We describe a stochastic, dynamical system capable of inference and learning in a probabilistic latent variable model. The most challenging problem in such models - sampling the posterior distribution over latent variables - is proposed to be solved by harnessing natural sources of stochasticity inherent in electronic and neural systems. We demonstrate this idea for a sparse coding model by deriving a continuous-time equation for inferring its latent variables via Langevin dynamics. The model parameters are learned by simultaneously evolving according to another continuous-time equation, thus bypassing the need for digital accumulators or a global clock. Moreover we show that Langevin dynamics lead to an efficient procedure for sampling fro...
This thesis is concerned with various sampling problems. The first part of this work is dedicated to...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
This thesis addresses the problem of performing probabilistic inference in stochastic systems where ...
Multiple lines of evidence support the notion that the brain performs probabilistic inference in mul...
Multiple lines of evidence support the notion that the brain performs probabilistic inference in mul...
Best Paper AwardInternational audienceOne way to avoid overfitting in machine learning is to use mod...
Many complex systems operating far from the equilibrium exhibit stochastic dynamics that can be desc...
There is growing evidence that humans and animals represent the uncertainty associated with sensory ...
Automatic machine learning of empirical models from experimental data has recently become possible a...
In this paper we propose a new framework for learning from large scale datasets based on iterative l...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
We propose a non-linear, Bayesian non-parametric latent variable model where the latent space is ass...
Gradient-descent-based algorithms and their stochastic versions have widespread applications in mach...
Effective training of deep neural networks suffers from two main issues. The first is that the param...
Deep learning is actively used in the area of sparse coding. In current deep sparse coding methods u...
This thesis is concerned with various sampling problems. The first part of this work is dedicated to...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
This thesis addresses the problem of performing probabilistic inference in stochastic systems where ...
Multiple lines of evidence support the notion that the brain performs probabilistic inference in mul...
Multiple lines of evidence support the notion that the brain performs probabilistic inference in mul...
Best Paper AwardInternational audienceOne way to avoid overfitting in machine learning is to use mod...
Many complex systems operating far from the equilibrium exhibit stochastic dynamics that can be desc...
There is growing evidence that humans and animals represent the uncertainty associated with sensory ...
Automatic machine learning of empirical models from experimental data has recently become possible a...
In this paper we propose a new framework for learning from large scale datasets based on iterative l...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
We propose a non-linear, Bayesian non-parametric latent variable model where the latent space is ass...
Gradient-descent-based algorithms and their stochastic versions have widespread applications in mach...
Effective training of deep neural networks suffers from two main issues. The first is that the param...
Deep learning is actively used in the area of sparse coding. In current deep sparse coding methods u...
This thesis is concerned with various sampling problems. The first part of this work is dedicated to...
Many living and complex systems exhibit second-order emergent dynamics. Limited experimental access ...
This thesis addresses the problem of performing probabilistic inference in stochastic systems where ...