This paper presents new machine learning approaches to approximate the solutions of optimal stopping problems. The key idea of these methods is to use neural networks, where the parameters of the hidden layers are generated randomly and only the last layer is trained, in order to approximate the continuation value. Our approaches are applicable to high dimensional problems where the existing approaches become increasingly impractical. In addition, since our approaches can be optimized using simple linear regression, they are easy to implement and theoretical guarantees are provided. Our randomized reinforcement learning approach and randomized recurrent neural network approach outperform the state-of-the-art and other relevant machine learn...
We propose a theoretical and computational framework for approximating the optimal policy in multi-a...
In this thesis, we theoretically analyze the ability of neural networks trained by gradient descent ...
This thesis deals with the explicit solution of optimal stopping problems with infinite time horizon...
In this paper we develop a deep learning method for optimal stopping problems which directly learns ...
In this paper, we study the optimal stopping problem in the so-called exploratory framework, in whic...
In this paper we study randomized optimal stopping problems and consider corresponding forward and b...
The optimal stopping problem is concerned with finding an optimal policy to stop a stochastic proces...
Nowadays many financial derivatives, such as American or Bermudan options, are of early exercise typ...
The purpose of this paper is two-fold, first, to review a recent method introduced by S. Becker, P. ...
A linear programming formulation of the optimal stopping problem for Markov decision processes is ap...
In this paper we consider optimal stopping problems in their dual form. In this way we reformulate...
This thesis considers several optimal stopping problems motivated by mathematical fi- nance, using t...
Recurrent Neural Networks (RNNs) are powerful sequence models that were believed to be difficult to ...
Random cost simulations were introduced as a method to investigate optimization prob-lems in systems...
Optimization is a natural language in which to express a multitude of problems from all reaches of t...
We propose a theoretical and computational framework for approximating the optimal policy in multi-a...
In this thesis, we theoretically analyze the ability of neural networks trained by gradient descent ...
This thesis deals with the explicit solution of optimal stopping problems with infinite time horizon...
In this paper we develop a deep learning method for optimal stopping problems which directly learns ...
In this paper, we study the optimal stopping problem in the so-called exploratory framework, in whic...
In this paper we study randomized optimal stopping problems and consider corresponding forward and b...
The optimal stopping problem is concerned with finding an optimal policy to stop a stochastic proces...
Nowadays many financial derivatives, such as American or Bermudan options, are of early exercise typ...
The purpose of this paper is two-fold, first, to review a recent method introduced by S. Becker, P. ...
A linear programming formulation of the optimal stopping problem for Markov decision processes is ap...
In this paper we consider optimal stopping problems in their dual form. In this way we reformulate...
This thesis considers several optimal stopping problems motivated by mathematical fi- nance, using t...
Recurrent Neural Networks (RNNs) are powerful sequence models that were believed to be difficult to ...
Random cost simulations were introduced as a method to investigate optimization prob-lems in systems...
Optimization is a natural language in which to express a multitude of problems from all reaches of t...
We propose a theoretical and computational framework for approximating the optimal policy in multi-a...
In this thesis, we theoretically analyze the ability of neural networks trained by gradient descent ...
This thesis deals with the explicit solution of optimal stopping problems with infinite time horizon...