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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44 views

pybrain convert to one of many function assertion error

I'm trying to set up a neural network with classification through pybrain The way I understand it is I set up my data set. Fill it with data. Then use convertToOneOfMany to set the bounds? For ...
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23 views

Error in neural net in R

I have the following dataframe named train in R: rsro xo x1 x2 x3 rv br 4 0 0 0 0 8.4467 0.3337061885 1 1 0 0 0 8.0676 0.3435027205 0 0 0 0 0 9.0288 0.2894759898 ...
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48 views

Neural Network does worse with better input vector

Recently I've been developing a bot to play a perfect information, zero sum game. I'm using minimax to play so I need an evaluation function. Thus I've tried to create a feedforward neural network, ...
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15 views

Poor Performance of ANN with multiple data sets

I've implemented an ANN in Java, while following along with this site. When I train the ANN with one input/output vector pair, it works perfectly. Within a few hundred iterations, it was able to ...
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19 views

Feed list w/ unknown size to neural network

I want to evolve a neural network for a simple four button game. In this game there are up to 3 enemies, all of which can shoot multiple rockets. I have all /(player|rocket)(posision|orientation)/ ...
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36 views

Neural networks and distributed computing for parallelism

In a neural network are your just really calculating many consecutive sums. However, my reasoning isn't totally clear on the deeper technical issues with existing software packages. There are many ...
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33 views

State Normalization of RNNs

Perhaps a question better posed to Computer Science or Cross Validated? I'm beginning some work with LSTM on sequences of arbitrary length and one problem I'm experiencing and that I haven't seen ...
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15 views

How to copy/clone RSNNS network in R?

I would like to create multiple copies of my network instance to predict mutliple independent waves. Unfortunately simple reassigning does not work in this case, so what can I do? I attached a ...
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31 views

How does simple Recurrent Neural network predict a sequence from t-1 input

How does a simple sequence predicting Recurrent Neural Network(one input unit,one hidden unit,one context unit and one output unit) predict a simple sequence like "axcr".That is if the input character ...
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41 views

Weights are zeros after training in Caffe

I follow CIFAR-10 tutorial and eventually get cifar10_quick_iter_5000.caffemodel. Then, I load it in python: net = caffe.Net('examples/cifar10/cifar10_quick.prototxt', 'examples/...
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304 views

Regularisers in Keras vs. Caffe

I've edited an AlexNet in KERAS, trying to learn a single class (i.e. dogs/faces or not dog/faces). I have training samples of correct images so the Ytrain is [1, 0], and incorrect images so the ...
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69 views

Cross Validation of Wine Data set in Matlab

I am working on multi-layer perceptron of wine dataset on Matlab.I use back propagation with momentum (traingdm) and cross validation for the classification problem. Below I have full code for the ...
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30 views

Recurrent neural networks mapping complex input to scalar output

I'm evaluating the possible use of recurrent neural networks for inference control in theorem proving. The basic idea would be along the lines of, feed the network a conjecture serialized as ...
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65 views

Need help for achieve lower mse and mape in my ann architecture using matlab 2013a

i need some help for building the best performance ann architecture for rainfall forecasting in some village in indonesia with 360 data (months in 30 years). First of all i am a beginner in ann also ...
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36 views

Autoencoder maximal activation

I am trying to visualize what change each hidden unit of my autoencoder represents in my input space. So I was wondering, why do people only look at the maximal activation of a hidden unit in an ...
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92 views

Neural networks in matlab change newff to feedforwardnet

I'm fairly new to matlab, and I'm trying to do the following. Improve image contrast with aid of neural networks using the nntool library from matlab. I got the theoretical part down, and I decided ...
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78 views

Theano too many parameters error

I am trying to create neural network with theano and my code for now is: X_train = tone.DataSet x_train = prepare_for_rnn(X_train) tones = ['D'] y_train = convert_output(tones) model = Sequential() ...
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64 views

how to update a leaky integrate and fire neuron

I'm trying to implement a leaky integrate and fire neuron in C++, but can't figure out a good and efficient way to update the neuron's voltage when a new current arrives. I am using this code write ...
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62 views

The convolutional neural network i'm trying to train is settling at a particular range of loss value, how should i avoid it?

Description: I am trying to train an alexnet similar(actually same but without groups) CNN from scratch (50000 images, 1000 classes and x10 augmentation). Each epoch has 50,000 iterations and image ...
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218 views

why net.blobs['fc7'].data[0] giving all zeros

I want to extract face descriptors from photos of people. This is what I've done so far: First detected faces from photos using opencv library in python. Saved those faces in another image. Next I ...
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38 views

Documentation for SharpNEAT

I have been looking into SharpNEAT (c#) and found the tic tac toe tutorial on nashcoding but can't find any documentation on the library for like methods or anything. Does anyone know where I can find ...
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16 views

Why do AI-Neural Nets lack Graded Potential?

I want to build "cardiac pulse-network". A network that generates pulses without being dependent on external sensor input! Can't use clock as input! I would need 100billion clocks, running at ...
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227 views

Stock market to LSTM

I have completed the code that predict stock market with LSTM neural network. I have a problem in giving and receiving data from a neural network. I have minibatch, each minibatch have two arrays: the ...
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61 views

How to forecasting bivariate data in two columns using nnetar function of forecast package?

I have data in the following format: structure(list(Time = c("42005.38958333333", "42005.390277777777", "42005.390972222223", "42005.39166666667", "42005.392361111109", "42005.393055555556", "...
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42 views

ANN algorithms for optimal path searching

all. These days I've met a question on data analysis. I want to search an optimal path on a 3D landscape-like graph from a user-defined starting point to an end point. I've achieved it using rainfall ...
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16 views

Specify some rules for combiner in a Committee Machine

Assume the following test results for the three networks trained are given. how to find a committee machine and its rules for each state of the output's network? in other words,I want to specify some ...
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44 views

Torch / Lua, why does my neural network model loaded from file not predict any negative elements?

I've been working on an artificial neural network model in Torch / Lua, able to learn how to recognize true couples (ones) and false couples (zeros) of elements for a particular biological project. ...
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92 views

Why does the loss explode in CNN?

I have created and trained my data on this model. Any Ideas on why the explosion in loss occurs ? And why is the train loss decreasing and Test loss increasing at the start. It does look like over ...
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87 views

Matlab making custom autoencoder

I am looking to use a simple denoising autoencoder to extract features using the neural network toolbox from matlab. Here is a sample code that I'm using: patches = im2col(ts(:,:,85),[10 10],'sliding'...
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16 views

What is the difference between the normalize filter and the MLP automatic normalization in WEKA?

I recently realised while pre processing my data that it was being automatically normalized through an option in WEKAs MLP classifier. However if I set that option to false and instead use the ...
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26 views

R - combining sfLapply with neuralnet

I am trying to parallelize the neuralnet package. The following code takes 8 seconds to run: nn <- neuralnet(f,data=head(train_,10000),hidden=c(5),linear.output=F) However, when combined with ...
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33 views

String pattern matching using unreliable data

I know that there are several threads about string pattern matching, but I feel like my circumstances are slightly different. I have a list of user-entered claim numbers, each claim number is unique. ...
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157 views

How to use binary values to classification in R

I have a biometrics dataset. I'm using neuralnet library in R to predict user classification. I have 3 different threshold values. I have to apply decision function to neuralnet output which is return ...
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41 views

Accord.net Custom Cost Function

How to use a custom error function in the Accord.Net/AForge.Net library? Some other machine learning libraries allow developers to change and customize the error function, in order to use the cross-...
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36 views

How to train the forget gate of an LSTM to keep the value in the cell, while the target of the block is zero?

I'm training a LSTM to count a certain number of 1s from a binary input sequence and then outputs 1 when that number is reached. E.g. Suppose the unit should output 1 when it receives 4 ones from the ...
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267 views

How to handle error “Training diverged and returned NaN” when using multilayer perceptrons in sknn

Hello I am trying to train multilayer perceptrons using the library sknn. I tried creating Multilayer Perceptrons with the training data provided using but I get the error Training diverged and ...
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66 views

Getting NaN values with basic fully connected neural network implementation in node.js

I am trying to code my own neural network, just the basic fully connected version. It seems to mostly work, but the problem is after some time with training, the weights seem to change into NaN, and I ...
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23 views

How to adjust inputs for Neural Nets?

I have been wanting to try and make a neural net that controlls a game. I'm very close to my goal, but yet I feel like I have messed up somewhere! I'm getting values that are reasonably close to what ...
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97 views

Multi-label usingTheano?

I have some NLP problem and multi-label dataset. I want to train a Deep network using Theano. I follow this tutorial : http://neuralnetworksanddeeplearning.com/chap6.html and tried to modify the ...
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297 views

Using neural network to predict a financial time series in MATLAB R2015b (lag between real output and predicted output)

Suppose that DD is a time series data (one column and X rows). I separate 11 samples from end of data as out-of-sample and train neural network by MATLAB. The performance of neural network is good in ...
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90 views

What's the difference between the softmax and logsig activation functions for neural networks (patternnet)?

I set up the network using the softmax function, and I noticed that after training the network, the output layer activation function just changes to logsig. What could be the reason for that? My data ...
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32 views

Why are both gradient of loglikelihood objective and mean squared error of regression the same?

The gradients of the logistic regression model when you use log-likelihood(cross entropy) as your objective function and the gradients of the linear regression model when you take mean squared error ...
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25 views

Is it possible to implement gradient checking in a vectorized way when implementing neural network?

For example, I add delta to all dimensions of w from y=w.dot(x)+b and calculate dw in one time?
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65 views

LSTM Training: to backpropagate or not

I'm creating a LSTM by hand because I want to implement an online reinforcement learner, and this isn't quite compatible with Kephas. Right now, it is implemented in numpy and the gradient formulas ...
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42 views

Moving between points in convolutional neural network latent space (torch)

I'm looking at the code here for generating faces with this DCGAN network. I'd like to make a walk in the latent space between multiple points, for instance, point a to point b to point c to point d ...
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27 views

Not calculating the correct dimensions for a neural network

I am creating a neural network with three hidden layers that have a varying number of neurons/units in each. The problem is that I must have made a coding/calculation error that results in a incorrect ...
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68 views

Weird results in approximation of a function with neural networks

I am trying to approximate a function (the right hand side of a differential equation) of the form ddx=F(x,dx,u) (where x,dx,u are scalars and u is constant) with an RBF neural network. I have the ...
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101 views

Error in Theano loop: Outputs_info dim and fn output dim mismatch in scan

I am a beginner with Theano, and I am working from an example of another's code that, presumably, worked at some point (however, I have modified it...but I'm pretty sure my modifications have nothing ...
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133 views

Lasagne Neural Network does not converge when modeling sine

I'm trying to model the sine function with a feed-forward neural network. The network has an input layer with one neuron, one hidden layer with four neurons using a sigmoid activation function, and an ...
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60 views

Convolution layers in CNN gives same pixel values for every class

I have implemented a CNN in theano based on the tutorial on deeplearning.net. The code for the Convolution and Max pooling layer is: class ConvolutionLayer(Layer): def __init__(self,W_shape,...