In this thesis, we study the problem of buying or selling a given volume of a financial asset within a given time horizon to the best possible price, a problem formally known as optimized trade execution. Our approach is an empirical one. We use historical data to simulate the process of placing artificial orders in a market. This simulation enables us to model the problem as a Markov decision process (MDP). Given this MDP, we train and evaluate a set of reinforcement learning (RL) algorithms all with the objective to minimize the transaction cost on unseen test data. We train and evaluate these for various instruments and problem settings, such as different trading horizons. Our first model was developed with the goal to validate results a...
The construction of automatic Financial Trading Systems (FTSs) is a subject of research of high inte...
For various reasons, financial institutions often make use of high-level trading strategies when buy...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
In this thesis, we study the problem of buying or selling a given volume of a financial asset within...
Market making is the process whereby a market participant, called a market maker, simultaneously and...
We present the first large-scale empirical application of reinforcement learning to the important pr...
In this thesis an attempt is made to find the optimal order execution policy that maximizes the rewa...
The objective of this thesis is to design adaptive, data-driven and model-free automated trading str...
In this thesis, we develop machine learning frameworks that are suitable for algorithmic trading, wh...
The rapid changes in the finance industry due to the increasing amount of data have revolutionized t...
Market making – the process of simultaneously and continuously providing buy and sell prices in a fi...
The Optimal Execution Problem has, for over a decade been of interest in financial mathematics. Solv...
Market making is a high-frequency trading problem for which solutions based on reinforcement learnin...
Market making is a problem of the optimal placement of limit orders on both sides of the limit order...
In this paper we present the first practical application of reinforcement learning to optimal market...
The construction of automatic Financial Trading Systems (FTSs) is a subject of research of high inte...
For various reasons, financial institutions often make use of high-level trading strategies when buy...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...
In this thesis, we study the problem of buying or selling a given volume of a financial asset within...
Market making is the process whereby a market participant, called a market maker, simultaneously and...
We present the first large-scale empirical application of reinforcement learning to the important pr...
In this thesis an attempt is made to find the optimal order execution policy that maximizes the rewa...
The objective of this thesis is to design adaptive, data-driven and model-free automated trading str...
In this thesis, we develop machine learning frameworks that are suitable for algorithmic trading, wh...
The rapid changes in the finance industry due to the increasing amount of data have revolutionized t...
Market making – the process of simultaneously and continuously providing buy and sell prices in a fi...
The Optimal Execution Problem has, for over a decade been of interest in financial mathematics. Solv...
Market making is a high-frequency trading problem for which solutions based on reinforcement learnin...
Market making is a problem of the optimal placement of limit orders on both sides of the limit order...
In this paper we present the first practical application of reinforcement learning to optimal market...
The construction of automatic Financial Trading Systems (FTSs) is a subject of research of high inte...
For various reasons, financial institutions often make use of high-level trading strategies when buy...
An algorithm that can learn an optimal policy to execute trade profitable is any market participant’...