One of the main objectives of science and engineering is to predict the future state of the world -- and to come up with devices and strategies that would make this future state better. In some practical situations, we know how the state changes with time -- e.g., in meteorology, we know the partial differential equations that describes the atmospheric processes. In such situations, prediction becomes a purely computational problem. In many other situations, however, we do not know the equation describing the system\u27s dynamics. In such situations, we need to learn this dynamics from data. At present, the most efficient way of such learning is to use deep learning -- training a neural network with a large number of layers. To make this id...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
Training models that are multi-layer or recursive, such as neural networks or dynamical system model...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
This thesis characterizes the training process of deep neural networks. We are driven by two apparen...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
In the recent decade, deep neural networks have solved ever more complex tasks across many fronts in...
The landscape of the empirical risk of overparametrized deep convolutional neural networks (DCNNs) i...
Machine learning is a technology developed for extracting predictive models from data so as to be ...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Uncertainty quantification is a recent emerging interdisciplinary area that leverages the power of s...
The aim of the talk is to discuss the role of stochastic optimization techniques in designing learni...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
Training models that are multi-layer or recursive, such as neural networks or dynamical system model...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
This thesis characterizes the training process of deep neural networks. We are driven by two apparen...
The success of deep learning has shown impressive empirical breakthroughs, but many theoretical ques...
Machine learning has been a computer sciences buzzword for years. The technology has a lot of potent...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
In the recent decade, deep neural networks have solved ever more complex tasks across many fronts in...
The landscape of the empirical risk of overparametrized deep convolutional neural networks (DCNNs) i...
Machine learning is a technology developed for extracting predictive models from data so as to be ...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Uncertainty quantification is a recent emerging interdisciplinary area that leverages the power of s...
The aim of the talk is to discuss the role of stochastic optimization techniques in designing learni...
Accurate automatic optimization heuristics are necessary for dealing with the complexity and diversi...
Training models that are multi-layer or recursive, such as neural networks or dynamical system model...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....