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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22 views

Applying Temporal Derivatives on Audio and Video

I have a video dataset of people speaking out digit numbers from 0-9 randomly. My goal is train a neural network on audio/visual patterns of speech. To achieve my goal I first had to dissect this ...
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7 views

Matrix input - neural netowrk toolbox - matlab

I have following problem : -my input matrix is 25x38 ( each vector has 25 elements and I have 38 sets of vectors ) -my target vector is 1x38 ( each input vector produces one single scalar output ) ...
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1answer
29 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 ...
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1answer
27 views

Can an Android phone score a neural network in real time?

I have a (previously trained) neural network with 1200 pixels (inputs), 20 hidden nodes in a single hidden layer, and one output node. I believe a new prediction will require (1200*20 ...
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1answer
21 views

Increasing the number of epochs to reach the performance goal while training neural network

I am training the neural network with input vector of 85*650 and target vector of 26*650. Here is the list of parameters that I have used net.trainParam.max_fail = 6; ...
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1answer
25 views

How to train a Neural Network to give me a classified output based on male or female?

In my project I have two vectors of [200x1] that should be used in Neural Network and trained in a way that it gives me the subject's fingerprint gender. I think I should provide a target vector ...
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0answers
21 views

Graphical Neural Networks

I am working on a project Image Recognition using Neural Networks using Encog 2.5.0 in JAVA. How may i save Neural Networks Training. i want to save a training. My task was to save a Neural Networks ...
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9 views

How to create multi-input multi-output recurrent neural networks with matlab

How do I a build a recurrent neural network with m-input time series and n-output time series with MATLAB NN toolbox.
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6 views

Hopfield neural network training [on hold]

I have a 50X50 matrix and 1 bit o/p. I have to train my data by MATLAB under hopfield network. But I dont knoe how to use nntool box for hopfield network. can anyone please help me?
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2answers
22 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 ): ...
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8 views

Unequal input and output sequence length in pybrain

I currently try to predict phonemes from a string with a recurrent neural network in pybrain. The problem is that my training set (the cmudict data from nltk) doesn't provide me with a direct matching ...
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15 views

Why should neural network be initialized with small weight values?

Let's say I have a network with one input and N hidden nodes. If the input is one and the weights are very very small, e.g. 0.000001 and 0.000002, all the hidden nodes get roughly the same value and ...
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1answer
13 views

Normalise weights to produce midrange function signal

I'm making a multilayer perceptron and I need to choose weights for input -> hidden unit. Our lecture said: Aim is to select weight values which produce midrange function signals Select ...
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12 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.
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12 views

matlab - Neural Network newpr() not accepting complex data

I'm not sure if anyone can help me, but I am getting an error when trying to create a new pattern recognition network. First, what I am doing is taking two sound files and running them through an FFT. ...
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18 views

Recurrent neural network in RSNNS packages

From example in description of RSNNS packages. data(snnsData) inputs <- snnsData$eight_016.pat[,inputColumns(snnsData$eight_016.pat)] outputs <- ...
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20 views

modeling multiple dependent variables in R?

I am looking to predict groups of items that someone will purchase... i.e., I have multiple, colinear dependent variables. Rather than building 7 or so independent models to predict the probability ...
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26 views

Diffference between Bayesian Network and other graphical model

Referring to this answer Difference between Bayesian network and neural network, I have come across another graphical model (1) Fuzzy Cognitive Map and (2) Neuro-Fuzzy. Bayesian Network (BN), Fuzzy ...
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16 views

Bad classification even after training neural network

Even after training the neural network and getting a correct classification of 98.5 percent in the confusion matrix after training. When I test it with sample data its classifying it wrongly. Any ...
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23 views

Why asymmetric weights of RBM can be learned although the network is symmetry?

I tried to implement the Restricted Boltzmann Machine to confirm the utility of the deep learning method. I implemented a RBM and fed the MNIST character recognition data for one layer ...
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12 views

Is it OK to increase validation checks and decrease min gradient while training neural network?

My input vector is a 130*85 matrix and my target vector is 130*26 matrix. I am using the below parameters for training the network with 60 hidden nodes. net.trainParam.max_fail = 50; ...
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0answers
8 views

Details of time and memory in Weka classifiers

I'm using Weka 3.6 and I want below information in Weka classifiers: (Training Time), (Classification time), (Testing Time) and (Memory usage) for each algorithm of classify tab; please help me... ...
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26 views

Is the training method of a Convolutional Network still known as deep learning?

In papers such as ImageNet Classification with Deep Convolutional Neural Networks http://www.cs.toronto.edu/~fritz/absps/imagenet.pdf the training method seems to be basic backpropagation with ...
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9 views

iRPROP+ Multilayer Perceptron

Hello everyone This is the code of iRPROP+ algo for my MLP. When I try to train my network, standart deviation decreases for 1500 epoches (so slow: from ~0.5 to 0.4732) but suddenly it starts to ...
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12 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; ...
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28 views

Neural network results

I am working on handwritten character recognition. I have trained the neural network with (130 * 85) inputs and (130 *26) targets. I am using the nprtool in matlab and here are the results which I am ...
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19 views

“Expanding” the Kernel Trick to recover a neural network

I am wondering whether there are any techniques out there to take the result of a kernel SVM, and "expand" it to recover a (possibly deep) neural network where a simple, standard nonlinearity is ...
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1answer
33 views

CUDA Network Simulation [closed]

I have to simulate a network in CUDA but I don't know much about this technology. I am familiar with C/C++, C# and Java language. Can please someone tell me from where I should start?
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18 views

OCR in Neural Network

I'm working on OCR project in neural network using c# my program depends on converting photos containing letters into vectors, feed them to the network, training it to recognize them and gives the ...
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1answer
78 views
+50

Overflow Error in Neural Networks implementation

I m trying to build my own implementation of neural network back propagation algorithm. The code i have written for training is this so far, def train(x,labels,n): lam = 0.5 w1 = ...
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23 views

Why CNN has translation invariance property [closed]

I don't know why Constitutional neural network has translation invariance property after applying spatial pooling. Can some one prove it, or tell me which paper had proven it
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8 views

why a kernel is flipped before convolving with an image in Conv2 function of matlab?

I am trying to convolve an image with a randomly generated kernel. I have read about matlab conv2, that it first flipped and than convlove the kernel with the image. Is flipping at 180 degree ...
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1answer
14 views

Is it possible to get originals HQ images from CIFAR10 dataset?

I'm currently working on my thesis on the neural networks. I'm using the CIFAR10 as a reference dataset. Now I would like to show some example results in my paper. The problem is, that the images in ...
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11 views

What do you call a network that shares a common topology to another?

What do you call a network that shares a common topology to another? In networking for example, you have a physical and a logical topology. What does one call networks that share a common physical ...
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11 views

Echo State Network stops working with only 32 bit precision

I am trying port the code of an already working example of an echo state network that is running in python on the CPU to code that trains the network using the GPU. The library I am using is Theano. ...
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17 views

Echo State Networks (ESNs) - N Point Ahead Time Series Prediction - Mackey-Glass17 vs My own Time Series

My question is related to predicting 3 minutes ahead i.e. 180 points ahead. Because I compressed my time series data as taking the mean of every 2 points as one, I have to predict (N=90) step-ahead ...
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0answers
32 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 ...
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1answer
82 views

image processing with neural network

I am working on the topic of brain tumor segmentation. I have used "Bounding Box Method Using Symmetry" algorithm to find and segment the tumor. Following is the output As you can see that I have ...
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0answers
24 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). ...
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1answer
39 views

Football result prediction using neural networks [closed]

I am attempting to use neural networks to predict the outcome of a football match. i have the following input variables: Home team: rating, attack rating, midfield rating, defense rating, league ...
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1answer
25 views

Will I be able to train the neural network with negative values in feature vector?

I am working on handwritten character recognition . I have extracted certain features of a image to feed it to neural network. But , some of these values are negative. Can I feed these values to train ...
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17 views

Predict with ORE (Oracle R Enterprise) neural network

i'm trying to use some features of Oracle R Enterprise version 1.3 but i can't reach the goal that i want. I'm using ore.neural function to create a Neural Network Model with some trainning data ...
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1answer
21 views

what's the difference between using one output node and two nodes to classify two class with ANN

When Using ANN to classify two classes task. The output nodes can be either one or two. For example. The architecture of NN is 400*10*1 for one Node, and 400*10*2 for two Node. If I Use two nodes. ...
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3answers
45 views

Neural network - different input layers

I've just started working on image recognition project, and wanted to add neural network to it. Right now i can transform images into an list of important point locations. I want to pass that list to ...
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0answers
24 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: ...
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2answers
43 views

Which is more efficient to use on a mobile platform SVM or Neural Networks ? [closed]

I'm currently working on a framework for emotions and I'm planing on using input from a camera on a mobile platform to recognize the user's current emotional expression, using the CI2CV i managed to ...
0
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0answers
19 views

Checking PE header integrity

I have created a project on identifying malicious files using an artificial neural network. I am giving some selected features from PE structure as inputs to the neural network, and it is classifying ...
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1answer
14 views

regard Neural Network input format

I have studies Neural Networks and understood how it's work. generally, all the examples I have seen talking about transforming the values of the inputs to boolean values and to create vector of ...
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44 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 ...
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0answers
22 views

Obtaining the forecasted future values for a time series using neural networks in Matlab

I have a dataset of 60 points. I have supplied 58 points as input data to a NAR network in Matlab(using NNToolbox) and tried developing a model which would help me forecast the next two values. I wish ...