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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5
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523 views

Opencv ML functions want CvFileStorage* instead of cv::FileStorage*

I am using the CvANN_MLP functions from the machine learning libraries in Opencv, and I want to write my trained network to a file. I have been able to do this fine with cv::FileStorage for keypoints ...
4
votes
0answers
197 views

Rprop implementation

I'm trying to implement rprop by using my old backprop code as a basis. I'm working on a perceptron with one hidden layer. Rprop algorithm is fairly simple, but I haven't figured all things out. This ...
3
votes
0answers
37 views

Wavelet Neural Networks : why no Inverse Transform?

i'm wondering why in a Wavelet Neural Network, there is no Inverse Transform that recompose the signal? How come only the wavelet coefficients are enough to find the wanted signal? Wouldn't it be ...
3
votes
0answers
85 views

Simplify completely connected directed networkx graph

Is there an algorithm in networkx for dealing with completely (or very highly) connected directed graphs (DiGraphs)? I have a network of flows which are all non-zero but vary hugely in magnitude. I ...
3
votes
0answers
540 views

trouble with recurrent neural network algorithm for structured data classification

TL;DR I need help understanding some parts of a specific algorithm for structured data classification. I'm also open to suggestions for different algorithms for this purpose. Hi all! I'm currently ...
3
votes
0answers
162 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 = ...
2
votes
0answers
23 views

Theoretically, can everyday computing tasks be broken down into ones solvable by a neural network?

MIT Review recently published this article about a chip from IBM, which is more or less a Artificial neural network. Why IBM’s New Brainlike Chip May Be “Historic” | MIT Technology Review The article ...
2
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0answers
45 views

Should I train my weak classifier at each AdaBoost iteration?

I'm rather new to machine learning or even programming itself, so I'm sorry if questions that I'm about to ask don't make much sense. So I've been using 5 different, and not so weak classifiers (5 ...
2
votes
0answers
63 views

Neural Network training error stochastic gradient descent

I have this implementation of a feed forward neural network with stochastic gradient descent in python. When training a NN instance with the xor gate, it trains just fine. But when I train the ...
2
votes
0answers
55 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 ...
2
votes
0answers
53 views

Neurolab newff output range and different resutls from network

I realized that the newff output is fixed to range [-1, 1] and I do the following to test how should output outside the range work. import neurolab as nl import numpy as np # Create train samples x ...
2
votes
0answers
57 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 ...
2
votes
0answers
108 views

Handwritten digit recognition with neural network - using RBM

assume there are many training samples of 20x20 pixel'd handwritten digits. I trained them with multi-layered Restriected Boltzmann Machine neural network. The top layer consists of 10-neuron that ...
2
votes
0answers
63 views

Encog Framework not giving acceptable error rate

I have a very small dataset, only 200 rows. I have only 3 columns; the first two are numeric (negative and positive) and the last is letter. I am attempting to classify the last column based on ...
2
votes
0answers
495 views

Matlab + Neural Networks + 2 CUDA GPU cards PC experiment doesn't behave as I expect

I did two experiments involving Matlab, Neural Networks, and two very different PCs. The second one (the better), has two CUDA GPU cards, so I expected that it's speed be higher a lot but ...
2
votes
0answers
312 views

Implementing deep belief network for topic modelling

I'm trying to implement the deep belief network for the Semantic Hashing article (http://www.cs.toronto.edu/~hinton/absps/sh.pdf) by Geoffrey Hinton and Ruslan Salakhutdinov. I have a hard time ...
2
votes
0answers
594 views

Pybrain outputs same result for any input

I am trying to train a simple neural network with Pybrain. After training I want to confirm that the nn is working as intended, so I activate the same data that I used to train it with. However every ...
2
votes
0answers
617 views

Is there a way to set up a multi-hidden layer neural network with the mlp method in the caret package?

The mlp method in package caret calls the mlp function in RSNNS. In the RSNNS package, I can set up as many hidden layers in the neural net as I like by setting the size parameter, e.g. data(iris) ...
2
votes
0answers
290 views

Looking for open source Probabilistic Neural Network implementation in Visual C#

Has anybody seen an open source neural network library that implements Donald Specht's Probabilistic Neural Network (PNN) architecture? I've looked at several of the most popular open source neural ...
2
votes
0answers
176 views

jocl neural network

I wrote a neural network in java and it looked like a good idea to take the computation on the gpu for performance issue. The problem I have is that its too slow... I have used jocl to do so. I dont ...
2
votes
0answers
818 views

C# AForge, program freezes at learning stage

I'm playing around with AForge. I copypasted the example from AForge website. using System; using System.Collections.Generic; using System.Linq; using System.Text; using AForge; using AForge.Neuro; ...
2
votes
0answers
653 views

detailed output for nnet function in R

I am using the nnet function from the nnet package in R to develop a feed-forward multilayer neural network. I am interested in obtaining more detailed output of the prediction error associated with ...
2
votes
0answers
323 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 ...
2
votes
0answers
195 views

“Translating” the parameters of a saved FANN network

I am training a neural network using the FANN library and I find the library pretty impressive. The problem is that I when I tried to "export" (manually) the weights and the formation of the network ...
2
votes
0answers
328 views

Neural Network training using PSO in R

I need to train a neural network using PSO algorithm in R enviroment. I already know all the R packages about neural networks ( neuralnet, AMORE, etc. ), but no one of these includes PSO training ( ...
2
votes
0answers
356 views

Neuro-fuzzy system

I am looking for software/tool in java which implements the neuro-fuzzy system. I spent a little time in googling around and found encog, neuroph for neural networks in Java. But I need something ...
2
votes
0answers
313 views

How to incorporate FANN with other C libraries?

I am using FANN, pyfann in particular, for signature recognition. Before I can use AI, I have to prepocess the image first using the imagelab, a compilation of image processing libraries like ...
1
vote
0answers
32 views

Octave or Matlab on Mac OS X 10.9.4

I am currently reading Simon Haykin's Neural Networks and Learning Machines, 3rd edition and I would really like to do the experiments that are present in the book. In order to do that I need Matlab, ...
1
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0answers
24 views

MATLAB neural network weight and bias initializaiton

I'm creating a neural network in one part of my program and using it's weights and biases for another neural network in other part so I have the following code: net_b = patternnet(10); net_b = ...
1
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0answers
39 views

Can neural network fail to learn a function? and How to choose better feature descriptors for pattern recognition?

I was working on webots which is an environment used to model, program and simulate mobile robots. Basically i have a small robot with a VGA camera, and it looks for simple blue coloured patterns on ...
1
vote
0answers
24 views

How to train neural networks on big sample sets in Matlab?

I am trying to train neural network on big training set. inputs consists of aprox 4 million of columns and 128 rows, and targets consisting of 62 rows. hiddenLayerSize is 128. The script is ...
1
vote
0answers
37 views

What are x1_step1_xoffset, x1_step1_gain and x1_step1_ymin in a neural network generated by genFunction in Matlab?

I'm working with Matlab's Neural Network toolbox and I have generated a neural network function with genFunction. I would like to know what mapminmax_apply function does, what are these variables ...
1
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0answers
30 views

What is R squared for a neural network and what does it signify?

I calculated R square for my neural network based on a formula I found somewhere, which goes something like: It should be something around 0.98-0.99. But, when I operate it on my network, it yields ...
1
vote
0answers
38 views

Machine Learning: Simulated Annealing on Autoencoders

I have implemented simulated annealing for solving the cost function of a simple weight tying neural network, but am receiving some weird results. Logic: Forward prop : f(W*x+b), where f = tanh, W ...
1
vote
0answers
23 views

caret package is not using all the registered cores, using 'nnet' method for training

I am using the train() function of caret package with method='nnet', and I have registered 6 cores using doMC. But it uses only one core. This is my code: library(caret) library(foreach) ...
1
vote
0answers
25 views

Neural network parameter matrix

I'm trying to understand a Neural network result performed with Mathematica program. The input code is: n0 = InitializeFeedForwardNet[trainingI, trainingO, {3}, RandomInitialization -> ...
1
vote
0answers
26 views

OpenANN/PyBrain : sparse input Vectors

Does the OpenANN (or PyBrain or any other open-source scalable) project have support for sparse inputs vectors?For example input vectors represented in libsvm format? I want to build an autoencoder ...
1
vote
0answers
34 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
0answers
78 views

Neural network for OCR (only digits)

've been working on a neural network for an OCR to recognise digits. For the training, i used a set I got from an online course (which was taken from the MNIST database). The training values are in ...
1
vote
0answers
54 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
0answers
33 views

Apply neuralnet training function on Date Type in R

I have a dataset as follows- Transaction.Date Transaction 26/05/2014 Dr. 26/05/2014 Dr. 22/05/2014 Cr. 21/05/2014 Dr. 17/05/2014 Dr. 12/5/2014 Dr. 6/5/2014 Dr. 3/5/2014 Dr. 3/5/2014 ...
1
vote
0answers
106 views

OCR algorithm improvement

I'm creating an OCR based on Java. My objective is to extract text from a video file (post-processing). It has been a difficult search, trying to find free, open-source OCR that works purely on ...
1
vote
0answers
31 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
0answers
172 views

caret::train: specify further non-tuning parameters for mlpWeightDecay (RSNNS package)

I have a problem with specifying the learning rate using the caret package with the method "mlpWeightDecay" from RSNNS package. The tuning parameters of "mlpWeightDecay" are size and decay. An ...
1
vote
0answers
49 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 ...
1
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0answers
59 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 ...
1
vote
0answers
44 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 ...
1
vote
0answers
49 views

Performance information unavailable while training MATLAB Neural Networks - always trains to maximum epoch

I'm using the MATLAB neural network toolbox to solve a measurement/classification problem for a degree project, but I've been having a number of difficulties of which the latest I cannot figure out ...
1
vote
0answers
45 views

Where can I find fully trained deep networks for download?

I'm trying to examine a hypothesis about the statistics of trained "deep" networks. There have been quite a few impressive results published in recent years (most recently, state of the art state ...
1
vote
0answers
92 views

Unable to set up Pybrain LSTM module for Reber Grammar

I'm trying to use Pybrain to predict sequences of characters belonging to the Reber grammar. Concretely what I'm doing is generating strings using the Reber grammar graph (you can check it here : ...