Tagged Questions

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

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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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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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25 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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57 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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102 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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1answer
26 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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50 views

What's wrong with this neural network

I have what seems to be a simple implementation of a 3 layer network in MATLAB. But it's failing even for basic XOR classification. I'm recording squared error after each training set. For step ...
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2answers
71 views

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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14 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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42 views

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 ...
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1answer
24 views

What should be the value of parameters of neural network having large data sample?

I have done coding for neural network in Python for the multi-layer,feed-forward, back-propagation structure. In this network structure I have 24 nodes in input layer, 18 nodes in hidden layer and 1 ...
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39 views

Gradient checking in backpropagation

I'm trying to implement gradient checking for a simple feedforward neural network with 2 unit input layer, 2 unit hidden layer and 1 unit output layer. What I do is the following: Take each weight w ...
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69 views

backpropagation algorithm in matlab

I'm writing a back propagation algorithm in matlab. But I can not get to write a good solution. I read a book Haykin and read some topics in Internet, how make it other people. I understand from door ...
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2answers
67 views

How to use k-fold validation in a neural network

We are writing a small ANN which is supposed to categorize 7000 products into 7 classes based on 10 input variables. In order to do this we have to use k-fold cross validation but we are kind of ...
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1answer
25 views

neural networks for Farsi OCR

I'm trying to implement a farsi OCR using neural networks,I am using 5000 training examples each is a 70 * 79 matrix,concretely I have a 5530 units input layer and one hidden layer(4000 units) and a ...
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18 views

Back propogation application

I am new in back propagation, i have gone through several documents to understand the algorithm. In all cases i am not able to understand the input and output considered in this. for example : in my ...
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39 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 ...
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1answer
303 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 ...
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26 views

Ressilient Backpropagation (RPROP)

If I understood correctly how the RPROP works we need to consider only gradient value which is: for output layer: self.gradient = self.activation_function_prim(self.weighted_sum) * ( correct_out - ...
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295 views

Neural Network gives same output for different inputs, doesn't learn

I have a neural network written in standard C++11 which I believe follows the back-propagation algorithm correctly (based on this). If I output the error in each step of the algorithm, however, it ...
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85 views

Color classification using aforge backpropagation neural network c#

Halo Guys .i Plan to implement Back propagation network to recognize RGB of color.I train certain RGB of color in my BPN to outputs i set. However ,i cant get the correct result when i input back ...
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54 views

Is the mini-batch gradient just the sum of online gradients?

I am adapting code for training a neural network that does online training to work for mini-batches. Is the mini-batch gradient for a weight (de/dw) just the sum of the gradients for the samples in ...
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1answer
239 views

Does Theano do automatic unfolding for BPTT?

I am implementing an RNN in Theano and I have difficulties training it. It doesn't even come near to memorising the training corpus. My mistake is most likely caused by me not understanding exactly ...
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6 views

Internal dataset dynamics using Neural Networks

I have the following objective: finding the internal dynamics within my time series dataset that is composed by patent counts in different technological clusters (CL). Example: In 2000 CL1 has 30 ...
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1answer
673 views

Backpropagation for rectified linear unit activation with cross entropy error

I'm trying to implement gradient calculation for neural networks using backpropagation. I cannot get it to work with cross entropy error and rectified linear unit (ReLU) as activation. I managed to ...
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54 views

Plant recognition on aforge

I am making simple leaf recognizing prorgam. I have 10 plant leaf data and total sample size about 660. My input size 3, output layer 10. Hidden layers is changeable.(2 between 30) First input data: ...
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1answer
76 views

Multithreading for backpropagation algorithm

To speed up some neural network learning, I tried to do some multi-threading, since for a particular layer, the calculations for each neuron are independent from one another. The original function I ...
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1answer
23 views

Subscript indices must be real positive integers, and they are (Matlab) [duplicate]

I am trying to code a simple backpropagation network in Matlab, and I am getting the following error: Subscript indices must either be real positive integers or logicals. in line 144 of my code, ...
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I get a PyBrain BackpropTrainer AssertionError on Windows 7, which requirement is missin?

I initialized ds = SupervisedDataSet(12288,1) and add data ds.appendLinked(im3.flatten(),10) where im3 is an openCV picture. and this is my trainer -> trainer = BackpropTrainer(red, ds) When the ...
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101 views

Tuning nnet package in R to converge faster

I am working on my research and am stuck for a long time on getting the weights to converge in nnet package. I am running back propagation algorithm on weather data to predict temperature. I ...
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2answers
149 views

Open Source Library for online Backpropagation?

I am looking for a stable open source library (preferably in Java or Python) which implements continuous online backpropagation for multilayer neural networks. That is, instead of taking as input the ...
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2answers
58 views

Backpropogation: WHERE is Derivative of Transfer Function

First off: I understand derivatives and the chain rule. I'm not great with math, but I have an understanding. Numerous tutorials on Backpropogation (let's use this and this) using gradient descent ...
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29 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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44 views

Visualizing Backpropogation - Minimizing Errors in a neural network

I have been trying to think of exactly how backpropogation in a neural network works, what the derivative is, and what function it is trying to minimize. Below I tried to make the simplest model I ...
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1answer
89 views

Validation Set in Backpropogation in a Neural Network

I have a neural network model, and so far I am running the training set forward, calculating the errors, and adjusting the weights. As I understand it, after I do this for each training set example ...
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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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1answer
69 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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43 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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38 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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1answer
147 views

how is backpropagation the same (or not) as reverse automatic differentiation?

The Wikipedia page for backpropagation has this claim: The backpropagation algorithm for calculating a gradient has been rediscovered a number of times, and is a special case of a more general ...
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43 views

Multiple input on backpropagation

I'm implementing a backpropagation algorithm and I've been facing some problems. I have a large training set (3k examples). Each example contains 10 attributes and 2 possibles outputs (yes or no). ...
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1answer
93 views

Why do I must use Sobel Operator?

As I've recently read some journals and pdfs about Neural Network. And i anchored my mind to an article about "Handwriting Recognition Using Neural Network". For addition, I'm studying ...
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1answer
271 views

Perceptron with sigmoid stuck in local Minimum (WEKA)

I know that usually you don't have local minima in the error surface using a perceptron (no hidden layers) with linear output. But is it possible to get stuck in local minima with a perceptron using a ...
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3answers
79 views

How to choose the number of nodes for using BP network in face recognition?

I read some books but still cannot make sure how should I organize the network. For example, I have pgm image with size 120*100, how the input should be like(like a one dimensional array with size ...
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1answer
58 views

How calculating hessian works for Neural Network learning

Can anyone explain to me in a easy and less mathematical way what is a Hessian and how does it work in practice when optimizing the learning process for a neural network ?
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1answer
105 views

Neural Network and Temporal Difference Learning

I have a read few papers and lectures on temporal difference learning (some as they pertain to neural nets, such as the Sutton tutorial on TD-Gammon) but I am having a difficult time understanding the ...
0
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1answer
79 views

Momentum in neural networks

Neural networks and momentum Should the momentum factor preferably relate to [both the dataset instance and the individual weights] or [just the weights]. Eg: def get_momentum( instance, weight ): ...
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35 views

Acceptable sum squared error level for neural networks

I am implementing a neural network in Java with 3900 inputs. I am wondering what an acceptably low level of sum squared error will be. Right now the lowest I can get it is around 283.
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1answer
61 views

Aforge BackPropagation Using

I am using aforge framework on visual studio. I have no error but I am getting wrong output. My code; public void btn_hesapla_Click(object sender, EventArgs e) { double girdi; ...
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45 views

Weird Output In Backpropagation

I'm trying to code the backpropagation algorithm by my own. I'm currently using C++ .NET. And i'm creating a neural network to recognize "AND" logic. Where the inputs are. 1 1 => 1 (result) 1 0 => 0 ...