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

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Backpropogation in octave for iris dataset

How to implement back-propagation algorithm in octave from scratch (without using any predefined neural network toolbox ). and test its accuracy on iris data set.
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Backpropagation learns for one dataset but fails at multiple datasets

Having an issue in my neural network where the error on the inputs gets enormously small (in the negative thousands). The network can learn one training set (ie 1+3=4) and will output four with inputs ...
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Feed-Forward Neural Network Linear Function

I'm a complete newbie in ANN. After reading through articles online, I have implemented a FF neural network in C++. Among the parameters of the constructor, these are the important parameters: ...
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20 views

Most efficient way to calculate hessian of cost function in neural network

I am coding a MLP network and I would like to implement the levenberg-marquardt algorithm. With levenberg-marquardt, the weights' update after each iteration is given by this formula: W(t+1) = W(t) ...
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Validation Set Evaluation Interval w/rspt to # events in Epoch

My first thought is that the Validation Set should be checked after every Epoch of Training. However, Ward Systems (NeuroShell 2) makes no such assumption - in fact, they recommend arbitrary ...
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32 views

Using back-propagation to approximate a function and then find its maximum?

I have an unknown function, say, F(x), which I use a back-propagation neural network to approximate. Surely this can be done, as it is in the standard repertoire of neural networks. F(x) does not ...
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35 views

Testing how learning rate affects backpropagation, Artificial neural network

I have created an artificial neural network in Java that learns with a backpropagation algorithm, I have produced the following graph which shows how changing the learning rate affects the time it ...
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1answer
28 views

What does the error output from trainer.train() in PyBrain refer to?

What does the error printed from PyBrain Trainer.train() function refer to? More specifically, when I do this: >>> trainer = BackpropTrainer(fnn, ds_train) >>> trainer.train() 0.024 ...
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23 views

Weights, How to write it in matrix form?

In backpropagation of a neural network having sigmoid activation function, Weight updation rule is given by: NewWeight = OldWeight - alpha * D * A Where alpha is learning rate, A is Activations ...
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24 views

Multilayer Perceptrons and backpropagation using matlab

I was wondering if you could help me with a problem. I understood that MPL's using backpropogation would give a target output of 1 or 0 if sigmoid function is used. The neural network tool box ...
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58 views

Full-matrix approach to backpropagation in Artificial Neural Network

I am learning Artificial Neural Network (ANN) recently and have got a code working and running in Python for the same based on mini-batch training. I followed the book of Michael Nilson's Neural ...
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23 views

Feedforward n backpropagation issues in coding

I am implementing ANN in python and I'm a beginner in both. My problems are 1.) The error is very high even with 5000 iterations 2.) On denormalizing using the formula: (o/p * (max-min)) + mean , the ...
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24 views

vb.net Neural Network Learning Rate and Momentum confusion

I have ported a vb6 neural network to vb.net 2008. In the original code, a Learning Rate of 1.5 is specified, and Momentum isn't even considered. The original code resolves the XOR problem fairly ...
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35 views

Hessian-Free Optimization versus Gradient Descent for DNN training

How do the Hessian-Free (HF) Optimization techniques compare against the Gradient Descent techniques (for e.g. Stochastic Gradient Descent (SGD), Batch Gradient Descent, Adaptive Gradient Descent) for ...
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26 views

Back propagation with a simple ANN

I watched a lecture and derived equations for back propagation, but it was in a simple example with 3 neurons: an input neuron, one hidden neuron, and an output neuron. This was easy to derive, but ...
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26 views

Is Backpropagation okay for this or should i try another approach?

I'm making kind of "the life game" with some creatures and some food on a world. Creatures eat food in order to gain energy and when they have enough energy they reproduce. The energy that a food ...
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36 views

Python: What Does train() Method in Pybrain Package Return?

The link here says that trainer.train() returns a double proportional to the error What does that mean? I am using BackpropTrainer to train a neural network for classification. So far, my code ...
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22 views

Backpropagation error : conceptual or programing?

I wrote the following backpropagation algorithm to model the two input identity function clc % clear nh = 3; % neurons in hidden layer ni = 2; % neurons in input layer ...
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1answer
21 views

MLP: When Reduced # Hiddens Fails for Over Training

I am in a epic debate with a colleague who claims that reducing the number of hiddens is the best way to deal with over training. While it can be demonstrated that generalization error decreases ...
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90 views

Neural network for approximating a function with four parameters

I have a function that looks like this: y = a^(2b) + c^(2d) I would like to approximate this function by training a neural network using backpropagation. The range of the variables a, b, c and d is ...
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38 views

Thresholds in backpropagation

What is the use of thresholds in backpropagation algorithm. I wrote a java code for class label identification. I used some random thresholds (0-1) for the neurons. I trained the system and tested ...
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113 views

Neural Network implementation in java

I am attempting to implement a FFNN in Java with backpropagation and have no idea what I am doing wrong. It worked when I had only a single neuron in the network, but I wrote another class to handle ...
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1answer
24 views

Calculating derivatives with backpropagation using Sutskever's technique

In "TRAINING RECURRENT NEURAL NETWORK" by Ilya Sutskever, there's the following technique for calculating derivatives with backpropagation in feed-forward neural networks. The network has l hidden ...
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59 views

Search for patterns/images inside other images using neural networks

I am new to neural networks and do get the gist about how they work. I intend to create a neural network that recognize basic objects in a 3d scene and their positions in the image. From what i read ...
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44 views

Derivation of the Backpropagation Algorithm for Neural Networks

Perhaps this is a dumb question, but this doubt is really prohibiting me from understanding Backpropagation. So I was reading and trying to understand the Backpropagation Wikipedia article. It states ...
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35 views

How do I create a back propagation neural network that has different kinds of output?

I'm sorry, I've just learned about the neural network and I have not yet understood in its implementation. Suppose I want to make a back propagation neural network that accepts multiple real numbers ...
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75 views

I have trouble implementing backpropagation in neural net

I have a simple feedforward neural network with 2 input neurons (and 1 bias neuron), 4 hidden neurons (and 1 bias neuron), and one output neuron. The feedforward mechanism seems to be working fine, ...
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118 views

Torch Lua: Why is my gradient descent not optimizing the error?

I've been trying to implement a siamese neural network in Torch/Lua, as I already explained here. Now I have my first implementation, that I suppose to be good. Unfortunately, I'm facing a problem: ...
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59 views

Feedforward network using backpropagation in Encog

I am using this classification example by jeff heaton: https://github.com/encog/encog-java-examples/blob/master/src/main/java/org/encog/examples/guide/classification/IrisClassification.java I am ...
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67 views

How Many Epochs Should a Neural Net Need to Learn to Square? (Testing Results Included)

Okay, let me preface this by saying that I am well aware that this depends on MANY factors, I'm looking for some general guidelines from people with experience. My goal is not to make a Neural Net ...
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59 views

FeedForward Neural Network: Using a single Network with multiple output neurons for many classes

I am currently working on the MNIST handwritten digits classification. I built a single FeedForward network with the following structure: Inputs: 28x28 = 784 inputs Hidden Layers: A single hidden ...
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61 views

Any Ideas for Predicting Multiple Linear Regression Coefficients by using Neural Networks (ANN)?

In case, there are 2 inputs (X1 and X2) and 1 target output (t) to be estimated by neural network (each nodes has 6 samples): X1 = [2.765405915 2.403146899 1.843932529 1.321474515 0.916837222 ...
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49 views

Using backpropagation to learn a polynomial function

I've been trying for almost a month to learn a 4th order polynomial function using neural networks, I've been debugging my code for a while now and not able to find what am doing wrong. I even used 2 ...
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23 views

Understanding Neural network backpropagation using matlab

I am working on backpropagation algorithm.can anyone explain me how do i plot performance graph without using matlab tools.i mean please give me detailed information about performance plot and how do ...
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186 views

Why does this backpropagation implementation fail to train weights correctly?

I've written the following backpropagation routine for a neural network, using the code here as an example. The issue I'm facing is confusing me, and has pushed my debugging skills to their limit. ...
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22 views

java Backpropagation Neural Network gives unexpected output

I made my first Backpropagation Neural Network using this tutorial. I wanted to teach it simple logick gate: 0&0=1, 0&1=0, 1&0=0, 1&1=1. Suprisingly, it gives me weird output that I ...
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96 views

What are units in neural network (backpropagation algorithm)

Please help me to understand unit thing in neuron networks. From the book I understood that a unit in input layer represents an attribute of training tuple. However, it is left unclear, how exactly it ...
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69 views

Multilayer perceptron Python

i am trying to teach a multilayer perceptron to classify data from UCI SPECT database using backpropagation method. the problem is that the classification accuracy is low(about 50% of images are ...
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1answer
118 views

Neural Network Error oscillating with each training example

I've implemented a back-propagating neural network and trained it on my data. The data alternates between sentences in English & Africaans. The neural network is supposed to identify the language ...
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91 views

Neural network back propagation writing in Java

I'm trying to illustrate back-propagation algorithm. I follow the online course "Machine Learning" teach by Prof Andrew Ng and I completed code in Octave. With Octave program, it uses optimized ...
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45 views

How does the back-propagation algorithm deal with non-differentiable activation functions?

while digging through the topic of neural networks and how to efficiently train them I came across the method of using very simple activation functions, such as the recified linear unit (ReLU), ...
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177 views

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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33 views

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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139 views

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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1answer
36 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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1answer
120 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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104 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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37 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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67 views

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 | ...