The present thesis deals with numerical schemes to solve Markov Decision Problems (MDPs), partial differential equations (PDEs), quasi-variational inequalities (QVIs), backward stochastic differential equations (BSDEs) and reflected backward stochastic differential equations (RBSDEs). The thesis is divided into three parts.The first part focuses on methods based on quantization, local regression and global regression to solve MDPs. Firstly, we present a new algorithm, named Qknn, and study its consistency. A time-continuous control problem of market-making is then presented, which is theoretically solved by reducing the problem to a MDP, and whose optimal control is accurately approximated by Qknn. Then, a method based on Markovian embeddin...
The objective of this Final Year Project is to study deep learning-based numerical methods, with a f...
This thesis contains three parts that can be read independently. In the first part, we study the res...
In this thesis numerical methods for stochastic optimal control are investigated. More precisely a n...
The present thesis deals with numerical schemes to solve Markov Decision Problems (MDPs), partial di...
La thèse porte sur les schémas numériques pour les problèmes de décisions Markoviennes (MDPs), ...
Backward stochastic differential equations (BSDE) are known to be a powerful tool in mathematical mo...
This thesis proposes different problems of stochastic control and optimization that can be solved on...
This paper proposes two algorithms for solving stochastic control problems with deep learning, with ...
This Ph.D. thesis deals with the numerical solution of two types of stochastic problems. First, we i...
39 pages, 14 figuresInternational audienceThis paper presents several numerical applications of deep...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
There are two main parts of this thesis: Time-Inconsistent Control (TIC) problems (Chapters 1 and 2)...
The aim of this work is to propose an extension of the Deep BSDE solver by Han, E, Jentzen (2017) to...
This thesis addresses the problem of high dimensional inference.We propose different methods for est...
Questa tesi è incentrata sull'analisi di un algoritmo che permette di approssimare una soluzione per...
The objective of this Final Year Project is to study deep learning-based numerical methods, with a f...
This thesis contains three parts that can be read independently. In the first part, we study the res...
In this thesis numerical methods for stochastic optimal control are investigated. More precisely a n...
The present thesis deals with numerical schemes to solve Markov Decision Problems (MDPs), partial di...
La thèse porte sur les schémas numériques pour les problèmes de décisions Markoviennes (MDPs), ...
Backward stochastic differential equations (BSDE) are known to be a powerful tool in mathematical mo...
This thesis proposes different problems of stochastic control and optimization that can be solved on...
This paper proposes two algorithms for solving stochastic control problems with deep learning, with ...
This Ph.D. thesis deals with the numerical solution of two types of stochastic problems. First, we i...
39 pages, 14 figuresInternational audienceThis paper presents several numerical applications of deep...
We address a class of McKean-Vlasov (MKV) control problems with common noise, called polynomial cond...
There are two main parts of this thesis: Time-Inconsistent Control (TIC) problems (Chapters 1 and 2)...
The aim of this work is to propose an extension of the Deep BSDE solver by Han, E, Jentzen (2017) to...
This thesis addresses the problem of high dimensional inference.We propose different methods for est...
Questa tesi è incentrata sull'analisi di un algoritmo che permette di approssimare una soluzione per...
The objective of this Final Year Project is to study deep learning-based numerical methods, with a f...
This thesis contains three parts that can be read independently. In the first part, we study the res...
In this thesis numerical methods for stochastic optimal control are investigated. More precisely a n...