Contains fulltext : 112682.pdf (preprint version ) (Open Access)We present a method to bound the partition function of a Boltzmann machine neural network with any odd-order polynomial. This is a direct extension of the mean-field bound, which is first order. We show that the third-order bound is strictly better than mean field. Additionally, we derive a third-order bound for the likelihood of sigmoid belief networks. Numerical experiments indicate that an error reduction of a factor of two is easily reached in the region where expansion-based approximations are useful
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
Various applications of the mean field theory (MFT) technique for obtaining solutions close to optim...
In this thesis we asses the consistency and convexity of the parameter inference in Boltzmann machin...
We present a method to bound the partition function of a Boltzmann machine neural network with any o...
In this paper, we derive a second order mean field theory for directed graphical probability models....
Exact inference for Boltzmann machines is computationally expensive. One approach to improving tract...
Contains fulltext : 58959.pdf (publisher's version ) (Open Access)'A graphical mod...
Deep Belief Networks (DBN’s) are generative models that contain many layers of hidden vari-ables. Ef...
Estimating the partition function is a key but difficult computation in graphical models. One approa...
Estimating the partition function is a key but difficult computation in graphical models. One approa...
We present a heuristical procedure for efficient estimation of the partition function in the Boltzma...
We consider the problem of bounding from above the log-partition function corresponding to second-or...
. W 2 h 2 is an asymptotic upper bound for the VC-dimension of a large class of neural networks ...
Abstract. The more realistic neural soma and synaptic nonlinear relations and an alternative mean fi...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
Various applications of the mean field theory (MFT) technique for obtaining solutions close to optim...
In this thesis we asses the consistency and convexity of the parameter inference in Boltzmann machin...
We present a method to bound the partition function of a Boltzmann machine neural network with any o...
In this paper, we derive a second order mean field theory for directed graphical probability models....
Exact inference for Boltzmann machines is computationally expensive. One approach to improving tract...
Contains fulltext : 58959.pdf (publisher's version ) (Open Access)'A graphical mod...
Deep Belief Networks (DBN’s) are generative models that contain many layers of hidden vari-ables. Ef...
Estimating the partition function is a key but difficult computation in graphical models. One approa...
Estimating the partition function is a key but difficult computation in graphical models. One approa...
We present a heuristical procedure for efficient estimation of the partition function in the Boltzma...
We consider the problem of bounding from above the log-partition function corresponding to second-or...
. W 2 h 2 is an asymptotic upper bound for the VC-dimension of a large class of neural networks ...
Abstract. The more realistic neural soma and synaptic nonlinear relations and an alternative mean fi...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
This paper examines the question: What kinds of distributions can be efficiently represented by Rest...
Various applications of the mean field theory (MFT) technique for obtaining solutions close to optim...
In this thesis we asses the consistency and convexity of the parameter inference in Boltzmann machin...