[[abstract]]The authors introduce a continuous stochastic generative model that can model continuous data, with a simple and reliable training algorithm. The architecture is a continuous restricted Boltzmann machine, with one step of Gibbs sampling, to minimise contrastive divergence, replacing a time-consuming relaxation search. With a small approximation, the training algorithm requires only addition and multiplication and is thus computationally inexpensive in both software and hardware. The capabilities of the model are demonstrated and explored with both artificial and real data.[[fileno]]2030128010002[[department]]電機工程學
Abstract. A Gaussian-binary restricted Boltzmann machine is a widely used energy-based model for con...
Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficie...
An unsupervised learning algorithm for a stochastic recurrent neural network based on the Boltzmann ...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
[[abstract]]This paper presents the VLSI implementation of the continuous restricted Boltzmann machi...
We explore the training and usage of the Restricted Boltzmann Machine for unsupervised feature extra...
In this study, we provide a direct comparison of the Stochastic Maximum Likelihood algorithm and Con...
Abstract. Restricted Boltzmann Machines (RBM) are energy-based models that are successfully used as ...
The restricted Boltzmann machine (RBM) is one of the widely used basic models in the field of deep l...
We present a new learning algorithm for Boltzmann Machines that contain many layers of hidden variab...
We present a theoretical analysis of Gaussian-binary restricted Boltzmann machines (GRBMs) from the ...
Exact Boltzmann learning can be done in certain restricted networks by the technique of decimation. ...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
We present a theoretical analysis of Gaussian-binary restricted Boltzmann machines (GRBMs) from the ...
We introduce a new method for training deep Boltzmann machines jointly. Prior methods of training DB...
Abstract. A Gaussian-binary restricted Boltzmann machine is a widely used energy-based model for con...
Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficie...
An unsupervised learning algorithm for a stochastic recurrent neural network based on the Boltzmann ...
Restricted Boltzmann machines are a generative neural network. They summarize their input data to bu...
[[abstract]]This paper presents the VLSI implementation of the continuous restricted Boltzmann machi...
We explore the training and usage of the Restricted Boltzmann Machine for unsupervised feature extra...
In this study, we provide a direct comparison of the Stochastic Maximum Likelihood algorithm and Con...
Abstract. Restricted Boltzmann Machines (RBM) are energy-based models that are successfully used as ...
The restricted Boltzmann machine (RBM) is one of the widely used basic models in the field of deep l...
We present a new learning algorithm for Boltzmann Machines that contain many layers of hidden variab...
We present a theoretical analysis of Gaussian-binary restricted Boltzmann machines (GRBMs) from the ...
Exact Boltzmann learning can be done in certain restricted networks by the technique of decimation. ...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
We present a theoretical analysis of Gaussian-binary restricted Boltzmann machines (GRBMs) from the ...
We introduce a new method for training deep Boltzmann machines jointly. Prior methods of training DB...
Abstract. A Gaussian-binary restricted Boltzmann machine is a widely used energy-based model for con...
Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficie...
An unsupervised learning algorithm for a stochastic recurrent neural network based on the Boltzmann ...