Deep Belief Networks, a key concept in contemporary neural networks.

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Why the last RBM hidden units of Hinton's autoencode can use linear output without a sigmoid

According to Hinton's paper "Reducing the Dimensionality of Data with Neural Networks". The hidden units of the top RBM had stochastic real-valued states drawn from a unit variance Gaussian. Why can ...
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1answer
20 views

classify the units in Deep learning for image classification

Suppose we have a database with 10 classes, and we do classification test on it by Deep Belief Network or Convolutional Neural Network. The question is that how we can understand which neurons in the ...
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71 views

Examples of sampling from a deep belief network (DBN) in Theano?

I'm looking for some example code showing how to sample from a trained DBN (deep belief network) in Theano. I've found code which samples from am RBN (in the documentation) but not from a fully ...
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31 views

Python DBN dbn.predict use

Hi I am confused with how dbn.predict works I have detected a number in an image using canny and then otsu threshold and resized it to 28x28 etc however when I pass it to dbn.predict I get the ...
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1answer
166 views

Convolutional Deep Belief Networks (CDBN) vs. Convolutional Neural Networks (CNN)

Lastly, I started to learn neural networks and I would like know the difference between Convolutional Deep Belief Networks and Convolutional Networks. In here, there is a similar question but there is ...
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126 views

How to form a dataset which is in the same form as mnist.pkl.gz

I have already checked previously asked question, but I did not find my answer. I am trying to create a dataset which exactly resembles the mnist.pkl.gz file available for download here. The details ...
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1answer
68 views

how to design feature extraction layer for DBN for face recognition

I am trying to use deep belief networks for face recognition. But I am a beginner in this area, I have read the research papers and documentations available on the Internet and I understood the basic ...
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data propagation through restriced boltzmann machine

In RBM, it makes all relationships within node in probability. then how data can be propagated through RBM? just first order sampling? doesnt then have too much fluctuation? or does it work like feed ...
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2answers
854 views

How to put my dataset in a .pkl file in the exact format and data structure used in “mnist.pkl.gz”?

I'm trying to use the Theano library in python to do some experiments with Deep Belief Networks. I use the code in this address: DBN full code. This code use the MNIST Handwritten database. This file ...
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84 views

Process posterior probability from DBN in HMM for speech recognition

We are experimenting with Isolated word recognition with various discriminative and Generative models. We trained and tested a model of Continuous Density HMM considering feature vectors as Gaussian ...
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399 views

PyBrain - how to do Deep belief network training?

I have some difficulty training a DBN using Pybrain. First I tried to do it the simple way: net = buildNetwork(*layerDims) I faced this problem: How to do supervised deepbelief training in ...
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2answers
4k views

Deep Belief Networks vs Convolutional Neural Networks

I am new to the field of neural networks and I would like to know the difference between Deep Belief Networks and Convolutional Networks. Also, is there a Deep Convolutional Network which is the ...
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1answer
381 views

Gaussian-RBM with NRLU hidden units (in DBN)?

I'm working on a RBM (for a DBN) for image classification. I' working with two RBM layers. The first has Gaussian visible units and binary hidden units and the second has binary visible units and ...
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91 views

dynamic bayesian network toolkit

I'm searching on dynamic bayesian network toolkit; I’ve found GMTK for jiff bilmes, and a bayes net tool box for d. murphy. I found byesnet wich is developed using matlab hard for me so i'm training ...
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1answer
50 views

Combining labeled and unlabeled data in a single pipeline

I'm building image classifier that uses DBN for feature learning and logistic regression to fine-tune resulting network. Normally, the most convenient way to implement such an architecture in SciKit ...
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280 views

Auto-encoder to reduce input data size

Currently, I want to use the autoencoder for reducing the input data size in order to use the reduced data for another neural networks. My task is to take a video and then give the images of the video ...
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446 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 ...
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1answer
472 views

How fast are Deep Learning techniques (DNN, DBN, …) in practice ? [closed]

Deep Learning Techniques (Deep Neural Network, Deep Belief Network, Deep Stacking Networks, ...) are very efficient in some areas. They take a very long time to train, but this is a only-once cost. ...
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413 views

Implementing GB-RBMs for real-valued data

I am trying to implement a Deep Belief Network for speech recognition. And hence, need the first layer of RBM to have gaussian visible units. I used @Andrej Karpathy's matrbm ...
9
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1answer
989 views

How to do supervised deepbelief training in PyBrain?

I have trouble getting the DeepBeliefTrainer to work on my data in PyBrain/Python. Since I can't find any examples other than unsupervised on how to use the deep learning in PyBrain, I hope that ...
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3answers
4k views

Deep learning for image classification [closed]

After reading a few papers on deep learning and deep belief networks, I got a basic idea of how it works. But still stuck with the last step, i.e, the classification step. Most of the implementation ...
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7answers
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Neural networks - obsolete? [closed]

According to an answer from here, artificial neural networks are obsoleted by Support Vector Machines, Gaussian Processes, generative and descriptive models. What is your opinion?