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

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Convolutional neural network not converging

I've been watching some videos on deep learning/convolutional neural networks, like here and here, and I tried to implement my own in C++. I tried to keep the input data fairly simple for my first ...
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Java Backpropagation Algorithm is very slow

I have a big problem. I try to create a neural network and want to train it with a backpropagation algorithm. I found this tutorial here ...
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deep learning matlab gives worst results if backpropagation is used

I am following the MATLAB example in this link to train a deep neural network for classification. Using my data and performing the with fine tuning of the deep neural network as suggested in the ...
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1answer
23 views

Backpropagation - error derivative

I am learning the backpropagation algorithm used to train neural networks. It kind of makes sense, but there is still one part I don't get. As far as I understand, the error derivative is calculated ...
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29 views

Cross Validation of Wine Data set in Matlab

I am working on multi-layer perceptron of wine dataset on Matlab.I use back propagation with momentum (traingdm) and cross validation for the classification problem. Below I have full code for the ...
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Backpropagation Algorithm (neural networks)

I tried to implement an online backpropagation algorithm for a neural network. After having computed every output and net value (ie the value without applying the activation function) of every node, ...
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1answer
31 views

Can auto differentiation handle separate functions of array slices?

Given a vector v of length say 30, can auto differentiation tools in say theano or tensorflow be able to take the gradient of something like this: x = np.random.rand(5, 1) v = f(x, z) w = ...
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2answers
37 views

How to make sound signal length the same in MATLAB?

I found this speech recognition code that I downloaded from a blog. It works fine, it asks to record sounds to create a dataset and then you have to call a function to train the system using neural ...
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69 views

Summation giving random wrong numbers

I'm trying to implement an easy backpropagation algorithm for an exam (I'm a beginner programmer). I've got a set of arrays and I generate random weights to start the algorithm. I implemented the ...
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41 views

Updating weights in backpropagation algorithm

I think I've understood each step of backpropagation algorithm but the most important one. How do weights get updated? Like at the end of this tutorial? ...
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1answer
230 views

Neural network backpropagation algorithm not working in Python

I am writing a neural network in Python, following the example here. It seems that the backpropagation algorithm isn't working, given that the neural network fails to produce the right value (within a ...
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0answers
38 views

NumPy Matrices Won't Align in Neural Network

I've produced a neural network in Python, with my only support being NumPy. In training the neural network, I use backpropagation, which was working smoothly until I implemented the network into my ...
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3answers
138 views

Is employing BPNN for water quality management an overkill? [closed]

I'm developing a device for Freshwater Quality Management which can be used for freshwater bodies such as lakes and rivers. The project is spread in three parts: The first part deals with acquiring ...
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1answer
37 views

MLP not training XOR correctly

I'm new to neural networks. I've been trying to implement a two layer network to learn the XOR function using the backpropagation algorithm. The hidden layer has 2 units and the output layer is having ...
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1answer
50 views

BackPropagation Neuron Network Approach - Design

I am trying to make a digit recognition program. I shall feed a white/black image of a digit and my output layer will fire the corresponding digit (one neuron shall fire, out of the 0 -> 9 neurons in ...
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0answers
26 views

Test method for multilayer perceptron

This is Multi-Layer Perceptron using Backpropagation algorithm.I found this code on codetidy.com and i want to test it . "mlp.java" /***** This ANN assumes a fully connected network *****/ ...
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1answer
41 views

MNIST - Training stuck

I'm reading Neural Networks and Deep Learning (first two chapters), and I'm trying to follow along and build my own ANN to classify digits from the MNIST data set. I've been scratching my head for ...
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1answer
33 views

From XOR Neural Network to image recognition

I have a rudimentary XOR trained neural network working correctly with the following structure. 2 Inputs, 2 hidden nodes and 1 output. I would like to extend this to grayscale image recognition with ...
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29 views

How to customize the error Function in Encog for Java

I have been using Encog for a while to create a neural network. I think that the default Error Rate (degree to which the output of the neural network differs from the expected output) doesn't suit my ...
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66 views

Theano , recurrent neural network, error is nan

I am trying to duplicate the recent work on unitary evolution neural networks. Adapting from the code published by the author, I have written the following code import matplotlib.pyplot as plt import ...
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1answer
42 views

What is the difference between a CNN and a Decision Tree/Forest

I was reading a paper when the autor J. Welbl of this paper http://hci.iwr.uni-heidelberg.de/publications/mip/techrep/welbl_14_casting.pdf suggested to merge convolutional neural networks with ...
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43 views

Quick-propagation algorithm stuck on certain inputs

I have encountered a problem with my Quick-propagation algorithm. The basic quick-propagation formula should be derived from assumption that hyperplane has shape of parabola. This is how my ...
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0answers
27 views

How can I tell my neural network is converging to a local minimum?

I've built a relatively simple artificial neural network in attempts to model the Value function in a Q-Learning problem, but to verify my implementation of the network was correct I am trying to ...
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1answer
25 views

L2 matrix rowwise normalization gradient

Im trying to implement L2 norm layer for convolutional neural network, and im stuck on backward pass: def forward(self, inputs): x, = inputs self._norm = np.expand_dims(np.linalg.norm(x, ...
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30 views

Recognizing images in neural networks

I'm trying to realize a programme that recognizes images using a neural network with 1 hidden layer. The User is supposed to draw a number and the NN must recognize it. And i'm having some trouble So ...
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1answer
118 views

Can I (selectively) invert Theano gradients during backpropagation?

I'm keen to make use of the architecture proposed in the recent paper "Unsupervised Domain Adaptation by Backpropagation" in the Lasagne/Theano framework. The thing about this paper that makes it a ...
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Error of output neuron

In a neural network with backpropagation, after we are done with the forward pass, the next step is to calculate error of the output neuron. The figure below shows error of the output neuron is δ = z ...
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neural network training using back propagation issue

This is the code I used to classify the handwritten digits of MNist database using back-propagation algorithm on an one-layered perceptron with 10 neurons. The digits are saved in an expanded (1's in ...
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257 views

Backpropagation algorithm through cross-channel local response normalization (LRN) layer

I am working on replicating a neural network. I'm trying to get an understanding of how the standard layer types work. In particular, I'm having trouble finding a description anywhere of how ...
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1answer
36 views

Multiclass classification and the sigmoid function

Say have a training set Y : 1,0,1,0 0,1,1,0 0,0,1,1 0,0,1,0 And sigmoid function is defined as : As the sigmoid function ouputs a value between 0 and 1 does this mean that the training data ...
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23 views

matlab xor using mlp

this is my first time doing neural networks and i've been given the task to solve the xor problem using multi layer perception in matlab. i've set values to my weights and i've used the sigmoid ...
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41 views

Backpropagation algorithm in python

I'm trying to implement a backpropagation algorithm in python. The problem is, that the total error doesn't get smaller, and also sometimes calculating the derivative of sigmoid function causes an ...
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1answer
27 views

Backpropagation outputs tend towards same value

I'm attempting to create a multilayer feedforward backpropagation neural network to recognize handwritten digits and I'm running into a problem where the activations in my output layer all tend ...
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0answers
72 views

Simple back-propagation with ReLU (rectified units) fails

I have simple code for traditional back-propagation (with the traditional sigmoid activation function) which is working fine. Then I changed the sigmoid to the rectifier, and it fails to converge ...
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411 views

How to implement the Softmax derivative independently from any loss function?

For a neural networks library I implemented some activation functions and loss functions and their derivatives. They can be combined arbitrarily and the derivative at the output layers just becomes ...
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51 views

Can a Neural Network using SGD change only one output of many with backprop?

Let's say I have a Neural Network with this structure: network([256, 100, 4]) where there are 256 input neurons, 100 hidden, and 4 outputs. The network uses the sigmoid function as it's activation ...
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1answer
42 views

Feed Forward ANN: calculating delta node from previous layer delta

I am trying to implement a feed forward neural network in CUDA. So far, I've used Jeff Heaton's YouTube videos as a guide to infer the algorithms and implement them. I'm not clear on one thing: ...
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1answer
66 views

Creating Neural Network for un-encountered inputs

I am creating a simple Multi-layered feed forward Neural Network using AForge.net NN library. My NN is a 3 Layered Activation Network trained with Supervised Learning approach using BackPropogation ...
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1answer
38 views

How do I get backpropagation to work for a MLP? MATLAB

I am trying to get an MLP to work. My goal is to get the net to predict output Yt when given Yt-1,Yt-2...,Yt-10. I've been using a generated dataset, which should be no trouble. My net will always ...
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1answer
29 views

Backpropagation makes network worse

i am experimenting with neural networks. I have a network with 8 input neurons, 5 hidden and 2 output. When i let the network learn with backpropagation, sometimes, it produces worse result between ...
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60 views

Backpropagation demo

i have managed to implement my own backpropagation algorithm. I was able to train my neural network to resolve OR/AND/XOR problems so far. I am using a sigmoid function. For my school project I am ...
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0answers
84 views

NAN when I use ReLU activation function in convolutional neural network Lenet-5

I did programmed convolution neural network LeNet-5. I made some modifications: I replaced the activation function of output neurons in the last layer RBF to SoftMah. SubSampling layers to ...
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1answer
42 views

Support vector machine or back propagation for stock market prediction [closed]

What should I use for stock market prediction and why? comparison if you can please. Udpated: I wanted to use it for stock market movement (up,down) for 1 day.Also,Thank you for your answer it halped ...
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2answers
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Backpropogation activation derivative

I've implemented backpropagation as explained in this video. https://class.coursera.org/ml-005/lecture/51 This seems to have worked successfully, passing gradient checking and allowing me to train on ...
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0answers
110 views

Backpropagating between convolutional layers

I've been trying to build a convolutional neural network that performs classification on the MNIST dataset; I think I'm pretty close to getting everything to work, but I'm still running into some ...
0
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1answer
39 views

How/When to update bias in RPROP neural network?

I am implementing this neural network for some classification problem. I initially tried back propagation but it takes longer to converge. So I though of using RPROP. In my test setup RPROP works fine ...
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1answer
282 views

How backpropagation works in torch 7?

I tried to understand supervised learning by torch tutorial. http://code.madbits.com/wiki/doku.php?id=tutorial_supervised And backpropagation : ...
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50 views

how to operate the matlab gradient descent training algorithm “ traingd ”?

I'm trying to create a simple feed foreward neural network, consisting of 10 inputs, 10 hidden neurons, and 50 output neurons. I'm trying to train the network to memorize 50 patterns(a pattern ...
2
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2answers
603 views

Neural network backpropagation with RELU

I am trying to implement neural network with RELU. input layer -> 1 hidden layer -> relu -> output layer -> softmax layer Above is the architecture of my neural network. I am confused about ...
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Backpropagation neural network doesn't learn well

I am struggling with my implementation of backpropagation learning. The only thing the network manages to learn well is OR with a 2-2-1 network. It fails to learn all other logic functions, staying at ...