This refers to techniques for configuring the structure and parameters of neural network parameters.

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MLP x LN when should I use MLP or LN images recognition algorithm [closed]

I am developing a system to help the disabled to recognize patterns on images. So I would like to know what the best algorithm. The pros and cons and which algorithm is faster: MLP or LN?
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1answer
64 views

Error for every epoch in training a ANN

Hi everyone and thank you for taking time to read this. I have the following code to train a neural network: P = [-1 2 0.5 3]; T1 = 1; T2 = 2; T3 = 1.5; net = newff([-1 3;-1 3;-1 3;-1 3],[2 ...
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1answer
61 views

Python Neural Network to optimize AUC

is there a Neural Network package in Python that allows to directly optimize AUC? Thanks, G
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1answer
30 views

Encog getError() returns Infinity

I built following neural network with help of Encog library for Java network.addLayer(new BasicLayer(DataCooker.DATA_SIZE)); network.addLayer(new BasicLayer(DataCooker.DATA_SIZE)); ...
2
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1answer
198 views

Neural Network with backpropogation not converging

Basically I'm trying to implement backpropogation in a network. I know the backpropogation algorithm is hard coded, but I'm trying to make it functional first. It works for one set of inputs and ...
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1answer
129 views

Regularization in Feed-forward Neural Network

I have just gone through some on-line open course lectures by Andrew Ng in Coursera. At the end of the lectures regarding Neural Networks, he explained reguralization but I am afraid I missed ...
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2answers
428 views

Implementing neural network for vowel recognition in matlab - input layer units and the structure?

I am doing a project on vowel recognition and I need to implement a neural network. I am new to this field so I am not entirely sure about how to do it right. I have a training set of 800 words with 8 ...
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426 views

Backpropagation on Neural Network in Python

I've implemented a neural network (deep autoencoder), on which I'm trying to perform backpropagation. The network consist of sigmoid activation functions and a softmax activation function at the ...
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1answer
50 views

Determining Number of Outputs for trading type ANN

I am currently trying to implement an ANN that does 1 for 1 Trades with 8 different possible Goods. I am wondering how I determine the number of outputs necessery for the ANN to perform adequatly. ...
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1answer
146 views

How much data do I need for recommender system?

I have to develop a personality/job suitability online test for an HR department. Basically, users will answer questions, on a scale of 0-10 for example, and after say 50 questions, I want to ...
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18 views

what are sensors and actuators in Neural Network Lingo

I'd like to know what senors and actuators are in Neural Network lingo. More specifically i'd like to know what those words mean when used in the context of the following paper ...
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1answer
260 views

Choosing starting parameters for the Levenberg-Marquardt Algorithm on a Neural Net

I'm currently working on a project in which an ANN is being used. For the training algorithm, I selected LMA as it is fairly fast and versatile, and I read a paper which suggests it is the best ...
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1answer
123 views

Reducing dimensionality of data using SOMs

As a part of a school project, I had to read a paper by Steven Lawrence about using SOMs and CCNs to detect faces. For those of you who are curious, heres the paper: ...
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1answer
83 views

Neural network for pattern recognition

I want you to help me figure out which problem am I dealing with (pattern recognition or time series forecasting) and find the best NN architecture suited for this problem. In my problem, I have many ...
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0answers
40 views

Normalization of Weights and Error Sensitivities have impact on MLP similar as normalization of Images

My question is, As normalization of Images are necessary in a MLP for better performance and learning global local minima. Similarly should we also normalize learned weights and sensitivities at each ...
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213 views

RBF neural network parameters size

I want to define a function approximation by RBF neural network in MATLAB. RBF needs there parameters as "unit centers", "sigma" and "weight". I have a dataset by 1000 records and 10 features. first ...
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1answer
95 views

ANN: Language detection

I am trying to recreate google's "Hello Prediction" algorithm to test my network. I got my training samples from the same place. Since I dont expect you to follow the above link, in short about ...
0
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1answer
186 views

ANN: How to correctly pick initial weights to avoid local minima?

In backpropagation training, during gradient descent down the error surface, network with large amount of neurons in hidden layer can get stuck in local minimum. I have read that reinitializing ...
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2answers
536 views

Designing Neural Networks

I am learning about Neural Networks and back-propagation. I think I understand how the network works, in terms of input, output, hidden layers, weights, bias etc However, I still don't fully ...
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1answer
714 views

scaling inputs data to neural network

Do we have to scale input data for neural network? How does it affect the final solution of neural network? I've tried to find some reliable sources on that. The book "elements of statistical ...
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0answers
124 views

Configuring ANN for face recognition

Before I ask my question, here's a brief summary of my project: I'm using OPENCV's built-in function to detect a face in a cam-feed. After that I'm processing the image which contains the face, ...
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48 views

FANN for function approximation

I need some help with learning a neural network using FANNTool (automatical parameters setting) with a given data file, which can be found here: http://goo.gl/mV34T. This data was generated with a ...
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1answer
515 views

Issue with gradient calculation in a Neural Network (stuck at 7% error in MNIST)

Hi I am having an issue with my calculation of checking the gradient when implementing a neural network in python using numpy. I am using mnist dataset to try and trying to using mini-batch gradient ...
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1answer
58 views

Neural Network seems to work fine until used for processing data (all of the results are practically the same)

I have recently implemented a typical 3 layer neural network (input -> hidden -> output) and I'm using the sigmoid function for activation. So far, the host program has 3 modes: Creation, which ...
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1answer
181 views

Multi threaded AForge.NET training

I am using AForge.NET ANN and training it on my training set. Because the training is single threaded and the process can take ages, I wondered if it's possible to run a multi threaded training. ...
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1answer
2k views

Neural network, is it worth changing learning rate and momentum over time

Is it worth to change learning rate after certain conditions are met? And how and why to do it? For example net will start with high learning rate and after squared error is low enough learning rate ...
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1answer
628 views

Continuously train MATLAB ANN, i.e. online training?

I would like to ask for ideas what options there is for training a MATLAB ANN (artificial neural network) continuously, i.e. not having a pre-prepared training set? The idea is to have an "online" ...
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1answer
245 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 ...
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1answer
202 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 ...
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3answers
795 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 ...
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1answer
107 views

Neural Network for Phishing detection , features to be extracted from URL and contents to pass as input

This is in continuation with my Previous question We successfully extracted the URL and contents from a website which we are supposed to check for phish . Now we have a database of whitelist and ...
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1answer
1k views

Neural network for multiple input and multi output (MIMO) systems

I want to build a neural network for a multi input and multi output (MIMO) system described as: y1(t)= f1( x1(t), x2(t),...xn(t)) y2(t)= f2( x1(t), x2(t),...xn(t)) ..... ..... ym(t)= fm( x1(t), ...
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2answers
152 views

Artificial Neural Network that creates it's own connections

I've been reading about feed forward Artificial Neural Networks (ANN), and normally they need training to modify their weights in order to achieve the desired output. They will also always produce ...
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3answers
106 views

Is there a rule/good advice on how big a artificial neural network should be?

My last lecture on ANN's was a while ago but I'm currently facing a project where I would want to use one. So, the basics - like what type (a mutli-layer feedforward network), trained by an ...
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283 views

Troubleshooting Image Recognition Neural Network Issues

Thanks in advance for reading this. So I'm attempting to write a neural network for recognizing a specific logo within an image. I basically have a sliding window of a specific aspect ratio that will ...
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2answers
524 views

Weight Initialisation

I plan to use the Nguyen-Widrow Algorithm for an NN with multiple hidden layers. While researching, I found a lot of ambiguities and I wish to clarify them. The following is pseudo code for the ...
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1answer
283 views

Can you use multiple output layers in a neural network without using softmax?

I'm working on implementing a neural network for a class project and I was just wondering if it is possible to do multiclass classification with a neural network without using softmax? When I asked ...
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1answer
164 views

Neural Network Becomes Unruly with Large Layers

This is a higher-level question about the performance of a neural network. The issue I'm having is that with larger numbers of neurons per layer, the network has frequent rounds of complete stupidity. ...
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1answer
1k views

Q-Learning in combination with neural-networks (rewarding understanding)

As far as my understanding is, it's possible to replace a look-up-table for Q-values (state-action-pair-evaluation) by a neural network for estimating these state-action pairs. I programmed a small ...
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1answer
217 views

What is the rule-of-thumb relation between sample size and feature vector dimension?

It is generally known that larger the no. of features making a up a feature vector, the more number of samples are needed to train a classifier. In my case, I'm using a backpropagation multi-layer ...
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2answers
482 views

Neural Network For a Non-Linear Function

I am trying to find an appropriate neural network structure to learn a function of the following form: F(x1,x2,x3,x4,x5)= a*x1+b*(x2-x4)/(x3-x4) + c*x5. I am using the matlab's neural network ...
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1answer
358 views

Neural network not training enough well

I read an idea for a project in the book "Introduction to Machine Learning" by Tom Mitchell. The project is about determining the direction of the face (left, right, down, straight). I use my own ...
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1answer
450 views

more accuracy in neural network result with matlab

ITNOA Hello all, I tried to use a neural network to predict some data. I used Matlab neural network fitting toolbox and i could predict some tests. but the problem is the accuracy is not good enough ...
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1answer
73 views

Backpropagation alhorithm: where did I make mistake?

There is my implementation of BP alhorithm. I tested it and found incorrect data after training. So, where did I make mistake? double OpenNNL::_changeWeightsByBP(double * trainingInputs, double ...
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1answer
560 views

Neural Network Initialization - Nguyen Widrow Implementation?

I've had a go at implementing the Nguyen Widrow algorithm (below) and it appears to function correctly, but I have some follow-on questions: Does this look like a correct implementation? Does Nguyen ...
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1answer
381 views

MATLAB - gradient in neural network starting from NaN?

I was trying to use the neural network tool in MATLAB 2011. I have come across a very weird problem. I just used the GUI of the neural network to feed my inputs and everything. My gradient of ...
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1answer
422 views

minimum iterations neural network needs for XOR

what's the minimum number of exposures to the training set that a standard backprop needs to solve the xor problem? does another type of neural net solve it faster? what's the best setup (number of ...
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3answers
1k views

Neural Network to recognize accelerometer pattern

I'm building an application for Android devices that requires it to recognize, by accelerometer data, the difference between walking noise and double tapping it. I'm trying to solve this problem using ...
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301 views

FANN under Python is acting strangely. Is this because I'm using it wrong, or because of the limitations of the tool?

I have a number of records where I am trying to predict one field based on other fields. I set up a FANN neural net under Python, with ~10 inputs, 100 hidden nodes, and 2 outputs. When I went to ...
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60 views

Where do I find the latest fann lib release?

I found the latest fann (Fast Artificial Neural Network Library) documentation here: http://leenissen.dk/fann/html_latest/files2/gettingstarted-txt.html I need to use the new Self-Organizing Maps ...