In corporate bond markets, which are mainly OTC markets, market makers play a central role by providing bid and ask prices for a large number of bonds to asset managers from all around the globe. Determining the optimal bid and ask quotes that a market maker should set for a given universe of bonds is a complex task. Useful models exist, most of them inspired by that of Avellaneda and Stoikov. These models describe the complex optimization problem faced by market makers: proposing bid and ask prices in an optimal way for making money out of the difference between bid and ask prices while mitigating the market risk associated with holding inventory. While most of the models only tackle one-asset market making, they can often be generalized t...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Portfolio management is the process of continually reallocating funds into financial instruments, ai...
Is there an informational gain by training a Deep Reinforcement Learning agent for automated stock t...
In corporate bond markets, which are mainly OTC markets, market makers play a central role by provid...
International audienceIn corporate bond markets, which are mainly OTC markets, market makers play a ...
Market making is a high-frequency trading problem for which solutions based on reinforcement learnin...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
A dynamic pricing problem is difficult due to the highly dynamic environment and unknown demand dist...
Market making is the process whereby a market participant, called a market maker, simultaneously and...
Deep reinforcement learning (DRL) has achieved significant results in many machine learning (ML) ben...
In this thesis, we develop machine learning frameworks that are suitable for algorithmic trading, wh...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
The rapid changes in the finance industry due to the increasing amount of data have revolutionized t...
In this thesis, we study the problem of buying or selling a given volume of a financial asset within...
In the first chapter, I apply machine learning techniques to numerically solve high-dimensional cont...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Portfolio management is the process of continually reallocating funds into financial instruments, ai...
Is there an informational gain by training a Deep Reinforcement Learning agent for automated stock t...
In corporate bond markets, which are mainly OTC markets, market makers play a central role by provid...
International audienceIn corporate bond markets, which are mainly OTC markets, market makers play a ...
Market making is a high-frequency trading problem for which solutions based on reinforcement learnin...
Deep reinforcement learning is recognised as an advantageous solution to automated stock trading. It...
A dynamic pricing problem is difficult due to the highly dynamic environment and unknown demand dist...
Market making is the process whereby a market participant, called a market maker, simultaneously and...
Deep reinforcement learning (DRL) has achieved significant results in many machine learning (ML) ben...
In this thesis, we develop machine learning frameworks that are suitable for algorithmic trading, wh...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
The rapid changes in the finance industry due to the increasing amount of data have revolutionized t...
In this thesis, we study the problem of buying or selling a given volume of a financial asset within...
In the first chapter, I apply machine learning techniques to numerically solve high-dimensional cont...
The emergence and advancements in Deep learning and Artificial Intelligence have been disruptive for...
Portfolio management is the process of continually reallocating funds into financial instruments, ai...
Is there an informational gain by training a Deep Reinforcement Learning agent for automated stock t...