We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural networks have been interpreted as discretisations of an optimal control problem subject to an ordinary differential equation constraint. We review the first order conditions for optimality, and the conditions ensuring optimality after discretisation. This leads to a class of algorithms for solving the discrete optimal control problem which guarantee that the corresponding discrete necessary conditions for optimality are fulfilled. The differential equation setting lends itself to learning additional parameters such as the time discretisation. We explore this extension alongside natural constraints (e.g. time steps lie in a simplex). We compa...
In this paper we propose a Deep Learning architecture to approximate diffeomorphisms diffeotopic to ...
In recent years, deep learning has been connected with optimal control as a way to define a notion o...
We introduce Diffusion Network Adaptation (DNA), a framework for finding ap-proximate solutions to c...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
We briefly review recent work where deep learning neural networks have been interpreted as discretis...
The objectives of this study are the analysis and design of efficient computational methods for deep...
There is tremendous potential in using neural networks to optimize numerical methods. In this paper,...
Inspired by applications in optimal control of semilinear elliptic partial differential equations an...
Recent research reveals that deep learning is an effective way of solving high dimensional Hamilton-...
39 pages, 14 figuresInternational audienceThis paper presents several numerical applications of deep...
One of the main objectives of science and engineering is to predict the future state of the world --...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
We revisit the original approach of using deep learning and neural networks to solve differential eq...
Recent research reveals that deep learning is an effective way of solving high dimensional Hamilton–...
In this paper we propose a Deep Learning architecture to approximate diffeomorphisms diffeotopic to ...
In recent years, deep learning has been connected with optimal control as a way to define a notion o...
We introduce Diffusion Network Adaptation (DNA), a framework for finding ap-proximate solutions to c...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
We briefly review recent work where deep learning neural networks have been interpreted as discretis...
The objectives of this study are the analysis and design of efficient computational methods for deep...
There is tremendous potential in using neural networks to optimize numerical methods. In this paper,...
Inspired by applications in optimal control of semilinear elliptic partial differential equations an...
Recent research reveals that deep learning is an effective way of solving high dimensional Hamilton-...
39 pages, 14 figuresInternational audienceThis paper presents several numerical applications of deep...
One of the main objectives of science and engineering is to predict the future state of the world --...
This paper considers the problem of controlling a dynamical system when the state cannot be directly...
We revisit the original approach of using deep learning and neural networks to solve differential eq...
Recent research reveals that deep learning is an effective way of solving high dimensional Hamilton–...
In this paper we propose a Deep Learning architecture to approximate diffeomorphisms diffeotopic to ...
In recent years, deep learning has been connected with optimal control as a way to define a notion o...
We introduce Diffusion Network Adaptation (DNA), a framework for finding ap-proximate solutions to c...