We present a general framework for portfolio risk management in discrete time, based on a replicating martingale. This martingale is learned from a finite sample in a supervised setting. The model learns the features necessary for an effective low-dimensional representation, overcoming the curse of dimensionality common to function approximation in high-dimensional spaces. We show results based on polynomial and neural network bases. Both offer superior results to naive Monte Carlo methods and other existing methods like least-squares Monte Carlo and replicating portfolios.Comment: 26 pages (main), 13 pages (appendix), 3 figures, 20 table
The purpose of this thesis is to review and expand the main result in the paper by Daniel Kinn, "Red...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
We present a general framework for portfolio risk management in discrete time, based on a replicatin...
In the first chapter, I apply machine learning techniques to numerically solve high-dimensional cont...
In the first chapter, I apply machine learning techniques to numerically solve high-dimensional cont...
Financial researchers, who often work with large volumes of financial data, need efficient tools to ...
We consider the problems commonly encountered in asset management such as optimal execution, portfol...
In this paper, we propose a machine learning algorithm for time-inconsistent portfolio optimization....
Artificial intelligence, AI, has received increasing attention from the finance industry over recent...
In this paper, we propose an efficient method for computing the price of multi-asset American option...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
This paper proposes an approximation method to create an optimal continuous-time portfolio strategy ...
In this paper, we propose a neural network-based method for CVA computations of a portfolio of deriv...
The construction of approximate replication strategies for derivative contracts in incomplete market...
The purpose of this thesis is to review and expand the main result in the paper by Daniel Kinn, "Red...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
We present a general framework for portfolio risk management in discrete time, based on a replicatin...
In the first chapter, I apply machine learning techniques to numerically solve high-dimensional cont...
In the first chapter, I apply machine learning techniques to numerically solve high-dimensional cont...
Financial researchers, who often work with large volumes of financial data, need efficient tools to ...
We consider the problems commonly encountered in asset management such as optimal execution, portfol...
In this paper, we propose a machine learning algorithm for time-inconsistent portfolio optimization....
Artificial intelligence, AI, has received increasing attention from the finance industry over recent...
In this paper, we propose an efficient method for computing the price of multi-asset American option...
Machine Learning (ML) has steadily been advancing at a respectable rate ever since the cost of compu...
This paper proposes an approximation method to create an optimal continuous-time portfolio strategy ...
In this paper, we propose a neural network-based method for CVA computations of a portfolio of deriv...
The construction of approximate replication strategies for derivative contracts in incomplete market...
The purpose of this thesis is to review and expand the main result in the paper by Daniel Kinn, "Red...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...
International audienceIn this paper we propose an efficient method to compute the price of multi-ass...