Backpropagation is a common method of teaching artificial neural networks how to perform a given task.

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Artificial Neural Network

I'm creating an artificial neural network to solve a simple classification problem, there will be three layers, 7 input neurons, 3 hidden neurons and 5 output neurons. The input to the neural network ...
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Backpropagation in convolution

I am having some trouble understanding how the backpropagation is working in the convolution layers. Indeed, after calculating the error in hidden layers, we can represent it in an error image. But ...
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generating correct weights using back propogation

i am trying to build a multi layer neural network using a sigmoid activation function however i am having trouble manipulating the weights according to my back propogation algorythim. i have struggled ...
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In neural networks, why is the bias seen as either a “b” parameter or as an additionnal “wx” neuron?

In other words, what is the main reason from switching the bias to a b_j or to an additional w_ij*x_i in the neuron summation formula before the sigmoid? Performance? Which method is the best and why? ...
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Perceptron learns to reproduce just one pattern all the time

This is rather a weird problem. A have a code of back propagation which works perfectly, like this: Now, when I do batch learning I get wrong results even if it concerns just a simple scalar ...
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Java use jAudio to classify music, which features to use?

I am working on music genre classification based on Java domain. (5 classes so far: Jazz,folk,pop,classical,easylistening) The tools I have used is jAudio, dom4j, and LibSVM or BP The flow is use ...
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25 views

Using an ANN to calculate a position vector's length and the angle between it and the x-axis

I'm new to neural networks and trying to get the hang of it by solving the following task: Given a semi circle which defines an area above the x-axis, I would like to teach an ANN to output the ...
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48 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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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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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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33 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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Backpropagation: when to update weights?

Could you please help me with a neural network? If I have an arbitrary dataset: +---+---------+---------+--------------+--------------+--------------+--------------+ | i | Input 1 | Input 2 | ...
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Backpropagation with Rectified Linear Units

I have written some code to implement backpropagation in a deep neural network with the logistic activation function and softmax output. def backprop_deep(node_values, targets, weight_matrices): ...
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Performance issues when training a neural network with Encog

Basically I have a set of normalized data: First 10 columns are input parameters Last 3 columns are output parameters All data has a range values from 0 to 1 There are approximately 2000 records in ...
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Expected output for learning algorithm of MLP

I am trying to build a neural network for shape recognition. The network is basically a Multi-Layer Perceptron (MLP) with a learning ability. My inputs for the learning part are made of ten sets of ...
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51 views

Training a FeedForward Neural Network

I have implemented a Back propagation Neural Network, now I would like to implement a Feed Forward Neural Network to compare their accuracy. My question is, what learning methods does Feed Forward ...
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MATLAB Neural Network Toolbox BPN

I am using the Iris Data Set to train my NN using Back Propagation. The code is attached. p = [ 5.1,3.5,1.4,0.2; %iris data set 4.9,3.0,1.4,0.2; 4.7,3.2,1.3,0.2; 4.6,3.1,1.5,0.2; 5.0,3.6,1.4,0.2; ...
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Can someone help why the MSE Error in Backpropagation is not working?

I have the following code for Neural Network solving XOR Problem using BackPropagation. The backpropagation algorithm seems to be fine but the MSE Error isn't working properly. I am unable to identify ...
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Unable to reduce the error value in back propagation code?

I tried to implement a neural network for wine data set and train the network using back propagation algorithm. But the error value in the code is around 100 and I have no idea how to reduce it. The ...
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Are there ways to improve Levenberg-Marquardt backpropogation performance in Neural Networks?

When using Levenberg-Marquardt optimization for a function approximation problem, the performance and speed generally trumps that of the gradient descent. I am approximating the functions cos(n * ...
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Couldn't fit the data using NEURAL NETWORKS IN MATLAB

i have been trying the fit the data to a nonlinear model using neural networks in matlab. i have several sets of data. and my code is working fine for some data sets but not for all the data sets. ...
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54 views

Temporal convolution for NLP

I'm trying to follow Kalchbrenner et al. 2014 (http://nal.co/papers/Kalchbrenner_DCNN_ACL14) (and basically most of the papers in the last 2 years which applied CNNs to NLP tasks) and implement the ...
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Unit testing backpropagation neural network code

I am writing a backprop neural net mini-library from scratch and I need some help with writing meaningful automated tests. Up until now I have automated tests that verify that weight and bias ...
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Calculating error for a neural network

I have written a back-propagation MLP neural network and I want training to stop when the error is less than or equal to 0.01 I have my dataset which has been split to be 60% training data, 20% ...
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Neural network to solve AND

I'm working on implementing a back propagation algorithm. Initially I worked on training my network to solve XOR to verify that it works correctly before using it for my design. After reading this I ...
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How can I add concurrency to neural network processing?

The basics of neural networks, as I understand them, is there are several inputs, weights and outputs. There can be hidden layers that add to the complexity of the whole thing. If I have 100 inputs, ...
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Multiclass Neural Network Issue

I have been trying to implement back-propagation neural networks for a while now and i am facing issues time after time. The progress so far is that my neural network works fine for XOR, AND and OR. ...
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Neural Network Training Methodology

need some help regarding training of neural network. to give you the background i have trained and tested my neural network for AND and OR and seems to work fine. FYI i am using back-propagation ...
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What is the difference between Backpropogation and feed-forward Neural Network

What is the difference between Backpropogation and feed - forward Neural Network. By googling and reading I found that In feed forward there is only forward direction , but in back-propogation once we ...
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250 views

Softmax loss backpropagation gradient error

I have a neural network of two layers. Details: Input size = 4 Hidden layer size = 10 classes (output size) = 3 Number of samples = 5 Dataset size (X) = 5x4 The data: X = [[-0.2 ...
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Back propagation through L2 normalization layer in MATLAB

I'm trying to implement back propagation through L2 normalisation layer in MATLAB: l2 = repmat(sqrt(sum(x.^2)),size(x,1),1); xnorm = x./l2; The issue here is that all the computations (both in ...
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why the number of epoches is low

I am training the feedforward back propagation neural network using nntool in matlab with input vector of 12*304 and target vector of 1*304. Here is the list of parameters that I have used 2 hidden ...
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Reducing data width for machine learning

I am new to machine learning and I was looking to reduce my data's width as I've got too many attributes and too few instances with some missing/empty values on x (mostly) and some on y. The data I'm ...
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i need a way to train a neural network other than backpropagation

This is an on-going venture and some details are purposefully obfuscated. I have a box that has several inputs and one output. The output voltage changes as the input voltages are changed. The ...
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Use number of misclassificatios as objective function for back propagation

I'm new to machine learning (neutral network) and I have a question, please help me explain. In back propagation, the objective function to be minimized is usually a sum of the squared error between ...
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Back propagation error doesnt decrease after 3 epochs! Beginner needing help MATLAB

Before I begin, I'd just like to preface this by saying that I only started coding in October so excuse me if it's a little be clumsy. I've been trying to make a MLP for a project I've been doing. I ...
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pure-python RNN and theano RNN computing different gradients — code and results provided

I've been banging my head against this for a while and can't figure out what I've done wrong (if anything) in implementing these RNNs. To spare you guys the forward phase, I can tell you that the two ...
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Neural Network not fitting XOR

I created an Octave script for training a neural network with 1 hidden layer using backpropagation but it can not seem to fit an XOR function. x Input 4x2 matrix [0 0; 0 1; 1 0; 1 1] y Output 4x1 ...
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Bug in Resilient Backpropagation?

I'm struggling with implementing Resilient Propagation correctly. I already implemented the backpropagation Algorithm to train a Neural Network, and it works as expected for an XOR-Net, i.e. it takes ...
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Trouble Understanding the Backpropagation Algorithm in Neural Network

I'm having trouble understanding the backpropagation algorithm. I read a lot and searched a lot but I can't understand why my Neural Network don't work. I want to confirm that I'm doing every part the ...
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743 views

Cross Entropy, Softmax and the derivative term in Backpropagation

I'm currently interested in using Cross Entropy Error when performing the BackPropagation algorithm for classification, where I use the Softmax Activation Function in my output layer. From what I ...
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312 views

Back propagation algorithm: error computation

I am currently writing a back propagation script. I am unsure how to go about updating my weight values. Here is an image just to make things simple. My question: How is the error calculated and ...
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81 views

Java Back-propagation ANN output values

I'm trying to write a simple implementation of a back-propagation ANN in Java and I'm getting very odd output. The ANN has an input layer with two nodes (one for each value in input vector), a single ...
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268 views

Neural network with batch training algorithm, when to apply momentum and weight decay

I built a neural network and successfully trained it by using backpropagation with stochastic gradient descent. Now I'm switching to batch training but I'm a bit confused about when to apply momentum ...
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120 views

Encog - EarlyStoppingStrategy with validation set

I would like to stop training a network once I see the error calculated from the validation set starts to increase. I'm using a BasicNetwork with RPROP as the training algorithm, and I have the ...
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1answer
120 views

Classify new instance that have new value in some features with existing model

I have created a model with neural network (backpropagation), then i want to classify an instance. what i've did : normalization with regular normalization for each features the values for each ...
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124 views

What is the syntax of the activate() function in pybrain package?

I have a code which builds a [2,3,1] neural network with some values with full connection. from pybrain.structure import FeedForwardNetwork, LinearLayer, SigmoidLayer, FullConnection from ...
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Back-propagation algorithm converging too quickly to poor results

I'm trying to implement the back propagation algorithm for a multi layer feedforward neural network, but I'm having issues getting it to converge to good results. The reason being, the gradient ...
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27 views

Operations on sums inside functions in Maxima

I am trying to compute derivative for something like back-propagation analytically, using Maxima. So I write: declare(N,[scalar,integer]); declare(i,[scalar,integer]); declare(j,[scalar,integer]); ...
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Basic neural network returns the average of the target outputs

I'm currently coding a basic neural network that is supposed to calculate a XOR, using backpropagation. However, it instead outputs the average of its target outputs. (A XOR returning {0,1,1,0}, that ...