Optimization problems with continuous data appear in, e.g., robust machine learning, functional data analysis, and variational inference. Here, the target function is given as an integral over a family of (continuously) indexed target functions - integrated with respect to a probability measure. Such problems can often be solved by stochastic optimization methods: performing optimization steps with respect to the indexed target function with randomly switched indices. In this work, we study a continuous-time variant of the stochastic gradient descent algorithm for optimization problems with continuous data. This so-called stochastic gradient process consists in a gradient flow minimizing an indexed target function that is coupled with a con...
We develop the mathematical foundations of the stochastic modified equations (SME) framework for ana...
Current machine learning practice requires solving huge-scale empirical risk minimization problems q...
We consider the problem of policy evaluation for continuous-time processes using the temporal-differ...
Abstract: Stochastic gradient descent is an optimisation method that combines classical gradient des...
We propose new continuous-time formulations for first-order stochastic optimization algorithms such ...
Stochastic optimisation problems are ubiquitous across machine learning, engineering, the natural sc...
We develop a new continuous-time stochastic gradient descent method for optimizing over the stationa...
While the design of algorithms is traditionally a discrete endeavour, in recent years many advances ...
Evolutionary algorithms perform optimization using a population of sample solution points. An intere...
We consider stochastic optimization under distributional uncertainty, where the unknown distribution...
The goal of this paper is to debunk and dispel the magic behind black-box optimizers and stochastic ...
International audiencePolicy search is a method for approximately solving an optimal control problem...
We study stochastic algorithms in a streaming framework, trained on samples coming from a dependent ...
Continuous optimization is never easy: the exact solution is always a luxury demand and ...
In the thesis, we study the problems regarding robustness and model adaptivity with stochastic optim...
We develop the mathematical foundations of the stochastic modified equations (SME) framework for ana...
Current machine learning practice requires solving huge-scale empirical risk minimization problems q...
We consider the problem of policy evaluation for continuous-time processes using the temporal-differ...
Abstract: Stochastic gradient descent is an optimisation method that combines classical gradient des...
We propose new continuous-time formulations for first-order stochastic optimization algorithms such ...
Stochastic optimisation problems are ubiquitous across machine learning, engineering, the natural sc...
We develop a new continuous-time stochastic gradient descent method for optimizing over the stationa...
While the design of algorithms is traditionally a discrete endeavour, in recent years many advances ...
Evolutionary algorithms perform optimization using a population of sample solution points. An intere...
We consider stochastic optimization under distributional uncertainty, where the unknown distribution...
The goal of this paper is to debunk and dispel the magic behind black-box optimizers and stochastic ...
International audiencePolicy search is a method for approximately solving an optimal control problem...
We study stochastic algorithms in a streaming framework, trained on samples coming from a dependent ...
Continuous optimization is never easy: the exact solution is always a luxury demand and ...
In the thesis, we study the problems regarding robustness and model adaptivity with stochastic optim...
We develop the mathematical foundations of the stochastic modified equations (SME) framework for ana...
Current machine learning practice requires solving huge-scale empirical risk minimization problems q...
We consider the problem of policy evaluation for continuous-time processes using the temporal-differ...