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.

learn more… | top users | synonyms (2)

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2answers
51 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 ...
1
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1answer
117 views

pybrain image input to dataset for Neural Network

I'm trying to write a neural network that (after being properly trained) identifies certain road signs and returns a different output for each type of sign. Before I started to train my network, I ...
0
votes
1answer
24 views

Is deep learning only useful for large sample data, if we have only middle size data is it necessary to use deep learning [on hold]

Is it useful to do modeling using deep learning for small or middle size data? Are other machine learning methods or statistical methods better than deep learning for not much big data? We think it is ...
1
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0answers
23 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 = ...
-6
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0answers
16 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
18 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 ...
0
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0answers
15 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
1answer
34 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 ...
0
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0answers
49 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 ...
0
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0answers
25 views

Best-first search + Neural Network [on hold]

I have implemented a best-first search algorithm with a binary tree in Java. I want to know if is possible to use a neural network in conjunction with the search algorithm, so the evaluation function ...
1
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0answers
29 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, ...
1
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1answer
22 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 ...
1
vote
1answer
30 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 ...
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0answers
16 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
votes
0answers
10 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 ...
6
votes
1answer
246 views

Audio signal source separation with neural network

What I am trying to do is separating the audio sources and extract its pitch from the raw signal. I modeled this process myself, as represented below: Each sources oscillate in normal modes, often ...
0
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0answers
38 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 ...
8
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3answers
982 views

Time Series Ahead Prediction in Neural Network (N Point Ahead Prediction) Large Scale Iterative Training

(N=90) Point ahead Prediction using Neural Network: I am trying to predict 3 minutes ahead i.e. 180 points ahead. Because I compressed my time series data as taking the mean of every 2 points as one, ...
0
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2answers
141 views

Matlab Neural Net - trouble with divideblock as divideFcn

I'm doing timeseries prediction with Matlab's NN toolbox using a layer-recurrent network (layrecnet) with layerDelays = 1:2 and hiddenSize = 5 (I've used a few other sizes for the one hidden layer ...
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0answers
5 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
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0answers
20 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 ...
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0answers
42 views

music sheets analysis project using Neural Network c# [closed]

I'm doing a project on analysis of music sheets, I know nothing about ANN and don't realy have the nerves to learn it, so I download ...
0
votes
2answers
125 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
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0answers
6 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
34 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
56 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 ...
0
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0answers
36 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, ...
9
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5answers
10k views

Data sets for neural network training

I am looking for some relatively simple data sets for testing and comparing different training methods for artificial neural networks. I would like data that won't take too much pre-processing to turn ...
0
votes
1answer
37 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
1answer
27 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 ...
0
votes
0answers
25 views

use a trained neural network from matlab in python [closed]

I tried to use machine learning librairies but i'm not happy with the results, also i used to use matlab neural network toolbox. Is there a way to use a trained neural network from matlab in python ...
0
votes
0answers
15 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 ...
3
votes
1answer
962 views

how to feed pybrain ffn with one entry (to already trained network)?

I need to train network and then feed it with test data one by one. Is there some example or doc including it? To achieve that I serialized trained network and I use it with every new incoming entry. ...
1
vote
1answer
443 views

Pybrain Neural Network failing to train correctly

I've been working on creating a neural network using pybrain, and after training it with propagation for some reason it fails to train my network. Any data set I use with more than two classes in the ...
2
votes
1answer
73 views

What is the network size limit in PyBrain?

I have recently constructed a neural network in PyBrain, but ran in to a problem of my network being to big. So what are the exact limits in PyBrain? How can I construct a network with 750000 ...
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votes
0answers
17 views

Where can I find neural network classifier in WEKA tool for machine learning? [closed]

Where can I find neural network classifier in WEKA tool for machine learning? I have searched in each and every filter....plz help...
0
votes
0answers
30 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
1answer
21 views

Replace the performance function of a Neural Network

i'm trying to replace the performance function of a neural network with my implementation. i created a file: function perf = MyPerformanceFunction(e, x, pp) a = struct('regularization',0, ...
-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
19 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 ...
1
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0answers
39 views

Can neural network fail to learn a function? and How to choose better feature descriptors for pattern recognition?

I was working on webots which is an environment used to model, program and simulate mobile robots. Basically i have a small robot with a VGA camera, and it looks for simple blue coloured patterns on ...
0
votes
1answer
28 views

Modify XOR Neural network to other type of Neural networks

I downloaded a neural network program written in PHP. It is for the XOR gate. I want to modify it into a program working for other data sets. Is it possible by just changing the training data set. I ...
0
votes
1answer
34 views

Index gymnastics inside a Theano function

I am using Theano to implement a neural n-gram language model along the lines of Bengio et al 2003. This model uses a distributed representation for words, and I'm having trouble writing a symbolic ...
2
votes
0answers
22 views

Theoretically, can everyday computing tasks be broken down into ones solvable by a neural network?

MIT Review recently published this article about a chip from IBM, which is more or less a Artificial neural network. Why IBM’s New Brainlike Chip May Be “Historic” | MIT Technology Review The article ...
3
votes
0answers
192 views

Rprop implementation

I'm trying to implement rprop by using my old backprop code as a basis. I'm working on a perceptron with one hidden layer. Rprop algorithm is fairly simple, but I haven't figured all things out. This ...
1
vote
1answer
121 views

Having some troubles with the PyBrain Neural Network regression function

I would appreciate a some insights into the workings of the PyBrain's neural network. I have a dataset of different household features that correspond to a certain household income. The task is to ...
4
votes
3answers
1k views

Predicting Football match winners based only on previous data of same match

I'm a huge football(soccer) fan and interested in Machine Learning too. As a project for my ML course I'm trying to build a model that would predict the chance of winning for the home team, given the ...
3
votes
1answer
3k views

Using nntool [MATLAB] from command line

I have this code: in = [5 columns of data-points]; out = [1 column of data-points]; net = newfit(in,out,5); net = train(net,in,out); now I want to access the error variable that is generated (so ...
0
votes
1answer
26 views

Index exceeds matrix dimensions

X= [P(1,:,:); P(2,:,:); P(3,:,:)]; y= P(4:end,:); indTrain = randperm(4798); indTrain = indTrain(1:3838); trainX= X(indTrain,:); trainy = y(indTrain); indTest = 3839:4798; indTest(indTrain) = ...
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votes
1answer
39 views

Theano conv2d and max_pool_2d

When implementing a convolutional neural network (CNN) in theno one comes across two variants of conv2d operator: theano.tensor.nnet.conv.conv2d theano.tensor.signal.conv.conv2d And an ...