Tagged Questions

Network structure inspired by simplified models of biological neurons (brain cells). Neural networks are trained to "learn" by supervised and unsupervised techniques, and can be used to solve optimization problems, approximation problems, classify patterns, and combinations thereof.

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2
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1answer
540 views

Why use derivative of Sigmoid in neural network?

I created a simple perceptron with typical activation function (-1 or 1) and it seems to be working fine. Then I read about sigmoid and its use for smoother transitions between the values but I always ...
0
votes
1answer
2k views

how to use a neural network with simulink and neural network toolbox

I am trying to use a neural network generated from neural network toolbox with simulink model. The NN is a controller for a inverted pendulum. Whenever I build a net, it always generate a net with a ...
3
votes
3answers
521 views

Neural Network / Machine Learning memory storage

I am currently trying to set up an Neural Network for information extraction and I am pretty fluent with the (basic) concepts of Neural Networks, except for one which seem to puzzle me. It is probably ...
1
vote
0answers
62 views

How do you choose between a multilayer perceptron network and a model tree for predicting numerical values?

What kind of data would make multilayer perceptron perform better than a model tree (M5 prime) in terms of accuracy when predicting numerical values?
9
votes
1answer
4k views

How to train a neural network to supervised data set using pybrain black-box optimization?

I have played around a bit with pybrain and understand how to generate neural networks with custom architectures and train them to supervised data sets using backpropagation algorithm. However I am ...
1
vote
1answer
837 views

How do I train data in MATLAB in order to use in ANFIS?

I have data = [a b c d] and this data is in a loop, in which a, b, c and d's values change. for num=START:END [out1 out2] = some_funstion(input_image); a = out1+out2; b = out2-out1; ...
0
votes
1answer
269 views

Need help to improve graphviz rendering of a basic neural network

I try to use Graphviz to get a picture of the state of a basic neural network. The input layer has 14 neurons, and the output layer is only one neuron. One can choose the number of hidden layers as ...
1
vote
2answers
342 views

How to normalize fitness scores? [closed]

I'm evolving a population of neural networks and I've been struggling with normalizing fitness scores (to values in range 0 to 1), so that the number on its own is most meaningful. The issue is that ...
0
votes
1answer
295 views

How to extend upper and lower limits of ANFIS membership function in MATLAB?

I am trying to implement ANFIS on MATLAB. My input data operating range is 0-180, but MATLAB generates ANFIS membership function limits within 0-10. How to extend it from 0 to 180? Also another ...
0
votes
2answers
328 views

How to implement Back Propagation algorithm for the following input/output?

I would like to implement a back propagation algorithm in python or C++ for the following input [[11, 15], [22, 17]] [[8, 11], [23, 19]] [[9, 14], [25, 22]] [[6, 9], [17, 13]] [[2, 6], [29, 25]] [[4, ...
0
votes
1answer
318 views

Training Neural Networks with big linear output

I am programming a Feed Forward Neural Network which I want to use in combination with Reinforcement Learning. I have one hidden layer with tanh as activation function and a linear output layer. I ...
3
votes
1answer
182 views

Outputs always equal in a network trained with pybrain to approximate a function

Using the code below: tf = open('defl_07h.csv','r') for line in tf.readlines(): data = [float(x) for x in line.strip().split(';') if x != ''] indata = tuple(data[:1]) outdata = ...
0
votes
2answers
175 views

Connecting perceptrons with output of previous ones?

Because of the help I received and researched here I was able to create a simple perceptron in C#, code of which goes like: int Input1 = A; int Input2 = B; //weighted sum ...
0
votes
0answers
75 views

Lake Visitor Modeling by Neural Networks

Let's say I want to model the amount of visitors at an arbitrary lake at specific time. Given Data: Time Series of Amount of Visitors for 12 lakes. Weather Time Series for the 12 lakes Number of ...
1
vote
3answers
1k views

How to determine the threshold for neuron firings in neural networks?

I have a simple task to classify people by their height and hair length to either MAN or WOMAN category using a neural network. Also teach it the pattern with some examples and then use it to classify ...
1
vote
1answer
51 views

How do the weights work for differents sets?

I'm reading about neural networks and cannot understand the point - how can it work if the weights are just updated to fit specific input-output pair? I mean, the weights can be entirely different for ...
1
vote
1answer
936 views

Relating input to output with Neural Network and optimizing inputs using Genetic Algorithm

I'm currently doing proces optimization for laser cutting - in MATLAB. I am trying to relate the process parameters with the cutting quality such as e.g.: Inputs (Process parameters) Cutting speed ...
3
votes
1answer
324 views

Need to get stuck into a local optima in neural network

I need to get stuck in a local optima in a feed forward neural network. I need an example and an initialization of weights with which using steepest gradient descent will get stuck in a local optima ...
1
vote
1answer
355 views

Incremental (on-line) Backpropagation stopping criteria

In an on-line implementation of a Backpropagation ANN, how would you determine the stopping criteria? The way that I have been doing it(which I am sure is incorrect) is to average the error of each ...
0
votes
0answers
438 views

ANN with Backpropagation not classifying correctly

I have an ANN which I am using on the iris data set found here:- Iris data My network is initiated as follows:- package neuralnet; import neuralnet.networks.*; import neuralnet.framework.transfer.*; ...
1
vote
3answers
376 views

Random Perturbation of Data to get Training Data for Neural Networks

I am working on Soil Spectral Classification using neural networks and I have data from my Professor obtained from his lab which consists of spectral reflectance from wavelength 1200 nm to 2400 nm. He ...
1
vote
1answer
111 views

How should I allocate memory to many (1000+) arrays which I don't know the size of?

I am implementing a spiking neural network using the CUDA library and am really unsure of how to proceed with regard to the following things: Allocating memory (cudaMalloc) to many different arrays. ...
1
vote
1answer
348 views

How to get position (x,y) and number of particular objects or shape in a handdrawing image?

first, I've learning just couple of week about image processing, NN, dll, by myself, so I'm really new n really far to pro. n sorry for my bad english. there's image or photo of my drawing, I want to ...
3
votes
1answer
275 views

Training a neural network with constrained units

Motivation: The state of the art algorithm for object recognition is a deep convolutional neural net trained through backpropagation, where the main problem is getting the network to settle in a ...
3
votes
1answer
603 views

neuralnet prediction returns the same values for all predictions

I'm trying to build a neural net with the neuralnet package and I'm having some trouble with it. I've been successful with the nnet package but no luck with the neuralnet one. I have read the whole ...
0
votes
0answers
1k views

How to manage neural network with simple OR gate in MATLAB

I'm trying to run neural network with simple OR gate. Here is my example: P = [0 0 1 1; 0 1 0 1]; T = [0 1 1 1]; net = newp([0 1; -2 2],1,'logsig'); Y = sim(net,P) net.trainParam.epochs = 20; while ...
1
vote
3answers
510 views

Neural Networks (input and output layers)

When dealing with muticlass classification, is it always that the number of nodes (which are vectors) in the input layer excluding bias is the same as the number of nodes in the output layer?
0
votes
4answers
356 views

Neural Computation - Training an MLP without Back-Propagation

I am new to Neural Computation and can understand the back propagation concept. My question is, can you train an MLP without back-propagation to fit a function? Say, I need to fit a sine function. How ...
0
votes
2answers
353 views

Disable certain output nodes in PyBrain

I'm creating a simple feed-forward neural network in PyBrain to classify characters (26 lower case, 26 upper case and 10 numbers) There are two different documents - one has only upper case letters ...
3
votes
3answers
5k views

Export a neural network trained with MATLAB in other programming languages

I trained a neural network using the MATLAB Neural Network Toolbox, and in particular using the command nprtool, which provides a simple GUI to use the toolbox features, and to export a net object ...
4
votes
3answers
1k views

Predicting Football match winners based only on previous data of same match

I'm a huge football(soccer) fan and interested in Machine Learning too. As a project for my ML course I'm trying to build a model that would predict the chance of winning for the home team, given the ...
4
votes
1answer
282 views

Encog normalization with one-of

I have a question about normalization of my dataset. We are working on a school assignment, where we have to make sense of a dataset and classify new examples. We have a few dataset available, which ...
0
votes
1answer
108 views

Appropriateness of an artificial neural network in pose estimation

I am working on a project for uni which requires markerless relative pose estimation. To do this I take two images and match n features in certain locations of the picture. From these points I can ...
-1
votes
1answer
242 views

Testing of neural network in matlab not according to training [closed]

Hi I am new to MatLab and trying to build a face recognition system. I have taken images of 4 people in front, left and right profiles (each 3 images) with slight variation in the face (using face ...
1
vote
1answer
207 views

Blondie24 and Evolving Artificial Neural Network [closed]

I have problem with understanding implementation of system called Blondie24 made by David Fogel. In this system we are using "Evolving Artificial Neural Network" (EANN) which is based on 4 layers of ...
1
vote
1answer
49 views

Neural network function

I am using NeurophStudio and I am trying to train the network to learn the function: f(x) = 0 if x < 0.3 | 0.7 if x > 0.3 Any idea if I can do this using a neuronal network and if yes ...
1
vote
1answer
52 views

Creating an MLP that learns based on GPS coordinates

I have some data that tells me the amount of hours water is available for particular towns. You can see it here I want to use train a Multilayer Perceptron based on that data, to take a set of ...
2
votes
2answers
395 views

ANN different results for same train-test sets

I'm implementing a neural network for a supervised classification in MATALAB. I have a training set and a test set to evaluate the results. The problem is that every time I train the network for the ...
2
votes
2answers
779 views

python - multilayer perceptron, backpropagation, can´t learn XOR

i am trying implement multilayer perceptron with backpropagation, but still i cant teach him XOR, i will also often get math range error. I looked in books and google for learning rules and error back ...
0
votes
1answer
742 views

pattern recognition using neural network in matlab

I am doing a project in character recognition of a local language. I created the dataset. But I am not sure how to feed it using neural network? In this stage, I can only select one image as input ...
2
votes
2answers
386 views

Java - normalize and denormalize nominal attributes in neural networks

Hi I am building a simple multilayer network which is trained using back propagation. My problem at the moment is that some attributes in my dataset are nominal (non numeric) and I have to normalize ...
0
votes
0answers
62 views

In neural network i'm getting error as cat argument dimension are not consistent

I'm getting error in neural network training as cat argument inconsistent. How to solve this error. please help me function traindata1() clc; clear all; close all; warning off all; load 0;load ...
0
votes
1answer
223 views

FANN: save/load trained ann change MSE?

Such a problem: I've trained some ann using MSE stop function up to "desired error" 10^-5 (5MB of training data, 15000 input items,long training period -- about a day). I've got 0 bit fail during ...
4
votes
5answers
6k views

Simple multi layer neural network implementation [closed]

some time ago I have started my adventure with machine learning (during last 2 years of my studies). I have read a lot of books and written a lot of code with machine learning algorithms EXCEPT ...
2
votes
1answer
439 views

Octave backpropagation implementaion issues

I wrote a code to implement steepest descent backpropagation with which i am having issues. I am using the Machine CPU dataset and have scaled the inputs and outputs into range [0 1] The codes in ...
3
votes
3answers
898 views

neural network training set

My question is about a training set in a supervised artificial neural network (ANN) Training set, as some of you probably know, consists of pairs (input, desired output) Training phase itself is the ...
0
votes
1answer
77 views

poslin() function in octave does not give the desired output

I have a little confusion about the poslin() function in octave . If I give in poslin(-1) , the output is the desired 0 ; and for poslin(n) , the output is n . However if I give in poslin( [ 3 ; -1]) ...
8
votes
2answers
4k views

Matlab: neural network time series prediction?

Background: I am trying to use MATLAB's Neural Network toolbox to predict future values of data. I run it from the GUI, but I have also included the output code below. Problem: My predicted values ...
1
vote
0answers
345 views

Implementing GB-RBMs for real-valued data

I am trying to implement a Deep Belief Network for speech recognition. And hence, need the first layer of RBM to have gaussian visible units. I used @Andrej Karpathy's matrbm ...
0
votes
1answer
106 views

Neural Network learn limits

I was wondering if there is a way to know the limits of how much can an associative neural network learn. I want to make a simple network that recognises a few words, maybe even correct them(if i ...