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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0answers
19 views

R d3Network humanoid! Play with me

I made a humanoid in R using a network plot from the library d3Network. Looking for more stuff to do with it. You can download the file below, or here's the code to make your own: library(d3Network) ...
-1
votes
1answer
21 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) ...
0
votes
0answers
5 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
votes
0answers
11 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
votes
2answers
29 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 ...
0
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0answers
11 views

Detect the category of a product from product attributes using AI

I have a list of products (700,000+) in an excel file and I want to import this data to my database. On my system, each product should be assigned a category and I want to develop an importer desktop ...
1
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1answer
12 views

How do you normalize data to feed into a neural network that lies outside the range of the data it was trained on?

I have an input into a neural network used for classification, that was trained on a data set where the values were from 1-5, for example. And then I normalized all of this training data so that it ...
-1
votes
1answer
15 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? ...
0
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0answers
9 views

Cross validation for neural networks (train,test,validation)

As you know k-fold cross validation separating data to train and test but in neural network architecture we need train, test and validation data sets (crossvalind funcion in MATLAB R2014a). How can i ...
-3
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0answers
19 views

Neural Network for Supervised Learning [on hold]

How would I choose the weights of the inputs and the bias and learning rate? Is there any way to determine them by looking at the data or just random? Based on what I will choose the activation ...
0
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0answers
13 views

MATLAB train function stops immediately

I'm new to Neural Networks and I am trying to train an NN by simply loading two different time series data x and y, which are 300 x 1 vectors. x is the set of values of the predictor variable, and y ...
0
votes
1answer
15 views

Use colors or arrows to denote direction for d3SimpleNetwork for R

For R and D3Network, consider the following: library(D3Network) NWD <- head(Europe) d3SimpleNetwork(NWD, file="a.html") a <- c("A", "B", "C", "AA", "BB", "AA") b <- c("B", "C", "A", "BB", ...
-4
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0answers
29 views

error is significantly greater at the beginning of the classes in neural network

In the training pattern the error is significantly greater at the beginning of the classes and the error does not converge in 50000 epochs. i have adjusted my data too many times but the error pattern ...
3
votes
3answers
42 views

How should I interpret a neural network that won't overfit?

I'm running some experiments on various classification datasets using WEKA's MultilayerPerceptron implementation. I was expecting to be able to observe overfitting as the number of train iterations ...
-2
votes
0answers
14 views

Creating neural network with Matlab

i am a Matlab new user. My data are this form : in1 in2 in3 in4 in5 in6 in7 out1 out2 out3 out4 out5 200 145 114 5545 5544 545 555 424 245 ...
1
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1answer
33 views

how to set learning rate for training neural net

Referring to this answer on choosing number of hidden layers and units in a NN: http://stackoverflow.com/a/10568938/2265724 The post suggests adding the number of hidden units until the ...
0
votes
1answer
18 views

Neural Network convergence speed (Levenberg-Marquardt) (MATLAB)

I was trying to approximate a function (single input and single output) with an ANN. Using MATLAB toolbox I could see that with 5 or more neurons in the hidden layer, I can achieve a very nice result. ...
0
votes
0answers
12 views

Using neural network to perform OCR [closed]

I'm looking for guidance on how to implement letter recognition using neural network (if you have a different technique it's fine too), I'm asking the user to draw a specific letter and I need to ...
0
votes
0answers
12 views

how to implement own error function while using neuralnet package in R?

I am trying to implement a customized error function in package neuralnet in R. Normally ’sse’ and ’ce’ which stand for the sum of squared errors and the cross-entropy are used to calculate error.Can ...
1
vote
1answer
59 views

Neural Network in Swift

Well, long story short, I was bored and decided to try to learn about Neural networks. I have been doing C# for a year and now that I am learning Swift, I preferred to continue with that language, and ...
0
votes
0answers
18 views

Customize mapminmax for Matlab neural network

I'm using a logsig transfer function in a neural network. I read that scaling data to [0 1] is useful when using a logsig transfer function. The default for mapminmax in scaling to [-1 1] and is ...
-2
votes
0answers
33 views

Backward Propagation

Above, I have a very simple image of a neural net. I have called the weights coming out of layer 2 "u" instead of of "w" to get rid of layer indexing for this example. Can you walk me through ...
0
votes
1answer
27 views

matlab fitting function in genetic algorithm (ga function) doesn't accept output

Hi everyone i'm new to matlab and i have some problem with the ga function. I must find the best integer values of input and output delays for a net applied to a time series problem using genetic ...
-1
votes
1answer
20 views

Neural network fitting tool

i have built my first neural network in matlab 2009, and i've been playing around with a few datasets; it's going well so far ! I have a question regarding fitting of multiple outcomes: I have five ...
7
votes
3answers
122 views

Advice for algorithm choice

I have to do a project that tries to scan the shape of the vehicles and detect what type of vehicle it is , the scanning will performed with a sensors called “vehicle scanner” they are just 50 beams ...
-6
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0answers
18 views

apply a neural network

I write a neural network cod and I save it as myannproj I train and test it But I cant apply this. for example when I want to know class of one input I use : sim(myannproj,input) to use this ...
0
votes
1answer
29 views

Neural network input normalization by mean / standart deviation : how to do it?

I am consufed on how to normalize the inputs / outputs for a regression neural network using (Gaussian normalization ? ) mean & standart deviation normalization technique : Most importantly, I ...
1
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0answers
37 views

Octave or Matlab on Mac OS X 10.9.4

I am currently reading Simon Haykin's Neural Networks and Learning Machines, 3rd edition and I would really like to do the experiments that are present in the book. In order to do that I need Matlab, ...
0
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0answers
52 views

Convert continuous range to discrete range in optimization algorithms

I'm using a continuous optimization algorithm for optimizing neural network's number of neurons in first and second layers besides feature selection so I used this structure for converting continues ...
-2
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0answers
26 views

implementing simulated annealing in backpropagation neural network

i am trying to improve the result of my backpropagation neural network by using SA algorithm.i understand SA. i undesratand BP. the problem is that i don't understand how i can mix these two together. ...
0
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0answers
13 views

testing LVQ neural network after being trained

I created a LVQ network with 41 neurons (I don't know I did right or not, I have 125000 samples with 41 features), in fact I'm using NSL kdd dataset. here is my code in matlab, I set it train for 1 ...
1
vote
1answer
39 views

Neural Network Mini Batch Gradient Descent

I am working with a multi-layer neural network. I intend to do mini-batch gradient descent. Suppose I have mini-batches of 100 over 1 million data points. I don't understand the part where I have to ...
0
votes
0answers
42 views

How to train a full neuron model network

I've always been interested in new things happening with Neural Networking and recently IBM showed their new SyNAPSE computing system: http://www-03.ibm.com/press/us/en/pressrelease/41710.wss In this ...
1
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1answer
27 views

Artificial neural network presented with unclassified inputs

I am trying to classify portions of time series data using a feed forward neural network using 20 neurons in a single hidden layer, and 3 outputs corresponding to the 3 events I would like to be able ...
0
votes
1answer
9 views

Neural Network : extrapolate between two trainings

Is it possible to train a Network with 2 inputs : one is the data and the other is a constant that we define. We train the network with one set of datas and set the second input to '10' for example ...
0
votes
0answers
21 views

Matlab NARX : Zero feedback delay not possible?

i'm trying get my feedback delay to zero but Matlab doesn't allow me Here is the actual setup if i put this: net = narxnet(1:delay,0,50); i have and error why can't i have 0 for delay of input ...
0
votes
0answers
7 views

WEKA MLP classifier

I'm generating a model using Multilayer Perceptron on Weka for my research project. Weka shows following generated model, however, I don't know how to interpret it. How can I interpret this output ...
0
votes
1answer
139 views

How to Speed up code in matlab?

Below is my code for a neural network Forward propagation. I want to speed it up. As for loop takes time, Can any body help in correcting the code for speeding it up, like matlab says vectorzing etc. ...
0
votes
1answer
38 views

MATLAB gui freeze after running my program

I create a GUI that use Parallel computing for accelerating Neural network and SVM models. When I enable Parallel computing in my GUI all thing (MATLAB,My GUI and my code's window) will freeze and I ...
4
votes
3answers
59 views

What is the purpose of using genetic algorithm in learning an ANN

I studied the basics of learning ANNs with a genetic algorithm. I found out that there are basically 2 things you can do: Use GA to design the structure of the net (determine whether there should be ...
1
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0answers
28 views

MATLAB neural network weight and bias initializaiton

I'm creating a neural network in one part of my program and using it's weights and biases for another neural network in other part so I have the following code: net_b = patternnet(10); net_b = ...
0
votes
0answers
43 views

Classification using Matlab neural networks toolbox - image input?

I have the images of 4 different animals and need to do classification using the Matlab neural networks toolbox. In Matlab's examples (Iris), the form of input data is a 4*1 vector (sepal width, ...
0
votes
0answers
16 views

Parameter tuning on validation set, same parameters for other data set?

Currently I'm assessing the strength of several classification algorithms (Neural networks, support vector machines, k-NN, logistic regression and decision trees). I have two data sets to do this. If ...
0
votes
0answers
20 views

Scaled Conjugate Gradient - NN toolbox MATLAB

I have used MATLAB's 'trainscg' with 'mse' as the performance function and NETLAB's 'scg' with 'mse' as the performance function for the same training data set and still don't obtain the same ...
0
votes
1answer
28 views

How calculate average output probabilities in MLP or SVM in MATLAB

I have a system that find best model (best inputs and parameters of MLP/SVM) model in a financial problem for every inserted database and create a specific model for a specific data sample. I'm using ...
1
vote
1answer
45 views

Unstable output values from ANN and improving accuracy

I am trying to develop an Artificial Neural Network using PyBrain to model biological data. My ANN compiles and runs, but its accuracy value is very low, never surpassing ~62%. From a coding ...
0
votes
0answers
34 views

ANFIS trained for a classification (+1/-1) but it sometimes give large outputs (e.g. 5843 !)?

I am trying to train an anfis model to solve a classification problem. Although the target output in my dataset is (+1/-1), the produced outputs are sometimes very large. However, this problem occurs ...
-1
votes
0answers
20 views

Categorizing lists of parameters in Scikit-Learn

I'm new to Python, and my goal is to take lists of astronomical detection candidates (which could be the events I'm looking for, or they could be false alarms). Each candidate has a collection of ...
0
votes
1answer
20 views

nnet in R, 'softmax = TRUE' requires at least two response categories

I am trying to use nnet in R, and encounter a problem for using softmax. I am trying to builda three layer network, with input layer have 25 neurons, hidden layer have 25 neurons, output layer only ...
0
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1answer
35 views

Neural network - unsignificant output data for small dataset

So I am working on an implementation of a backprop neural network : I made this 'NEURON' class , as every beginner in neural network do . However, I am having weird results : you see, when the ...