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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25 views

Back-propagation algorithm converging too quickly to poor results

I'm trying to implement the back propagation algorithm for a multi layer feedforward neural network, but I'm having issues getting it to converge to good results. The reason being, the gradient ...
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1answer
27 views

Designing a neural network for decision making depending on 50 factors

I am building a back-propagation neural network (with Encog library) that makes decisions depending on about 50 factor, I want help with its best design : We need 50 input neuron for sure, and 4 ...
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1answer
16 views

Algorithm for cross selling -like amazon people who bought this

New to this and a long time since I've done any programming or forums .... However, this is really getting under my skin. I've been looking around at the algorithms used for Amazon etc on the ...
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1answer
27 views

How to plot a list of nodes with relative strength scores in MATLAB

I would like to represent a collection of interconnected nodes with connection strength on a graph of nodes. Every node has a matrix of values between 0 and 1 for connection strength to all other ...
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0answers
43 views

Neural Network for hand written digit recognition [on hold]

I have create the neural network with three layers. 1 layer - 500 inputs 2 layer - 500 inputs 3 layer - 10 output classes. I have synthesized the ...
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0answers
16 views

time lag in time delay neural network in c++

I implemented a prediction of one step ahead in c++ code with FANN library and all things should be bug free. Basically I have a feed forward NN and a time series to predict, I have 10 tap delay at ...
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0answers
15 views

How do we get/define filters in convolutional neural networks?

How to implement a deep autoencoder (eHow do i obtain filters from convulutional neural network(CNN)? My idea is something like this: Do random images of the input images (28x28) and get random ...
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1answer
18 views

How to set normalization range in Encog?

I want to create a training set from a CSV file a normalize it to either [0, 1] or [-1, 1] range (according to what activation function is chosen by a user). How can I do that? After reading Encog ...
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2answers
24 views

Train Neural Networks on a Data of type Table

I loaded a huge CSV file of 2000 instances with numeric values and limited text values(some attributes have values like 'Yes' 'No' 'Maybe'. The above data was imported using readtable in Matlab. I ...
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21 views

Coordinates as features in matlab neural network

I am trying to classify an image based on inputs from three different areas of the image. So, my inputs are actually clusters of pixels expressed in coordinates (pixel values are logical since I am ...
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0answers
15 views

Speeding up pybrain execution

Is there any way to speed up the pybrain training specifically? I came across arac that claims to speed it up to 10x but it is not compatible with the pybrain 0.31. Ideas?
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2answers
42 views

Creating a basic feed forward perceptron neural network for multi-class classification

I am new to neural networks and I want to create a feed forward neural network for mutli-class classification. I am allowed to use any code that is publicly available but not any MATLAB ToolBox as i ...
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2answers
24 views

Theano HiddenLayer Activation Function

Is there anyway to use Rectified Linear Unit (ReLU) as the activation function of the hidden layer instead of tanh() in Theano? The implementation of the hidden layer is as follows and as far as I ...
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0answers
20 views

neural network forecasting with R

I am interested in building a neural network for forecasting time series data using R with more than one hidden layer. Can anyone tell me a package to do this? Thank you
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1answer
25 views

How is the desired output of a neural network represented so as to be compared with the actual output?

A neural network learns to approximate the desired output and hence one can use unknown testing sets and classify each testing example according to its respective class. For example a neural network ...
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0answers
16 views

Is there an easy way to perform a Gamma Test within the Neural Network Toolbox in Matlab?

I am still pretty new to matlab and neural networks but so far I have succeeded in creating a code for a neural network within the neural network toolbox. Now I want to determine which inputs I want ...
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0answers
10 views

Sequence Classification error pybrain

In a pybrain sequence classification task, how do I calculate the error of a validation and training set? I found the below code. tstdata, trndata=ds.splitWithProportion(0.25) trnresult=100. ...
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1answer
45 views

Multi Output Neural Networks

Up until know I only used neural networks to classify a single output, I set one output neuron for each class and check which neuron has the highest/lowest activation. What I am trying to do is to ...
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0answers
18 views

Activation value of pybrain recurrent network is zero

I tested a dummy program to get the activation from the hidden layer of the network. from pybrain.tools.shortcuts import buildNetwork from pybrain.datasets import SupervisedDataSet, ...
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2answers
35 views

Graphically, how does the non-linear activation function project the input onto the classification space?

I am finding a very hard time to visualize how the activation function actually manages to classify non-linearly separable training data sets. Why does the activation function (e.g tanh function) ...
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2answers
40 views

Designing the hidden layers of a neural network

I have classification problem, I have an input shape (16x16 image) and I need to classify that shape as the correct shape or not, so I have 256 (16*16) input neurons and one output neuron. What about ...
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2answers
55 views

implementing neural networks using c vs using c++? [closed]

I'm imlementing Neural Networks using C language for a class. I haven't programmed with C++ nor with C for a long time. I started my first couple implementations using C language and it was a pain in ...
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1answer
20 views

What is the correct architecture for convolutional neural network?

I have seen several different architectures for convolutional neural network (CNN). I am confused which one is the standard and how do I decide what to use. I am not confused by the number of layers ...
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1answer
37 views

why pretraining for convolutional neural networks

Usually Back propagation NN has the problem of vanishing gradients. I found that Convolutional NN (CNN) some how get rid of this vanishing gradient problems (why?). Also in some papers some ...
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1answer
26 views

How to implement bi-directional network in pybrain

I am trying to implement a bidirectional LSTM network in pybrain. Anyone has any sample code as an example?
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3 views

Difference between exact steepest descent and epsilon step steepest descent

Can someone brief me on what is the difference between exact steepest descent and epsilon step steepest descent. Which one is better? Exact Steepest: compute a which maximizes function f(x+ar) ...
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1answer
26 views

How to implement regularization in pybrain

Anyone can give a sample coding of implementing regularization technique in pybrain? I am trying to prevent overfitting in my data and currently looking for a method like early stopping, etc to do so. ...
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13 views

Neural network researchers

I'm looking for a PhD position in Germany and around (Switzerland maybe), in the field of Neural Networks (perhaps deep learning). Any recommendations? Any big shots in Germany and around (except ...
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1answer
34 views

Basic neural network returns the average of the target outputs

I'm currently coding a basic neural network that is supposed to calculate a XOR, using backpropagation. However, it instead outputs the average of its target outputs. (A XOR returning {0,1,1,0}, that ...
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0answers
11 views

Values of weights and outputs in Convolutional Neural Networks

I'm wondering what the range of values are for the weights and inputs are in a convolutional neural networks. My understanding is as follows: If the input is a grayscale image, the input value of the ...
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1answer
15 views

What should be the value of parameters of neural network having large data sample?

I have done coding for neural network in Python for the multi-layer,feed-forward, back-propagation structure. In this network structure I have 24 nodes in input layer, 18 nodes in hidden layer and 1 ...
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1answer
15 views

Clarification on bias of a perceptron

Isn't it true that if a bias is not present, a line passing through origin should be able to linearly separate the two data sets?? But the most popular answer in this -->> question says y ...
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2answers
33 views

How to calculate data by constructed neural network toolbox?

I have a series of x and y data. For Example: x=[1 2 4 5 7 8 9 18 29] y=[4 7 11 18 35 42 67 100 110] I have used Neural-Network toolbox of Matlab and have made a neural network model.(I have put my ...
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0answers
21 views

neural network modular inverse

Can a neural network find a modular multiplicative inverse? I've programmed a single hidden layer network that can approximate piecewise, continuous, and modular functions, but will not compute ...
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3answers
38 views

how much can d3 js scale

I am trying to build a network graph (like a network for brain) to display millions of nodes. I would like to know to what extent I can push the d3 js to in terms of adding more network nodes on one ...
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1answer
33 views

Why the average weight of rnn keeps climbing?

I'm using Pybrain to train a recurrent neural network. However, the average of the weights keeps climbing and after several iterations the train and test accuracy become lower. Now the highest ...
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3answers
64 views

How to train a network for a better performance?

I have a 10 by 57300 matrix as an input, and a 1 by 57300 matrix as an output that only includes 0 and 1.I tried to train neural network with feed-forward back propagation and layer recurrent back ...
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1answer
51 views

How should I setup my input neurons to recieve my input

I need to be able to determine if a shape was drawn correctly or incorrectly, I have sample data for the shape, that holds the shape and the order of pixels (denoted by the color of the pixel) for ...
2
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0answers
19 views

pyramid pooling and max pooling in convolution neural network

I would like to use Gaussian pyramid for pooling in convolution neural network. The target for this is to build a decovolution network to reconstruct the input(a image). That is to say when I obtain a ...
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2answers
60 views

Why is there a lot of interest in the NLP and Machine Learning community for deep learning?

Why is there a lot of interest in the NLP and ML community for deep learning architectures? Why do they need approaches to learn complex non-linear relationships? There are any ideas? THanks in ...
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0answers
39 views

Neural Networks without dynamics

I am using neuralnet and nnet packages. I have a data with 26 variables and 17 of them are binary data, and 9 of them are continuous. My predicted variable is a continuous. I have 1279 observation in ...
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I need to go through a loop in python multiple times. how do i do it

This works for one learning cycle (neuron) but I want it to start over in order to further adjust a global variable. Since my data points are, for example, n, I want to continue to adjust the ...
2
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1answer
75 views

OCR using a Neural Network

I'm working my way toward understanding the usage of a NN in order to perform OCR, my goal is a bit different than the usual OCR algorithms. My objective is to be able to determine if a specific ...
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0answers
42 views

Improve visualization of a large network plot in qgraph package

I came across with the qgraph package and I'm so grateful I did because I have got some many beautiful and informative plots. I am currently working with a larger database of 755 metabolites measured ...
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0answers
22 views

openCV neural network training

I was wondering if someone can help me get started on something that I think Neural networks might be good for. I have a set of videos that I can annotate by hand where I see a particular object of ...
2
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0answers
34 views

Convolutional neural networks: Aren't the central neurons over-represented in the output?

[This question is now also posed at Cross Validated] The question in short I'm studying convolutional neural networks, and I believe that these networks do not treat every input neuron ...
3
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1answer
265 views

Neural Network Array Pattern Recognition using Encog — How to test a next pattern?

I am using Encog library to solve a pattern recognition problem by following the basic example provied by Mr. Jeff Heaton. I have the pattern 1 3 5 4 3 5 4 3 1 which is my ideal pattern with ...
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1answer
36 views

How to implement Digit Recognition?

I want to implement Digit Recognition for my Minor Project. But I've no idea where to start with the topic and also I don't know anything about various ways by which it can be done. Can someone ...
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1answer
24 views

Gradient checking in backpropagation

I'm trying to implement gradient checking for a simple feedforward neural network with 2 unit input layer, 2 unit hidden layer and 1 unit output layer. What I do is the following: Take each weight w ...
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1answer
51 views

Types of Neural Networks to compare for stock prediction

i am currently doing a project on stock price predictions using neural networks. I intend to compare 3 different neural networks using the same data inputs (historical data and some technical ...