] [3,5] output [8] ...
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1answer
67 views

Reducing the number of output neurons

I am trying to train a neural network to control a characters speed in 2 dimensions. x and y between -1 and 1 m/sec. Currently I split the range into 0.1 m/sec intervals so I end up with 400 output ...
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0answers
21 views

Error using eye: Out of memory while training neural net. But memory looks sufficient

I can't train neural network which is big, but apparently it should be enough memory on the computer. The error stack is follows: Error using eye Out of memory. Type HELP MEMORY for your options. ...
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0answers
18 views

How to force use of Matlab (not MEX) in train function?

It is said, that Matlab's train() function can use either MEX or Matlab http://www.mathworks.com/help/nnet/ug/optimize-neural-network-training-speed-and-memory.html Also it is said, that memory ...
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0answers
15 views

Refresh weights of neural network without `Configure` function in MATLAB

As you know we can use configure function in MATLAB to initial weights and biases but this function configure all networks (weights/biases + other properties). I want after configuring network using ...
0
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1answer
21 views

Why there isn't any sub-stream capability of mersenne twister random number generator in MATLAB and how we can solve it?

I'm using parallel computing and i need different sub-streams (independent sub-stream) of random numbers in every worker (logical core) in MATLAB. When i set sub-streams to mlfg6331_64 or mrg32k3a My ...
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0answers
19 views

Encog: weights keep increasing

I am trying to train a neural network with Encog library. Dataset (~7000 examples) before splitting (into training (60%), cross-validation (20%) and testing (20%)) is linearly normalised so that it ...
0
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1answer
32 views

Failure prediction from sensor data using Machine Learning

I am going to do a research project which involves predicting imminent failure of an engine using time data obtained from sensors. The data basically contains the readings of various embedded sensors ...
0
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0answers
16 views

getting the neural network array,

I have 8 images(50x50). I save these images inside an array named images[8*2500] where the number 2500 represents the amount of pixels for an image and the number 8 the total amount of images that I ...
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0answers
2 views

How to see data division of nftool, Train, Test, and Validate?

I have used nftool to do neural network on a time series with 6400 elements. The portions of train, test, and validation are 70%, 15%, and 15%, respectively. As the method od data division of nftool ...
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0answers
13 views

Reference to non-existent field 'xoffset' while tring to train neural net in parallel on Matlab

I am unable to train neural network in Matlab if trying to use parallelization. The code is follows: net = feedforwardnet(hiddenLayerSize, 'trainbfg'); net.inputs{1}.processFcns = ...
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0answers
23 views

fuzzy neural network implementation [closed]

I want to implement fuzzy-neuro model in matlab.Anfiseditor in matlab is a good way. I have a problem,My teacher asked me to use mamdani inference but anfis does not support mamdani. How can i ...
3
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2answers
93 views

Is the bias node necessary in very large neural networks?

I understand the role of the bias node in neural nets, and why it is important for shifting the activation function in small networks. My question is this: is the bias still important in very large ...
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0answers
34 views

Set and get randstream in MATLAB parfor loops [duplicate]

Suppose that we have this parfor loop that calling from another m-file: function XX=cost(---) stream=RandStream.create('mrg32k3a','NumStreams',NumOFLoops,'Seed','shuffle','CellOutput',true); parfor ...
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2answers
32 views

Single layer perceptron training? [closed]

I have been trying to train the following network and get suitable weights, but it keeps on running. Can anyone tell me what could possibly be wrong in the code? Here {8, 1} is input, {-1}} is ...
13
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2answers
383 views

Machine learning for monitoring servers

I'm looking at pybrain for taking server monitor alarms and determining the root cause of a problem. I'm happy with training it using supervised learning and curating the training data sets. The data ...
3
votes
1answer
41 views

OpenCV MLP with Sigmoid Neurons, Output range

I have searched for answers here on SO and google to the following question, but haven't found anything, so here is my situation: I want to realize a MLP that learns some similarity function. I have ...
0
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1answer
23 views

Choosing between the SVM and the MLP classifier

I have to train a classifier that would be able to discern 6 possible classes of the input samples. I also have a Cost Matrix to estimate the classifier's performance with and without considering the ...
1
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1answer
57 views

Newbie to Neural Networks

Just starting to play around with Neural Networks for fun after playing with some basic linear regression. I am an English teacher so don't have a math background and trying to read a book on this ...
1
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1answer
51 views

Fitness evaluation and training set in realtime simulation neuro-evolution

I am attempting to train a neural network to control a simple entity in a simulated 2D environment, currently by using a genetic algorithm. Perhaps due to lack of familiarity with the correct terms, ...
1
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1answer
32 views

MATLAB neural network weight initialization in multiple loops

First check this link : http://www.mathworks.com/matlabcentral/newsreader/view_thread/331830#911882 This a proposed method to create a neural network with train/test/validation data sets. I have a ...
0
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0answers
16 views

Error when using neural networks (CARET package)

Code: library(nnet) library(caret) #K-folds resampling method for fitting model ctrl <- trainControl(method = "repeatedcv", number = 10, repeats = 10, allowParallel = TRUE) ...
0
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0answers
9 views

Passing data to preparets in neural network matlab tool

I have a net trained with an input delay of 8 and an output delay of 9. I need to use the net with new data to forecast from 1 to 10 consecutive days. But how i need to create the input and target. I ...
0
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0answers
29 views

Code for 3 class classifier single layer perceptron in MATLAB

For identifying 3 classes, I have taken 3 single layer perceptron such that, If data belongs to class 1, then perceptron1=1, perceptron2=0,perceptron3=0 If data belongs to class 2, then ...
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0answers
19 views

Fast multiple 3D shape comparaison

I recently bought a kinect for Windows and I want to use it to compare multiple object in 3D. I want my program to be able to say " this look like an apple " ( That was an example ^^ ). I would like ...
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1answer
34 views

Tennis matches input representation for ANNs

I have a list of tennis matches with information like time, court, surface, rank of winner/loser, winner/loser games won in set etc. I plan to train a MLP network with this information (using PyBrain) ...
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0answers
9 views

How to use narxnet while no target values is available?

Here is a code that I used to train a Narxnet network: inputdelays=0; feedbackdelays=1:2; hiddensizes=[5]; net=narxnet(inputdelays,feedbackdelays,hiddensizes); view(net) X = con2seq(input_train); T= ...
0
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1answer
27 views

Neural network topology for object recognition on aerial photos (computer vision)

My objective is to recognize the footprints of buildings on aerial photos. Having heard about recent progress in machine vision (ImageNet Large Scale Visual Recognition Challenges) I though I could ...
0
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2answers
47 views

Can neural networks approximate any function given enough hidden neurons?

I understand neural networks with any number of hidden layers can approximate nonlinear functions, however, can it approximate: f(x) = x^2 I can't think of how it could. It seems like a very ...