0
votes
0answers
9 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 - ...
3
votes
1answer
209 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 ...
0
votes
1answer
24 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 ...
0
votes
0answers
4 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 ...
1
vote
1answer
72 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 ...
1
vote
0answers
30 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: ...
1
vote
1answer
59 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 ...
2
votes
0answers
44 views

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 ...
1
vote
0answers
43 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 ...
1
vote
2answers
77 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 ...
0
votes
2answers
38 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 ...
0
votes
0answers
21 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 ...
1
vote
0answers
27 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 ...
1
vote
1answer
61 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 ...
0
votes
0answers
17 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 ...
0
votes
1answer
59 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 ...
0
votes
0answers
17 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 ...
0
votes
0answers
25 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) ...
2
votes
1answer
119 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 ...
1
vote
1answer
87 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 ...
0
votes
1answer
151 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 ...
0
votes
3answers
48 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 ...
0
votes
1answer
43 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 ?
0
votes
1answer
69 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
votes
1answer
54 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 ): ...
0
votes
0answers
27 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.
1
vote
1answer
48 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; ...
0
votes
0answers
41 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 ...
0
votes
0answers
48 views

Neural Network can't learn XOR

I've created a neural network, with the following structure: Input1 - Input2 - Input layer. N0 - N1 - Hidden layer. 3 Weights per node (one for bias). N2 - Output layer. 3 Weights (one for bias). ...
0
votes
0answers
39 views

Why counterpropagation network doesnt work?

I've implemented counterpropagation network on C++ for prediction problem and also found this one in java http://paste.ubuntu.com/7240780/. Then i tried to learn this network on next input vectors: ...
2
votes
1answer
65 views

Neural network learning fast, false positives

I've recently started implementing a feed-forward neural network and I'm using back-propagation as the learning method. I've been using http://galaxy.agh.edu.pl/~vlsi/AI/backp_t_en/backprop.html as a ...
0
votes
1answer
19 views

Pythong Backpropagation - How to Initialize the starting activation?

I am having some troubles implementing this backprop network. I'm not really understanding how to start this off because in this network, my first layer only has 8 nodes. But my prompt gives me 10 in ...
1
vote
1answer
64 views

Neural network with 1 hidden layer cannot learn checkerboard function?

I'm just starting to learn neural networks, to see if they could be useful for me. I downloaded this simple python code of 3 layer feed forward neural network and I just modified the learning ...
0
votes
1answer
54 views

How to replace pixel value if we use minMaxLoc function

i am trying to select a 3x3 non overlapping region of interest from an image, and than select the maximum of that 3x3, than process it. After processing now i want to save the new processed value in ...
0
votes
0answers
169 views

Matlab NEWFF issue

Here is my code. %Generate Data p = 0 + (0.25-0)*rand(1,100); q = 0.25 + (0.5-0.25)*rand(1,100); r = 0.50 + (0.75-0.50)*rand(1,100); s = 0.75 + (1.00-0.75)*rand(1,100); %Create ...
0
votes
1answer
98 views

How many backpropogation passes on each set of inputs are required?

In a neural network how many passes on each input should I carry out?
0
votes
1answer
20 views

Standardising Training Set in Backpropogation

If I was to standardise the training data before I train the neural network, after the training do I then de-standardise the training data and feed it back in to the neural network to show the final ...
0
votes
0answers
36 views

Neural network is not correctly trained if in hidden layers are 2 or 3 neurons

I implemented simple Neural Network with imput layer, one hidden layer and output layer. I testing it on XOR function. My problem is that, network don`t kown learn on input [1,1] ([0,0][0,1][1,0] ...
1
vote
1answer
89 views

Looping through training data in Neural Networks Backpropagation Algorithm

How many times do I use a sample of training data in one training cycle? Say I have 60 training data. I go through the 1st row and do a forward pass and adjust weights using results from backward ...
0
votes
1answer
44 views

Error function in Artificial Neural Network trained using backpropogation

On various literature I keep seeing reference of error function but I'm not quite sure what it means. I am using sigmoid function for activation. Does the error function mean the following ...
0
votes
1answer
125 views

Multilayer perceptron with target variable as array instead of a single value

I am new to deep learning and I have been trying to use the theano library to train my data. MLP tutorial here has a scalar output value while my use case has an array with a 1 corresponding to the ...
12
votes
3answers
255 views

Neural network in Javascript not learning properly

I've tried to rewrite neural network found here to javascript. My javascript code looks like this. function NeuralFactor(weight) { var self = this; this.weight = weight; this.delta = 0; ...
0
votes
0answers
29 views

Python Backpropagation: No output value

so I'm trying to work on back propagation right now but for some reason, I'm getting an output, an activation, but nothing for the output value. Right now I'm just working with a one layer network, ...
0
votes
2answers
129 views

Why do we need to use a sigmoid function when using backpropagation?

Why can't we just use a step function then when calculating the weights use, weightChange = n * (t-o) * i Where, n: learning rate; t: target out; o: actual out; i: input This works with single ...
-1
votes
1answer
190 views

Using a single weight matrix for Back-Propagation in Neural Networks

In my Neural Network I have combined all of the weight matrices into one large matrix: e.g A 3 layer matrix usually has 3 weight matrices W1, W2, W3, one for each layer. I have created one large ...
0
votes
2answers
164 views

How to decide activation function in neural network

I am using feedforward, backpropagation, multilayer neural network and I am using sigmoid function as a activation function which is having range of -1 to 1. But the minimum error is not going below ...
1
vote
1answer
162 views

Training error and Validation error in Multiple Output Neural Network

I am developing a program to study Neural Networks, by now I understand the differences (I guess) of dividing a dataset into 3 sets (training, validating & testing). My networks may be of just one ...
1
vote
1answer
50 views

In back propagation why is this necessary, o (1 - o)

To calculate the error in back propagation you would use, (target out - act. out) * act.out * (1 - act.out) So what does, act.out * (1 - act.out) solve? Wouldn't, [target out - act. out] be the ...
7
votes
1answer
211 views

Backpropagation training stuck

I am trying to implement a neural network in Javascript and the specifications of my project would prefer the implementation to have separate objects for each node and layer. I am rather new at ...
1
vote
1answer
69 views

Backpropogation neural network - error not converging

I am using backpropogation algorithm for my model. It works perfectly fine a simple xor case and when I tested it for a smaller subset of my actual data. There are 3 inputs in total and a single ...