Restricted Boltzmann Machines, used in contemporary neural networks.

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Difference in calculating derivative of RBM while using ContrastiveDivergence

could anybody explain me difference between calculating derivative in RBM with -h_j * x_k and - h_j(x) * x_k? I found source codes with both implementations and I am not sure which one is better (and ...
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44 views

Measuring success of Restricted Boltzmann Machine

I am trying to implement my own RBM, but I am not sure, how to measure it's success 100% correctly. So I started googling and have found many interpretations and I am not sure what is correct. I am ...
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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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1answer
167 views

Gaussian-RBM fails on a trivial example

I want to have a nitty-gritty understanding of Restricted Boltzman Machines with continuous input variables. I am trying to devise the most trivial possible example, so that the behavior could be ...
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60 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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42 views

Can a restricted boltzmann machine model the frequency of datapoints in a dataset?

I've been playing around with RBMs recently, and while I've gotten them to become good generative models of datasets (i.e. they generate only plausible datapoints), they don't seem to capture the ...
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1answer
318 views

Gaussian-Bernoulli RBM high reconstruction error

I'm normalizing my data to zero mean and unit variance as recommended in most literature to pre-train a GB-RBM. But whatever learning rate I choose and whatsoever is the number of epochs, my mean ...
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1answer
215 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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72 views

sklearn RBM throwing IndexError

I am training an RBM from sklearn 0.14 on a text corpus in scipy sparse format. While fitting, it will run for some time (several minutes), but then breaks and throw this error: IndexError: index ...
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Why asymmetric weights of RBM can be learned although the network is symmetry?

I tried to implement the Restricted Boltzmann Machine to confirm the utility of the deep learning method. I implemented a RBM and fed the MNIST character recognition data for one layer ...
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1answer
276 views

How to find why a RBM does not work correctly?

I'm trying to implement a RBM and I'm testing it on MNIST dataset. However, it does not seems to converge. I've 28x28 visible units and 100 hidden units. I'm using mini-batches of size 50. For each ...
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2answers
346 views

sklearn 0.14.1 RBM dies on NaN or Inf where there is none

I'm borrowing an idea here from the documentation to use RBMs + Logistic regression for classification. However I'm getting an error that should not be thrown since all entries in my data matrix are ...
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315 views

How to test a Restricted Boltzmann Machine implementation ?

I developed a simple binary Restricted Boltzmann Machine implementation and now I would like to test it. (Ultimately I'm gonna use it for a DBN, but I would like to test independently). I saw that ...
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1answer
640 views

(Python) Gaussian Bernoulli RBM on computing P(v|h)

Context: I am implementing Gaussian Bernoulli RBM, it is like the popular RBM but with real-valued visible units. True that the procedure of sampling hidden values p(h=1|v) are the same for both, ...
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1answer
950 views

Deep autoencoder using RBM

I m implementing Deep autoencoder using RBM. I understand that, for unfolding the network, we need to use the transposed weights of the encoder for the decoder. But I'm not sure which biases should we ...
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2answers
349 views

Can you look at an RBM as being a kind of multiplicative NN? [closed]

Neural Nets sum up weights, but RBMs... multiply weights into a probability? So is an RBM kind of like a bidirectional neural net that multiplies it's weights instead of adding them?
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290 views

Gaussian visible units in rbm

I want to implement Gaussian RBM.For that i want to make zero mean and unit variance of data.my data is MNIST dataset.The dataset has been taken and followed from the following link. Visit ...
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2answers
340 views

GRBM implementation

I am implementing Gaussian input based RBM in MATLAB. vi has dimension of 100*784, w has dimension of 784*500, sigma has dimension of 1*784. p(h|v)= sigmoid(cj+wij*vi/sigma^2). I am getting ...
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331 views

Inferring missing data with Restricted Boltzmann Machines

Similar to the netflix competition, assume we have a movie dataset with missing ratings. How would I modify RBM to allow it to deduce the missing values? In related papers, one straightforward way is ...
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2k views

Restricted Boltzmann Machine for real-valued data - gaussian linear units (glu) -

I want my Restricted Boltzmann Machine to learn a new representation of real-valued data (see: Hinton - 2010 - A Practical Guide to Training RBMs). I'm struggling with an implementation of Gaussian ...
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1answer
641 views

Continuous RBM: Poor performance only for negative valued input data?

i tried to port this python implementation of a continuous RBM to Matlab: http://imonad.com/rbm/restricted-boltzmann-machine/ I generated 2-dimensional trainingdata in the shape of a (noisy) circle ...
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1answer
200 views

If I'm using softmax in an RBM, do I need to use it in hidden units as well as in the visible ones?

As I understand, when using softmax of K values in RBM visible units, the hidden unit stays binary. If so - I'm not sure how to compute contributions by the binary units to the visible ones. Am I ...
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367 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 ...
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3k views

Java code for Restricted Boltzmann machines and Deep Learning [closed]

Since last few days I am reading and studying about Restricted Boltzmann machines and Deep Learning. Now to test the ability of Deep learning I am in search of Java code. I searched for long time on ...
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303 views

Alternatives to Restricted Boltzmann Machine for vector data (instead of binary)

I have a very large corpus with each element consisting of a large amount of high dimensional data. Elements are constantly being added to the corpus. Potentially, only a portion of the corpus needs ...
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758 views

The Free energy approximation Equation in Restriction Boltzmann Machines

According a deeplearning tutorial: The free energy in python is def free_energy(self, v_sample): ''' Function to compute the free energy ''' wx_b = T.dot(v_sample, self.W) + self.hbias ...
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Restricted Boltzmann Machine - reconstruction

I read some articles about restricted Boltzmann machines. These machines were tested for their reconstruction capabilities. I understand how training works, but not how this reconstruction is done. ...
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2k views

Problems with real-valued input deep belief networks (of RBMs)

I am trying to recreate the results reported in Reducing the dimensionality of data with neural networks of autoencoding the olivetti face dataset with an adapted version of the MNIST digits matlab ...
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7answers
6k views

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?