Market making is a fundamental trading problem in which an agent provides liquidity by continually offering to buy and sell a security. The problem is challenging due to inventory risk, the risk of accumulating an unfavourable position and ultimately losing money. In this paper, we develop a high-fidelity simulation of limit order book markets, and use it to design a market making agent using temporal-difference reinforcement learning. We use a linear combination of tile codings as a value function approximator, and design a custom reward function that controls inventory risk. We demonstrate the effectiveness of our approach by showing that our agent outperforms both simple benchmark strategies and a recent online learning approach from the...
Algorithmic trading allows investors to avoid emotional and irrational trading decisions and helps t...
Stock market forecasting has long piqued the curiosity of academics and professionals. However, beca...
In this thesis, we study the problem of buying or selling a given volume of a financial asset within...
The objective of this thesis is to design adaptive, data-driven and model-free automated trading str...
In this paper we present the first practical application of reinforcement learning to optimal market...
This paper presents an adaptive learning model for market-making under the reinforcement learning fr...
Market making is the process whereby a market participant, called a market maker, simultaneously and...
Market making strategy is one of the most popular high frequency trading strategies, where a market ...
The over-the-counter (OTC) market is characterized by a unique feature that allows market makers to ...
Market making – the process of simultaneously and continuously providing buy and sell prices in a fi...
Market making is a problem of the optimal placement of limit orders on both sides of the limit order...
We present the first large-scale empirical application of reinforcement learning to the important pr...
The application of reinforcement learning (RL) to algorithmic trading is, in many ways, a perfect ma...
This study focuses on applying reinforcement learning techniques in real time trading. We first brie...
For various reasons, financial institutions often make use of high-level trading strategies when buy...
Algorithmic trading allows investors to avoid emotional and irrational trading decisions and helps t...
Stock market forecasting has long piqued the curiosity of academics and professionals. However, beca...
In this thesis, we study the problem of buying or selling a given volume of a financial asset within...
The objective of this thesis is to design adaptive, data-driven and model-free automated trading str...
In this paper we present the first practical application of reinforcement learning to optimal market...
This paper presents an adaptive learning model for market-making under the reinforcement learning fr...
Market making is the process whereby a market participant, called a market maker, simultaneously and...
Market making strategy is one of the most popular high frequency trading strategies, where a market ...
The over-the-counter (OTC) market is characterized by a unique feature that allows market makers to ...
Market making – the process of simultaneously and continuously providing buy and sell prices in a fi...
Market making is a problem of the optimal placement of limit orders on both sides of the limit order...
We present the first large-scale empirical application of reinforcement learning to the important pr...
The application of reinforcement learning (RL) to algorithmic trading is, in many ways, a perfect ma...
This study focuses on applying reinforcement learning techniques in real time trading. We first brie...
For various reasons, financial institutions often make use of high-level trading strategies when buy...
Algorithmic trading allows investors to avoid emotional and irrational trading decisions and helps t...
Stock market forecasting has long piqued the curiosity of academics and professionals. However, beca...
In this thesis, we study the problem of buying or selling a given volume of a financial asset within...