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

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Neural Network fails on mnist

I coded a neural network in python to solve the mnist task. But the error rate changes really little (6th digit after comma) after one epoch and the network hasn't learnd much after 10000 epochs... ...
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1answer
23 views

Adding momentum term in online back propagation weight update?

I have implemented the ANN for two-layer network, I need to modify my weight update code with momentum, but i need to know how can i update it. below is the code snap of only weight update. The below ...
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35 views

Neural Networks DataSet learning

for a while now, i I am writing my own neural network for recognizing digits. It works perfectly fine for one given input and one expected output. It's getting close to the values until the total ...
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1answer
27 views

Why do I get good accuracy with IRIS dataset with a single hidden node?

I have a minimal example of a neural network with a back-propagation trainer, testing it on the IRIS data set. I started of with 7 hidden nodes and it worked well. I lowered the number of nodes in ...
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need BPNN java source code [on hold]

Can anyone have back propagation neural network algorithm for image classification implemented in JAVA? It would be very helpful if anyone could post the source code as soon as possible.
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1answer
25 views

How many hidden layer is perfect to train words for chat bot system [closed]

I'm trying to do project on Chat bot system. I'm trying to train a Back Propagation Neural Network that has more than one hidden layer in Java. I'm trying to find out how to train the bot with the ...
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1answer
69 views

Simple backpropagation Neural Network algorithm (Python)

I'm trying to understand back-propagation, for that I using some python code, but it's noting working properly. When I train with xor input-output the error does not converge. But if I change the ...
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1answer
41 views

Backpropagation (through time) code in Tensorflow

Where can I find the backpropagation (through time) code in Tensorflow (python API)? Or are other algorithms used? For example, when I create a LSTM net.
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1answer
13 views

Forward Pass and Backward Pass in neural networks

What is the meaning of Forward Pass and Backward Pass in Neural Networks? I tried searching using google and wiki but got no clarity. Everybody is mentioning about Back Propagation and epoch. I ...
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24 views

How Does Backpropagation Work in Convolutional Neural Networks?

I've been working on a ConvNet in python to classify MNIST numbers. I've gotten forward propagation done, and the structure looks like this: input -> conv_1 (4 filters) -> relu_1 -> pool_1 -> conv_2 ...
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28 views

How to recognize a character using trained neural network?

I'm new in AI. After reading this article I have decided to perform some simple OCR and for this purposes I have trained a neural network using backpropagation algorithm to recognize separate ...
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1answer
47 views

Backpropagation in Convolutional Neural Networks

Consider a Convolutional Neural Network with the following architecture: Here refers to the convolutional layer and refers to the mean pooling layer. Corresponding to each layer will be an ...
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1answer
27 views

What is the best way to normalize negative/non numerical data for tanh activation function neural networks

I'm using feed forward, gradient descent, backpropagation neural networks where hidden/output neurons are using tanh activation function and input neurons are linear. What is the best way, in your ...
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How to train a Back Propagation Neural Network that has more than one hidden layer in Python

I am trying to train a a Back Propagation Neural Network that has more than one hidden layer in Python.But all I can find online is some examples which have only one hidden layer.I am really confused ...
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38 views

XOR neural network in python not converging

I'm trying to code a simple NN with 3 layers (2,2,1). As activation function, I'm using the sigmoid: l = 1 sigma = lambda x, l: 1./(1+np.exp(-l*x)) sigma_prime = lambda x, l: ...
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2answers
34 views

Why is the Cross Entropy method preferred over Mean Squared Error? In what cases does this doesn't hold up?

Although both of the above methods provide better score for better closeness of prediction, still cross-entropy is preferred. Is it in every cases or there are some peculiar scenarios where we prefer ...
2
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1answer
41 views

How can I speed up learning for feed forward, gradient based backpropagation neural networks

I am using tanh as an activation function. Let's take one problem for example. XOR Problem: 1 1 0 0 1 1 1 0 1 0 0 0 When I train my neural network 500 epochs, results look like ...
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1answer
34 views

When should I use linear neural networks and when non-linear?

I am using feed forward, gradient descent backpropagation neural networks. Currently I have only worked with non-linear networks where tanh is activation function. I was wondering. What kind of ...
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1answer
51 views

How to compute the gradient of loss with repect to an arbitrary layer/weight in Torch?

I'm transiting from Theano to Torch. So please bear with me. In Theano, it was kind of straight-forward to compute the gradients of loss function w.r.t even a specific weight. I wonder, how can one do ...
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1answer
35 views

Neural net optimization failing (using Scipy fmin_cg)

Just a bit of context: I'm attempting to implement a 3 layer neural network (1 hidden layer) for image classification on the Cifar-10 dataset. I've implemented backpropagation and originally tried ...
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1answer
62 views

How to write the updateGradInput and accGradParameters in torch?

I know the two functions are for torch's backward propagation and the interface is as follows updateGradInput(input, gradOutput) accGradParameters(input, gradOutput, scale) I'm confused about what ...
2
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1answer
65 views

XOR Neural Network Converges to 0.5

I've implemented the following neural network to solve the XOR problem in Python. My neural network consists of an input layer of 2 neurons, 1 hidden layer of 2 neurons and an output layer of 1 ...
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1answer
46 views

Different loss functions for backpropagation?

I came across some different error calculation functions for backpropagation: Squared error function from http://mattmazur.com/2015/03/17/a-step-by-step-backpropagation-example/ or a nice ...
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2answers
59 views

Neural Networks: why do we need an activation function?

I tried to run a simple neural network without any activation function, and the network does not converge. I'm using MSE cost function for MNIST classification. However, if I apply Rectified Linear ...
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35 views

LSTM sequence-wise back propagation of losses in theano

I want to back-propagate the losses from predictions of each of the sequences through the corresponding sequence output in a single inference. Can it be possible by creating a scalar loss on top of ...
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2answers
69 views

Gradient calculation for softmax version of triplet loss

I have been trying to implement the softmax version of the triplet loss in Caffe described in Hoffer and Ailon, Deep Metric Learning Using Triplet Network, ICLR 2015. I have tried this but I am ...
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32 views

Backpropogation, how to use this formula to adjust my weights?

So i am following this page for backpropogation: http://galaxy.agh.edu.pl/~vlsi/AI/backp_t_en/backprop.html My Activation Function is Tanh if that matters for context. I think i got the first part ...
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1answer
27 views

How to compute an error for neural networks with unknown ideal?

Ok, so i set up a neural network through some trial and error. Going into backpropagation next. But in order to do that, i need to calculate my error on the outputs. The situation i made for my ...
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41 views

convolution neural network with backpropagation and sparsity in python

I am trying to modify the code provided by neural-networks-and-deep-learning on github for network3.py. This code basically constructs a convolution neural network and trains the MNIST data set. What ...
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1answer
44 views

Neural Network playing Tic Tac Toe doesn't learn

I have a neural network playing tic-tac-toe. (I know there are other better methods for this, but I want to learn about NN) So the NN plays against a random AI. First, it should learn to make an ...
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1answer
28 views

What bookkeeping is caffe doing?

Caffe tutorial states: The net is a set of layers connected in a computation graph – a directed acyclic graph (DAG) to be exact. Caffe does all the bookkeeping for any DAG of layers to ensure ...
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1answer
22 views

Neural Network bad convergeance

I read a lot about NN last two weeks, I think i saw pretty much every "XOR" approach tutorials on net. But, i wasn't able to make work my own one. I started by a simple "OR" neuron approach. Giving ...
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28 views

How backpropagation works in Convolutional Neural Netwrok(CNN)?

Mentors, I have few question regarding CNN. In the figure below between Layer S2 and C3, 5*5 sized kernel has been used. Q1. How many kernel has been used there? Do each of these kernel connected ...
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71 views

Adding Mask Entry in Protobuf, and multiplying the same with gradient

I have been working on pruning the neural network by discarding update to weight matrix by shielding weights below certain threshold. To achieve this I have to add a field "mask" in protobuf file, and ...
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58 views

Backpropagation with Momentum using Scikit-Learn

I'm trying to use Scikit-Learn's Neural Network to classify my dataset using a Backpropagation with Momentum. I need to specify these parameters: Hidden neurons, Hidden layers, Training set, Learning ...
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1answer
35 views

Backpropagation: Updating the first weight layer

According Andrew Ng's notes on backpropagation (page 9), the delta values are only calculated for the hidden layers (n-1 to 2). These deltas are then accumulated and used to update the weight ...
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1answer
42 views

Derivation of the equation of backpropagation algorithm

Can someone provide a derivation of the equation he gets on 1:15 using quotient rule https://www.youtube.com/watch?v=aVId8KMsdUU&index=18&list=LL2gry7n2BsijUeah-oFnPSg Pretty simple question, ...
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2answers
30 views

Subscript indices must be real positive integers or logicals in neural networks matlab

I tried to apply neural network function in GUI matlab. % --- Executes on button press in pushbutton1. function pushbutton1_Callback(hObject, eventdata, handles) % hObject handle to pushbutton1 ...
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1answer
78 views

Training a neural network [closed]

I am trying to train a neural network to play a game with a snake chasing a target. It's my first attempt to train a neural network. I am using Encog framework in Java with back propagation. To create ...
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1answer
47 views

Backpropagation and training set for dummies

I'm at the very beginning of studying neural networks but my scarce skills or lack of intelligence do not allow me to understand from popular articles how to correctly prepare training set for ...
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19 views

Neural network with backpropagation prediction error

i am making a neural network using the back propagation algorithm, i have tested predicting correctly a XOR example, and also an example where i have to classify words in binary and ternary outputs, ...
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25 views

Applying backpropogation for multi layer and multi neurons

I took help from this link and developed my version on top of it to test the standard MNIST dataset. I increased the number of input nodes to be 784, number hidden nodes in the first layer to be 40 ...
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33 views

Neural Network Backpropagation Issue

I hope any of you are able to help me, I am working in a simple code of a neural network using backpropagation, I have seen many guides and I am still unable to get a fine result, when I train it many ...
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14 views

Poor Performance of ANN with multiple data sets

I've implemented an ANN in Java, while following along with this site. When I train the ANN with one input/output vector pair, it works perfectly. Within a few hundred iterations, it was able to ...
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1answer
64 views

Temporal Difference Learning and Back-propagation

I have read this page of standford - https://web.stanford.edu/group/pdplab/pdphandbook/handbookch10.html. I am not able to understand how TD learning is used in neural networks. I am trying to make a ...
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2answers
52 views

Convolutional network filter always negative

I asked a question about a network which I've been building last week, and I iterated on the suggestions which lead me to finding a few problems. I've come back to this project and fixed up all the ...
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1answer
118 views

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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2answers
59 views

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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62 views

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
34 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 ...