In this paper we study the properties of the quenched pressure of a multi-layer spin-glass model (a deep Boltzmann Machine in artificial intelligence jargon) whose pairwise interactions are allowed between spins lying in adjacent layers and not inside the same layer nor among layers at distance larger than one. We prove a theorem that bounds the quenched pressure of such a K-layer machine in terms of K Sherrington-Kirkpatrick spin glasses and use it to investigate its annealed region. The replica-symmetric approximation of the quenched pressure is identified and its relation to the annealed one is considered. The paper also presents some observation on the model's architectural structure related to machine learning. Since escaping the annea...
A specific type of neural network, the Restricted Boltzmann Machine (RBM), is implemented for classi...
Spin glasses are spin-lattice models with quenched disorder and frustration. The mean field long-ran...
International audienceRestricted Boltzmann machines (RBMs) are energy-based neural networks which ar...
In this paper we study the properties of the quenched pressure of a multi-layer spin-glass model (a ...
A class of deep Boltzmann machines is considered in the simplified framework of a quenched system w...
Some interesting recent advances in the theoretical understanding of neural networks have been infor...
This paper presents an overview of diverse topics that are seemingly different but interrelated, wit...
In this paper we continue our investigation on the high storage regime of a neural network with Gaus...
Abstract-The idea of Hopfield network is based on the king spin glass model in which each spin has o...
In recent decades, statistical mechanics of disordered systems (mainly spin-glasses) has become one ...
In this thesis, we apply methods from replica theory to deal with two contemporary problems in the s...
A specific type of neural networks, the Restricted Boltzmann Machines (RBM), are implemented for cla...
In this paper we continue our investigation of the analogical neural network, by introducing and stu...
The deep Boltzmann machine on the Nishimori line with a finite number of layers is exactly solved by...
Restricted Boltzmann machines (RBMs) constitute one of the main models for machine statistic...
A specific type of neural network, the Restricted Boltzmann Machine (RBM), is implemented for classi...
Spin glasses are spin-lattice models with quenched disorder and frustration. The mean field long-ran...
International audienceRestricted Boltzmann machines (RBMs) are energy-based neural networks which ar...
In this paper we study the properties of the quenched pressure of a multi-layer spin-glass model (a ...
A class of deep Boltzmann machines is considered in the simplified framework of a quenched system w...
Some interesting recent advances in the theoretical understanding of neural networks have been infor...
This paper presents an overview of diverse topics that are seemingly different but interrelated, wit...
In this paper we continue our investigation on the high storage regime of a neural network with Gaus...
Abstract-The idea of Hopfield network is based on the king spin glass model in which each spin has o...
In recent decades, statistical mechanics of disordered systems (mainly spin-glasses) has become one ...
In this thesis, we apply methods from replica theory to deal with two contemporary problems in the s...
A specific type of neural networks, the Restricted Boltzmann Machines (RBM), are implemented for cla...
In this paper we continue our investigation of the analogical neural network, by introducing and stu...
The deep Boltzmann machine on the Nishimori line with a finite number of layers is exactly solved by...
Restricted Boltzmann machines (RBMs) constitute one of the main models for machine statistic...
A specific type of neural network, the Restricted Boltzmann Machine (RBM), is implemented for classi...
Spin glasses are spin-lattice models with quenched disorder and frustration. The mean field long-ran...
International audienceRestricted Boltzmann machines (RBMs) are energy-based neural networks which ar...