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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54 views

SciLab Neural Network Synchronous Training and Live Use

I'm new to SciLab and Neural Networks and was wondering if it is possible to train a neural network continuously and then when it is needed to be used against real values, pause the training, run the ...
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322 views

R Neural Network package with multiple hidden layers

I have been using Neural Network on matlab, but am not able to locate a package which allows multiple hidden layer for NN. The R Machine Learning Task View suggests the `nnet' package but that allows ...
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96 views

Neural network help on game of continuous snake

I'm trying to implement an AI for a game of 'continuous snake'. It's very different from a normal snake game, at least as far as the AI is concerned. Basically, the snake drives a bit like a car and ...
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488 views

How to Crop Multiple Objects in an Image [MATLAB]

I'm freshman to MATLAB & Developing "Rice Quality Identification" Application using MATLAB & NEURAL NETWORK .For my Guidance I'm preferring this Research Paper This Application Comprises ...
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27 views

Neural Network feature priority

there is a kind of NN that can give importance for some inputs ? I have a problem like (actualy solved by 2 different NNs): SITUATION 1) inputs: 1 0 1 0 1 0 1 : target: 23 SITUATION 2) inputs: 1 ...
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25 views

Suggestions For Additional Neural Network Test Cases

Was wondering if anyone can provide some good test cases for testing multilayer neural netowrks, beyond the basic XOR problem. This is for use with Backpropogation, but hopefully they will be ...
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581 views

Using neural network for classification in matlab

I'm working on optical character recognition problem. I've successfully extracted features which is a [1X32] matrix (I've extracted 32 features from each segmented character). I've the complete ...
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1answer
103 views

Neural network input mistmatch (Iris Dataset)

I currently have an error that i can't pass this is the short code and everything needed in order to have a general idea about my problem clear; close all; clear ; load fisheriris; m = meas; d = ...
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20 views

Difficulty in understanding application of recurrent network for classification

Feedforward vs Recurrent neural network intuitively describes the concept. Then there is fuzzy recurrent network. Can somebody please explain how to perform pattern classification using fuzzy ...
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44 views

MATLAB neural network classification different results

i used MATLAB function "patternet" to create 1 layer (10 neurons) neural network classifier to classify data into 3 classes with default attributes (training function, initialization and ect.). ...
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380 views

Fundamental difference between feed-forward neural networks and recurrent neural networks?

I've often read, that there are fundamental differences between feed-forward and recurrent neural networks (RNNs), due to the lack of an internal state and a therefore short-term memory in ...
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36 views

Trouble defining Neural Network

I'm trying to use Encog to define an artificial neural network in order to process this dataset (6 inputs, 2 yes/no outputs), but I can't get any lower than ~65% error. My steps were: Normalize the ...
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16 views

A bank of filters to detect image primitives

I have to train a convolution neural network. It has a set of N correlation filters (7x7 pixels each) as its first layer. This filters should detect simple primitives like differently tilted lines, ...
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114 views

Explanation of the Regression Plot in the Matlab Neural Network Toolbox

What does the Regression Plot in the Matlab Neural Network Toolbox show? I thought I understood it when I looked at a univariate regression plot, but I've just plotted one for multivariate regression, ...
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22 views

Real-time simulate reccurent NN

I want use reccurent or time delay network for modelling in several dynamic system. In documentation of matlab i get code for creation and learning neural network. For example: [X,T] = ...
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361 views

How to create feature vector for neural network(MATLAB)

I'm trying to use neural network(multilayered NN) to help me to classify input image into its respective class(3 classes). I have done as below: (1)read input image(image).. (2)apply canny edge ...
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18 views

Finding deltas for different functions - Neural Networks

I have created a program for a feed forward neural network that uses back propogation. I am using the sigmoid function as the activation (1/(1-e^-x)), and to calculate the deltas I am using the ...
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35 views

Can non-monotonic activation function neural networks be trained in the same way as monotonic activation function neural networks?

I have created a sigmoid based neural network that learns successfully using a backpropagation algorithm, with the error calculation (target-output) * output * (1-ouput). However I wanted to try ...
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31 views

The e-puck_matlab program running without stop

I used e-puck robot that avoid obstacle using braitenberg in Matlab code, the program is running without any stop, i try to put the counter such like: counter = 1; while wb_robot_step(TIME_STEP) ~= ...
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63 views

recurrent neural networks and gene network inference

I am trying to implement backpropagation through time using the algorithm in this paper: ...
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1answer
75 views

Can the backpropagation algorithm change the sign of weights?

I have a spare time project which involves training a neural network with a dynamic data set. I think I've implemented it correctly, and for some starting networks I can train them to match sample ...
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63 views

Perceptron Learning

Learning Perceptorn can be easily accomplished using the update rule w_i=w_i + n(y-\hat{y})x. All resources I read so far say that the learning rate n can be set to 1 w.l.g. My question is the ...
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80 views

Finding Neural Network ROC in R

I am trying to create an ROC plot for a neural net. I can't seem to get it to work. I get the error. I am using the packages nnet, and verification for the ROC curve. Error in text.default(DAT[id, ...
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15 views

When training a neural net what could cause the net to diverge from the target as opposed to converge?

I'm using a stochastic (incremental as opposed to batch) approach to training my neural net, and after every 1000000 iterations I print the sum of the errors of the neurons in the net. For a little ...
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74 views

Undefined Cost Neural Network

I developped a FeedForward Neural Network in C++ and I am currently trying to debug my code in various configurations. I noticed that in some cases, using Gradient Descent to minimize the loss ...
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29 views

neural networks in R, nnet works but errorest from ipred doesnt

I can run the following line in R just fine. X and Y are just some strings that I use to iterate over my variables of interest: neural <- nnet( get(paste(x,y,sep="")) ~ get(paste("l",i, ...
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42 views

Regarding “number of parameters” in Neural network [closed]

NN, when they talk about "number of parameters" in papers, they usually mean weight matrixes for each layer and bias for each unit with activation function? There are no other parameters needed for NN ...
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33 views

Is there any implementation of neural networks on hadoop using Map-Reduce

I found only a GSOC proposal of implementing neural network for map-reduce. https://issues.apache.org/jira/browse/MAHOUT-364 Is there any such proposal or implementation of the same.
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74 views

Oscillation in neural network training

I've programmed a fully connected recurrent network (based on Williams and Zipser) in Octave, and I successfully trained it using BPTT to compute an XOR as a toy example. The learning process was ...
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76 views

Neural Network Not Learning, Converging on one output

I am trying to program a neural network and I am now testing it. I have simplified it down to 2 training examples with 2 inputs and 1 input. Input : Output 1,0 : 1 1,1 : 0 I cycle ...
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43 views

Neural Network Process - Updating weights after each training set

When creating a neural network, do I update the weights after each run of forward then back propogation? Or do I just keep the random weights and update the Delta variables? I am looking at slide 8 ...
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77 views

Caret Package with “nnet” see weight of hidden layer

I spent a long time searhing an answer for my question but i didn't found anything. I'm using Caret Package to perform a model thrught the "nnet" method. It's working but i need to see weights used ...
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41 views

Multilayer Perceptron backpropagation

I'm trying to figure out a question that asks why training times in MLP nets increase dramatically if unnecessary additional layers are added between the inputs and outputs. (It's not a HW question) ...
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48 views

Neural Network Exponential Transfer Function

I am currently working on regression forecasting problems in water resources where I am trying to produce bootstrapped based prediction intervals using the Extreme Learning Machine (ELM) framework ...
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28 views

Python - Sudoku Neural Network Inhibitory Connections

So I am trying to create this NN to solve Sudoku's. So far I have created this Node class called Num and I made a node representing each number. So in each tiny box would contain 9 nodes, in each ...
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13 views

Is there a standard way to get deviations/error bars on a rSNNS model

Is there a standard way to get error bars/deviations from neural network predictions? I understand this is a problem with fitted models but an approach from intuition would suggest smaller error bars ...
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69 views

3D-Space learning and prediction Matlab

I want suggestions about learning and predicting some object's position before hitting the one out of four sides of wall, in Matlab. I have some priority according to side of wall, and of-course all ...
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191 views

classification of glaucoma images using neural networks

I had extracted some features like homogenity, energy, entropy, contrast, standard deviation and correlation from the fundus images of given testing and training data set. I had normalized the data ...
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1answer
111 views

In Matlab, How to use already trained neural network on real time values?

Using nntool(Neural Network Manager) in Matlab, we have created a neural network named network1, the network type is Feed Forward backprop. Training function is TRAINLM, learning function is LEARNGDM, ...
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41 views

Neural Network Training - 2 Sample Comparision Java

I want to train a neural network by giving it two samples and having it return a higher score for the better of the two samples. When I train it, I don't know the score for a given sample, but I can ...
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25 views

encoding data for spiking neural network

How can I encoding data for spiking neural network. Firstly, I implement spikeprop algorithms. it test with XOR problems. It is encoded data from [0,1] to [0,6] Original 0 0 --> 1 0 1 --> 0 1 0 ...
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139 views

Matlab Neural Net: tansig always returns positive value

I am undertaking a classification task, but face the problem that when I run my patterns over the trained net, I only get a +ve classification (equiv to logsig always > 0.5), whereas I expect tansig ...
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15 views

Will an average of neural net weights be as effective as one humungous similation?

I'm planning to write a neural network to predict the closing price on day n, using open, high,low,close,& volume for days n-10 to n-1, and doing this for apx 800 days. I was going to use an 'all ...
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1answer
140 views

Function approximation(Parabola) using ANN in Matlab

I want to use a multi-layered perceptron to approximate a simple parabola. I've seen the code used for fitnet() but it doesn't make sense to me. From what I understand, I give the MLP a limited ...
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213 views

What features to extract for handwritten character recognition?

I am working on handwritten character recognition using neural networks. Currently I have segmented each character from the image. Now I want to extract features of each character so that I can feed ...
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14 views

Using the Sum of neural network outputs as exepected number of positives

I'm working with a single-output neural network using the logistic activation function to classify individuals into classes A and B. The output for a given individual can be interpreted as the ...
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247 views

Replicator Neural Network for outlier detection, Step-wise function causing same prediction

In my project, one of my objectives is to find outliers in aeronautical engine data and chose to use the Replicator Neural Network to do so and read the following report on it ...
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91 views

can't run dynamic backpropagation in neuroph studio 2.85

I'm new to neural networks. I've created neural network in neuroph studio 2.85. There are 14 inputs neurons, 14 hidden neurons and 3 output neurons. I've used dynamic backpropagation as learning ...
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208 views

how to re-train a radial basis network

I am creating a Radial Basis Neural Network using the function newrb in matlab. A simple version of my code is as following: Xd = -1:.1:1; T = [-.9602 -.5770 -.0729 .3771 .6405 .6600 .4609 ... ...
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Matrix input - neural netowrk toolbox - matlab

I have following problem : -my input matrix is 25x38 ( each vector has 25 elements and I have 38 sets of vectors ) -my target vector is 1x38 ( each input vector produces one single scalar output ) ...