A high efficiency hardware integration of neural networks benefits from realizing nonlinearity, network connectivity and learning fully in a physical substrate. Multiple systems have recently implemented some or all of these operations, yet the focus was placed on addressing technological challenges. Fundamental questions regarding learning in hardware neural networks remain largely unexplored. Noise in particular is unavoidable in such architectures, and here we experimentally and theoretically investigate its interaction with a learning algorithm using an opto-electronic recurrent neural network. We find that noise strongly modifies the system’s path during convergence, and surprisingly fully decorrelates the final readout weight matrices...
Theoretical analysis of the error landscape of deep neural networks has garnered significant interes...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
Abstract: This paper deals with effect of digital noise to numerical stability of neural networks. D...
International audienceA high efficiency hardware integration of neural<br>networks benefits from r...
International audienceWe study and analyze the fundamental aspects of noise propagation inrecurrent ...
International audience Analog neural networks are promising candidates for overcoming the sever...
We study and analyze the fundamental aspects of noise propagation in recurrent as well as deep, mult...
This work explores the impact of various design and training choices on the resilience of a neural n...
The performance of neural networks for which weights and signals are modeled by shot-noise processes...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
We analyse the effects of analog noise on the synaptic arithmetic during MultiLayer Perceptron train...
We investigate the supervised batch learning of Boolean functions expressed by a two-layer perceptro...
There has been much interest in applying noise to feedforward neural networks in order to observe th...
International audienceWe have recently succeeded in the implementation of a large scale recurrent ph...
There have been a number of recent papers on information theory and neural networks, especially in a...
Theoretical analysis of the error landscape of deep neural networks has garnered significant interes...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
Abstract: This paper deals with effect of digital noise to numerical stability of neural networks. D...
International audienceA high efficiency hardware integration of neural<br>networks benefits from r...
International audienceWe study and analyze the fundamental aspects of noise propagation inrecurrent ...
International audience Analog neural networks are promising candidates for overcoming the sever...
We study and analyze the fundamental aspects of noise propagation in recurrent as well as deep, mult...
This work explores the impact of various design and training choices on the resilience of a neural n...
The performance of neural networks for which weights and signals are modeled by shot-noise processes...
A fundamental task for both biological perception systems and human-engineered agents is to infer un...
We analyse the effects of analog noise on the synaptic arithmetic during MultiLayer Perceptron train...
We investigate the supervised batch learning of Boolean functions expressed by a two-layer perceptro...
There has been much interest in applying noise to feedforward neural networks in order to observe th...
International audienceWe have recently succeeded in the implementation of a large scale recurrent ph...
There have been a number of recent papers on information theory and neural networks, especially in a...
Theoretical analysis of the error landscape of deep neural networks has garnered significant interes...
A basic neural model for Boolean computation is examined in the context of learning from examples. T...
Abstract: This paper deals with effect of digital noise to numerical stability of neural networks. D...