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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19 views

Processing array larger than memory for training a neural net in python

I am trying to train a neural net in python with features I am constructing on top of the google books 2-grams (English), it will end up being around a billion rows of data with 20 features each row. ...
2
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1answer
42 views

LSTM implementation with peephole

I have been reading papers about LSTM and checking its implementations. There is one point that is not clear to me. In most of the papers it is mentioned that the weight matrices from the cell to gate ...
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1answer
15 views

Get hextop self-organizing map neuron connections

How do I get a n-by-2 vector that contains the connections of the neurons in an SOM? For example, if I have a simple 2x2 hextop SOM, the connections vector should look like: [ 1 2 1 3 1 4 ] This ...
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12 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', ...
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16 views

Any Encog Documentation on NEAT?

Is there any detailed documentation on how to use Encog Framework? I am aware of the user guide available at UserGuide and the C# examples at encog github repository However I am focused on using ...
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15 views

How to extract features from fmri?

I'm having fmri dataset for the classification of Normal Controls and Alzheimer diseased patients. Now, as a newbie I'm unable to extract features from my dataset. I want to extract activation ...
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0answers
12 views

Evaluating performance Neural Network embeddings in kNN classifier

I am solving a classification problem. I train my unsupervised neural network for a set of entities (using skip-gram architecture). The way I evaluate is to search k nearest neighbours for each point ...
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1answer
27 views

How to get only last actual output

My data consists of 3 inputs variables (double), and 1 output. I am training with around 20,000- 50,000 rows of data. This code show me every input,actual output and ideal output. for(MLDataPair ...
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0answers
44 views

Calculation of Jacobian Matrix elements in 4 layer MLP network with 2 hidden layers

Good afternoon! 4 layer Multilayer Perceptron (with 2 hiddent layers) I have collided with some difficulties during calculation of Jacobian Matrix elements for 4 layer Multilayer Perceptron (with ...
2
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1answer
33 views

Use of activation derivative in back propagation

I'm a little confused why the activation derivative in back propagation is how it is. Firstly, when I remove the activation derivative from the back propagation algorithm and replace it with a ...
0
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1answer
26 views

Visualizing CNN weights from Torch Tensor

I have a Torch Cuda Tensor of size 64x64x3x3 and I want to visualise its weights for a given layer as follows: local layer = model:get(3) local weights = layer.weight local imgDisplay = ...
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1answer
33 views

Convolutional neural network not converging

I've been watching some videos on deep learning/convolutional neural networks, like here and here, and I tried to implement my own in C++. I tried to keep the input data fairly simple for my first ...
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0answers
18 views

Word2Vec and vector origin

I read the two papers by Mikolov et al on Word2Vec (see here and here). I understand the concept of word vectors and how they represent meaning. However, I don't understand where the final word ...
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1answer
36 views

XOR Neural Network not converging

I'm having a problem with getting my XOR neural network to converge. It has two inputs, 2 nodes in the hidden layer, and one output node. I think it has something to do with my back propagation ...
0
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1answer
43 views

Neural network for linear regression

I found this great source that matched the exact model I needed: http://ufldl.stanford.edu/tutorial/supervised/LinearRegression/ The important bits go like this. You have a plot x->y. Each x-value ...
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0answers
16 views

Packaged version of Torch for neural networks

I tried installing Torch and the nn package with a view to carrying out some experiments on neural networks, but the recommended procedure failed with a compile error while trying to install the ...
0
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1answer
36 views

Will larger batch size makes computation time less in machine learning?

I am trying to tune the hyper parameter i.e batch size in CNN.I have a computer of corei7,RAM 12GB and i am training a CNN network with CIFAR-10 dataset which can be found in this blog.Now At first ...
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0answers
32 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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1answer
24 views

How to add external features to input images when training GoogLeNet in Caffe?

I have been using the Caffe framework for fine-tuning the GoogLeNet model using images from my own dataset. I think that I could improve the results if I could add some externally extracted features ...
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1answer
30 views

How to train and test LeNet using caffe using python

I am new to caffe and Machine learning algorithms. Are there any tutorials to train and TEST LeNet on the MNIST data using caffe and python 2.7(preferably). Thanks
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1answer
25 views

In a Neural Network, should bias have a momentum term?

Should the momentum be added also to the bias term of every node in the network or preferably only on weights?
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0answers
19 views

Theano input and output sample number error

I am working on some project and I need to use neural network in python. I am trying to train neural network but I always get error for FIT() function. This is my code: def matrix_to_vector(m): ...
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27 views

MATLAB autoencoder learning the constant function

I'm trying to train a basic autoencoder in MATLAB. My data is 430 ten-dimensional points, and my autoencoder code like n_features = 25; autoenc = trainAutoencoder(data, n_features, ... ...
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1answer
18 views

Unexpected behavior at torch7

I was working on generating an XOR gate dataset with torch7. But when i printed the dataset i saw that the data was wrong, but i could not find the bug. There seems to be nothing wrong with the code. ...
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1answer
28 views

Simple Neural Network Transfer Function for 1 to -1 Output

I am new to Neural Networks and currently in need of guidance for a question I was presented with. Question: Consider a single-input neuron with a bias. We would like the output to be -1 for inputs ...
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40 views

How can you train multiple neural networks simultaneously in nolearn/lasagne/theano on Python?

I am writing a calibration pipeline to learn the hyperparameters for neural networks to detect properties of DNA sequences*. This therefore requires training a large number of models on the same ...
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1answer
35 views

Neuroph: What does maxIterations in a LearningRule refer to?

I found this comment and was wondering what maxIterations in a LearningRulerefers to. Suppose my DataSet consists of 10,000 records and my neural net learns this DataSet with a LearningRule that has ...
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0answers
16 views

Neural networks condition

I need to decide if a problem must be implemented with the help of neural networks. What conditions need a class of problems to meet in order approach with the help of neural networks?
2
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0answers
36 views

How setup Keras model correctly?

I am struggling with building model in Keras. I want to pass all my features as input=10, and output=3. However, once I run the code below def build_model(input_dim, output_classes): print ...
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1answer
23 views

Backpropagation - error derivative

I am learning the backpropagation algorithm used to train neural networks. It kind of makes sense, but there is still one part I don't get. As far as I understand, the error derivative is calculated ...
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0answers
26 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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1answer
27 views

How can I add broad image recognition to a mobile app? [closed]

I'm working on an Android app (though eventually I'll want to do the same thing on iOS) and I'm looking to build an image recognition feature into it. The user would snap a picture, then this ...
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0answers
17 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 ...
4
votes
1answer
62 views

Implementing a Neural Network in Matlab/Octave

I am trying to solve the problem http://postimg.org/image/4bmfha8m7/ I am having trouble in implementing the weight matrix for the 36 inputs. I have a 3 neuron hidden layer. I use the ...
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22 views

How to use the Embedding Layer for Recurrent Neural Network (RNN) in Keras

I'm rather new to Neural Networks and the Keras Library and I'm wondering how I can use the Embedding Layer as described here to mask my input data from a 2D tensor to a 3D tensor for a RNN. Say my ...
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0answers
50 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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0answers
9 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 ...
1
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1answer
26 views

How to train and fine-tune fully unsupervised deep neural networks?

In scenario 1, I had a multi-layer sparse autoencoder that tries to reproduce my input, so all my layers are trained together with random-initiated weights. Without a supervised layer, on my data this ...
3
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0answers
50 views

Backpropagation Algorithm (neural networks)

I tried to implement an online backpropagation algorithm for a neural network. After having computed every output and net value (ie the value without applying the activation function) of every node, ...
3
votes
1answer
49 views

How do I calculate the derivative / gradient of covariance?

Other than numerically calculating, is there a quick way to get the derivative of covariance matrix (of my network activations)? I'm trying to use it as a penalty term in my cost function in a deep ...
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0answers
26 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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0answers
18 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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votes
0answers
13 views

Artificial neural network, Residual plot Residual value and Predicted value by MATLAB

I am structuring an artificial neural network by MATLAB for my data-set with 5 input and 2 output. How I can get residual plot- residual value and Predicted value after process?
3
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1answer
81 views

Accuracy remains identical between Tensorflow runs

I've been trying to utilise Tensorflow to gauge it's suitability for classifying data that I'm studying on a Huntington Disease project (not relevant to the problem, just providing context). ...
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1answer
54 views

Training on imbalanced data using TensorFlow

The Situation: I am wondering how to use TensorFlow optimally when my training data is imbalanced in label distribution between 2 labels. For instance, suppose the MNIST tutorial is simplified to ...
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0answers
17 views

How does the unpooling and deconvolution work in DeConvNet

I have been trying to understand how unpooling and deconvolution works in DeConvNets. Unpooling While during the unpooling stage, the activations are restored back to the locations of maximum ...
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0answers
38 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 ...
0
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1answer
31 views

Output of neurons in Multiple Layer Perceprton Classifier in scikit-learn

I am currently working on MLPClassifier of neural_network package of sklearn. I trained the classifier and it is predicting/running fine. Now I need the output values of neurons(nodes) in each layers ...
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34 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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1answer
96 views
+50

numpy ValueError not aligned

So I am trying to adapt the neural network from michael nielson's http://neuralnetworksanddeeplearning.com/chap1.html I modified network.py to work on python 3 and made a small script to test it with ...