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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Neural Netwoks using BPN

I am trying to implement back propogation technique in neural network to do a 24h ahead forecast of temperature. Each record in my dataset contains a list of attributes like today's temperature, wind ...
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1answer
18 views

neural network for classification

I am trying to do classification using neural network. I have written the following code. Can anyone tell me whether this is correct or wrong? Thanks for your time. %n1 to ...
2
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0answers
95 views

Neural Network System Identification

I am trying to implement a Neural Network to identify a Nonlinear System. I have implemented a very simple system in simulink and on the basis of examples of its input and output I would like to have ...
-4
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0answers
13 views

Back propagation neural network classifier in c++ [on hold]

I am trying to implement a project with back propagation neural network classifier. A threshold is set to a certain value and it will give a binary output YES(1, if it is <= to the threshold value) ...
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1answer
24 views

How to save weights of a neural network

I am facing problem in saving weights of a trained neural network in a text file. Here is my code def nNetwork(trainingData,filename): lamda = 1 input_layer = 1200 output_layer = ...
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0answers
6 views

NN converges with binary input&target, but not with bipolar ones. Is it normal?

I studied that bipolar input and target are better then binary ones. And above all, i'm using a bipolar sigmoid with binary input and target, how is it possible that it converges all the same? The ...
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1answer
29 views

How do I improve my Neural Network output?

I have a data set with 150 rows, 45 features and 40 outputs. I can well overfit the data but I cannot obtain acceptable results for my cross validation set. With 25 hidden layers and quite large ...
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0answers
18 views

Getting more error in prediction after using PCA with Neural Networks?

I am using PCA before feeding the training set into a neural network. It reduces 13 features down to 8 and trains over 2200 training sets. The MAPE I get with this is close to 2.5 - 2.6 %. If I train ...
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1answer
33 views

Approximation of best settings for a neural network?

I am a programming enthusiast so please excuse me and help fill any gaps.. From what i understand good results from a neural network require the sigmoid and either learn rate or step rate (depending ...
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0answers
16 views

Which activation functions are available in RSNNS package apart from Logistic?

The CRAN document on RSNNS only mentions Act_Logistic as an example for hidden layer activation function. Is there a list of all available activation functions in RSNNS somewhere? I was specifically ...
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0answers
31 views

How to load training data in a Neural Network [on hold]

I have been following Andrew NG's course on Machine learning but I am using python for implementing the algorithms. I have successfully written the code for Neural Network as per ML course on Coursera ...
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2answers
30 views

Binary Neural networks classification to Multi class Classification

How to edit the existing binary classification of Neural Networks to Multi class Classification. I followed Sochastic Gradient method for binary neural net classification. What all are the ...
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1answer
32 views

encog java exporting network weights

I am using encog to do some of my university assignments and I would like to export a list of all the connections in the networks and their associated weights. I saw the dumpWeights() function that ...
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38 views

Training neural network for Snake game Python [on hold]

I am working on a neural network (ANN) using genetic algorithm, and the program is running pretty well, but there's a problem. The ANN is used in a game that is very similar to "Snake". But the ...
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4 views

How to save .nnet File in Neuroph Studio

In NeurophStudio I created a neural network for image recognition but when i press the 'save' button under File menu (File->Save) then it just save it without informing me where it is saving it. Even ...
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1answer
23 views

How do I alter the weights in this simple neural network?

I'm trying to learn about neural networks, but the material available online is pretty dense, and I just want to understand what happens in this particular, simple case. That will help me move onto ...
1
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1answer
23 views

How to create learning curve from cross-validated data?

I have an algorithm which uses 10 fold cross validation. Within the training set, I use one of the folds for validation of the training model before using the learned model on the fold held aside for ...
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0answers
18 views

How is the activation function calculated for each neuron in offline backpropagation?

In offline backpropagation, the error is accumulated as every training example is computed and the delta in the backpropagation rule (the weight modifier) is computed for all the training examples. ...
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0answers
6 views

how to give fuzzy min max neural network hyperbox matrix to WEKA as input

I have created fuzzy min max neural network for classification using IRIS data set and currently i am getting the 2 matrices having min and max point values for hyper boxes. Now i want to give those ...
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0answers
44 views

How to speed up 2D 'full' convolution (multiple kernels) with matrix multiplication?

I'm working with convolutional deep neural networks (CRBM in particular). I need to perform several 'valid' convolution and several 'full' convolutions. I need to optimize their speed. I'm working ...
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21 views

Defining inputs and fitness in ANN with GA Python

I am attempting to create a program that can find the best solution for winning a game using NN and I was hoping to get some help from the wonderful community here. The game is a strategy war game, ...
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1answer
18 views

Encog mean value with one input and one output

I want to build a neural network with Encog that have 1 input (0/1 or true/false) and 1 ouput (double value) that calculates a mean value if criteria was specified (1 as an input) and 0 if criteria ...
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0answers
38 views

Jordan Neural Network Mathematics Equations Description

I am planing to build a Jordan and Elman nerual network by MatLab to verify the precision of Solar Radiation prediction. Now I face a problem about Jordan neural network, I found it's network ...
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0answers
14 views

How to use Stanford RNN Dependency parser in Python?

How to use Stanford RNN Dependency parser in Python? Apparently there is no Python wrapper that uses RNN based dependency parser.
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1answer
21 views

Where do filters/kernels for a convolutional network come from?

I've seen some tutorial examples, like UFLDL covolutional net, where they use features obtained by unsupervised learning, or some others, where kernels are engineered by hand (using Sobel and Gabor ...
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0answers
20 views

Can i integrate neural network frameworks like “AForge” with tessaract OCR to improve its accuracy

Can i integrate neural network frameworks like "AForge" with tessaract OCR to improve its accuracy. Would it be a good alternative to "cube mode". But as i know "AForge" has no API for c++. What are ...
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14 views

Fitting Dataset with a Neural Network in MATLAB

I am going to run datasets such as: THE MNIST DATABASE of handwritten digits The Street View House Numbers (SVHN) Dataset The CIFAR-10/100 dataset on neural network using matlab but, I couldn't ...
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1answer
27 views

Matlab Neural Network Memory Issue?

i have a question regarding the Matlab NN toolbox. As a part of research project i decided to create a Matlab script that uses the NN toolbox for some fitting solutions. I have a data stream that is ...
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30 views

whate is the reasons that make multilayer perceptron with backpropagation algorithm classify all samples to one class

I need a help with neural network task i applied multilayer perceptron with backpropagation algorithm ,i am sure that all steps of training and learning are completely right but the problem is that ...
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0answers
17 views

Java lib or function that is similar to scipy.optimize.minimize()?

I m programming a neural network. I m at the step where I implemented the cost function and calculated the gradients. Now I need to optimize the paramters that minimize my cost function. Therefore I ...
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43 views

Neural Network trained using back propagation solves AND , Or but doesn't solve XOR

I have implemented back propagation algorithm to train my neural network. It solves AND & OR perfectly, but when I try to train to solve XOR, the total error is really high. The network topology ...
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0answers
36 views

Image processing with AI using Neural Networks [on hold]

How to implement a Back propagation Neural Network classifier in C++? The neural network will just classify if the two images being compared is of the same person or not. I have already extracted an ...
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0answers
17 views

Python Pylearn2: sigmoid output for detection class returns incorrect performance

Summary of my problem: I have a detection (binary classification, unbalanced problem). I use a sigmoid to classify samples. Reported f-score, precision and recall seem to consider both classes, e.g. ...
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1answer
32 views

Is there a Python wrapper for Stanford Neural Net based dependency parser? [closed]

I know about the Python wrappers for Stanford CoreNLP package but this package does not seem to contain neural net based dependency parser model. Rather it is present in Stanford-parser-full-****-- ...
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0answers
19 views

Theano install error on Windows

I am trying to install theano on windows but I keep getting same error report such as: import theano Traceback (most recent call last): File "", line 1, in import theano File ...
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0answers
12 views

OpenNN returns scaled output values

I have an issue with OpenNN, and unfortunately the documentation is lacking quite a bit. I am trying with some randomly generated data to create a Neural Network, and the results I get from the code ...
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0answers
12 views

Library neurolab training newff

I am pretty new in using python and neurolab and I have a problem with the training of my feed forward neural network. I have built the net as following: net = nl.net.newff([[-1,1]]*64, [60,1]) ...
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1answer
24 views

Can inputs into Neural Network be real-valued?

I am using a sigmoid function. My input values for all inputs range from .88 to 1.06. Is it okay to use real valued inputs in this range? Every example I have found on neural networks uses binary ...
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0answers
21 views

Artificial Neural Networks Matlab [closed]

I have trained neural network using some data.However I am getting errors in the predicted values.I have now been asked to vary the weights to get more reliable results. How should i do that. I have ...
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1answer
34 views

Does Tessaract OCR uses neural networks as their default training mechanism

Sorry this must be probably a dumb question. but i am fairly new to machine learning and Tessaract OCR. I have heard that Tessaract OCR can be trained. What i need to know is does Tessaract OCR ...
0
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1answer
73 views

Why does my neural network Unlearn what it learned?

I copied some of this source code in C#, from another web site and tested the neural network by itself with only a few inputs and two outputs and a hidden layer consisting of 4. When the neural ...
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1answer
39 views

How can MATLAB's narnet be used to predict future values of a variable

Given a set of past values of a variable, how can future ones be predicted with MATLAB's narnet? An example given my MATLAB's Neural Net Time Series App is as follows: T = oil_dataset; net = ...
2
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0answers
19 views

How to find dynamically the depth of a network in Convolutional Neural Network

I was looking for an automatic way to decide how many layers should I apply to my network depends on data and computer configuration. I searched in web, but I could not find anything. Maybe my ...
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votes
1answer
21 views

Concept of validate for neural network

I have a problem with concept of Validation for NN. suppose I have 100 set of input variables (for example 8 input, X1,...,X8) and want to predict one Target(Y). now I have two ways to use NN: 1- use ...
0
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1answer
17 views

Non-linear regression using custom neural network in MatLab

I am very new to MatLab. I got a task for modelling non-linear regression using neural network in MatLab. I need to create two-layer neural network with: layer 1 is N neurons with sigmoid activation ...
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0answers
12 views

Iterative training in NN toolbox (Matlab)

I am going to make a brief explanation so you can understand better my problem. I have multiple sequences of 119 3D points. Each sequence of 119 3Dpoints corresponds to an epileptic seizure of a ...
0
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1answer
34 views

Simulate default patternnet with feedforwardnet in Matlab?

I got very different training efficiency with the following network net = patternnet(hiddenLayerSize); and the following one net = feedforwardnet(hiddenLayerSize, 'trainscg'); ...
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20 views

What transfer function is used in output layer of patternnet in Matlab?

What transfer function is used in output layer of patternnet in Matlab? Is is described by the following icon in nntraintool:
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2answers
14 views

How to identify moving points together in the time series data

I have a time series of points i.e getting x and y coordinates from some api at some regular intervals and I want to figure out which are the points which are actually moving together on looking their ...
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votes
1answer
23 views

Stochastic gradient descent for regression with Shuffle data performs better than unshuffled. Why?

I am using stochastic gradient descent (SGD) algo for a regression task and train the network for multiple iteration of the input data points. I found that shuffling of the input data gives much ...