We introduce a model for noise-robust analog computations with discrete time that is flexible enough to cover the most important concrete cases, such as computations in noisy analog neural nets and networks of noisy spiking neurons. We show that the presence of arbitrarily small amounts of analog noise reduces the power of analog computational models to that of finite automata, and we also prove a new type of upper bound for the VC-dimension of computational models with analog noise. 1 Introduction Analog noise is a serious issue in practical analog computation. However there exists no formal model for reliable computations by noisy analog systems which allows us to address this issue in an adequate manner. The investigation of noise-toler...
This talk concerns computation by systems whose components exhibit noise (that is, errors committed ...
We study and analyze the fundamental aspects of noise propagation in recurrent as well as deep, mult...
The finite discrete-time recurrent neural networks are also exploited for potentially infinite compu...
We introduce a model for analog computation with discrete time in the presence of analog noise that...
AbstractWe pursue a particular approach to analog computation, based on dynamical systems of the typ...
International audienceWe study and analyze the fundamental aspects of noise propagation inrecurrent ...
In this paper we propose a model that captures the influence of noise and speed on the correct behav...
AbstractIn this paper we propose a model that captures the influence of noise and speed on the corre...
We pursue a particular approach to analog computation, based on dynamical systems of the type used i...
Efficiently solving hard optimization problems has been a strong motivation for progress in analog c...
International audience Analog neural networks are promising candidates for overcoming the sever...
The information carried by a signal unavoidably decays when the signal is corrupted by random noise....
|The information carried by a signal decays when the signal is corrupted by random noise. This occur...
Abstract: This paper deals with effect of digital noise to numerical stability of neural networks. D...
Abstract—The information carried by a signal decays when the signal is corrupted by random noise. Th...
This talk concerns computation by systems whose components exhibit noise (that is, errors committed ...
We study and analyze the fundamental aspects of noise propagation in recurrent as well as deep, mult...
The finite discrete-time recurrent neural networks are also exploited for potentially infinite compu...
We introduce a model for analog computation with discrete time in the presence of analog noise that...
AbstractWe pursue a particular approach to analog computation, based on dynamical systems of the typ...
International audienceWe study and analyze the fundamental aspects of noise propagation inrecurrent ...
In this paper we propose a model that captures the influence of noise and speed on the correct behav...
AbstractIn this paper we propose a model that captures the influence of noise and speed on the corre...
We pursue a particular approach to analog computation, based on dynamical systems of the type used i...
Efficiently solving hard optimization problems has been a strong motivation for progress in analog c...
International audience Analog neural networks are promising candidates for overcoming the sever...
The information carried by a signal unavoidably decays when the signal is corrupted by random noise....
|The information carried by a signal decays when the signal is corrupted by random noise. This occur...
Abstract: This paper deals with effect of digital noise to numerical stability of neural networks. D...
Abstract—The information carried by a signal decays when the signal is corrupted by random noise. Th...
This talk concerns computation by systems whose components exhibit noise (that is, errors committed ...
We study and analyze the fundamental aspects of noise propagation in recurrent as well as deep, mult...
The finite discrete-time recurrent neural networks are also exploited for potentially infinite compu...