This thesis proposes nonparametric techniques to enhance unsupervised learning methods in computational or biological contexts. Representations of intractable distributions and their relevant statistics are enhanced by nonparametric components trained to handle challenging estimation problems. The first part introduces a generic algorithm for learning generative latent variable models. In contrast to traditional variational learning, no representation for the intractable posterior distributions are computed, making it agnostic to the model structure and the support of latent variables. Kernel ridge regression is used to consistently estimate the gradient for learning. In many unsupervised tasks, this approach outperforms advanced alternativ...
This thesis studies the problem of regularizing and optimizing generative models, often using insigh...
The estimation of probability density functions (pdf) from unlabeled data samples is a relevant (and...
Many models in neuroscience, such as networks of spiking neurons or complex biophysical models, are ...
Humans and animals are able to solve a wide variety of perceptual, decision making and motor tasks w...
This thesis develops flexible and principled nonparametric learning algorithms to explore, understan...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
We introduce a new approach to learning in hierarchical latent-variable generative models called the...
This thesis covers an assortment of topics at the intersection of Bayesian nonparametrics and kernel...
Recent psychophysical experiments imply that the brain employs a neural representation of the uncert...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
Kernel methods are a broad class of algorithms that are applied in a host of scientific computing fi...
This paper describes the Synapto-dendritic Kernel Adapting Neuron (SKAN), a simple spiking neuron mo...
The paper introduces a robust connectionist technique for the empirical nonparametric estimation of ...
In the statistics and machine learning communities, there exists a perceived dichotomy be- tween sta...
Behavioral experiments on humans and animals suggest that the brain performs probabilistic inference...
This thesis studies the problem of regularizing and optimizing generative models, often using insigh...
The estimation of probability density functions (pdf) from unlabeled data samples is a relevant (and...
Many models in neuroscience, such as networks of spiking neurons or complex biophysical models, are ...
Humans and animals are able to solve a wide variety of perceptual, decision making and motor tasks w...
This thesis develops flexible and principled nonparametric learning algorithms to explore, understan...
Science makes extensive use of simulations to model the world. Statistical inference identifies whic...
We introduce a new approach to learning in hierarchical latent-variable generative models called the...
This thesis covers an assortment of topics at the intersection of Bayesian nonparametrics and kernel...
Recent psychophysical experiments imply that the brain employs a neural representation of the uncert...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
Kernel methods are a broad class of algorithms that are applied in a host of scientific computing fi...
This paper describes the Synapto-dendritic Kernel Adapting Neuron (SKAN), a simple spiking neuron mo...
The paper introduces a robust connectionist technique for the empirical nonparametric estimation of ...
In the statistics and machine learning communities, there exists a perceived dichotomy be- tween sta...
Behavioral experiments on humans and animals suggest that the brain performs probabilistic inference...
This thesis studies the problem of regularizing and optimizing generative models, often using insigh...
The estimation of probability density functions (pdf) from unlabeled data samples is a relevant (and...
Many models in neuroscience, such as networks of spiking neurons or complex biophysical models, are ...