Multi-agent learning is a promising method to simulate aggregate competitive behaviour in finance. Learning expert agents’ reward functions through their external demonstrations is hence particularly relevant for subsequent design of realistic agent-based simulations. Inverse Reinforcement Learning (IRL) aims at acquiring such reward functions through inference, allowing to generalize the resulting policy to states not observed in the past. This paper investigates whether IRL can infer such rewards from agents within real financial stochastic environments: limit order books (LOB). We introduce a simple one level LOB, where the interactions of a number of stochastic agents and an expert trading agent are modelled as a Markov decision process...
Inverse reinforcement learning (IRL) aims at estimating an unknown reward function optimized by some...
Various methods for solving the inverse reinforcement learning (IRL) problem have been developed ind...
Classical game-theoretic approaches for multi-agent systems in both the forward policy design proble...
Inverse reinforcement learning has proved its ability to explain state-action trajectories of expert...
In decision-making problems reward function plays an important role in finding the best policy. Rein...
The field of finance is an interesting field in which much research takes place. In particular, its ...
Modeling possible future outcomes of robot-human interactions is of importance in the intelligent ve...
Abstract: Reinforcement learning (RL) is a kind of machine learning. It aims to optimize agents ’ po...
This purpose of this paper is to provide an overview of the theoretical background and applications ...
In traditional Reinforcement Learning (RL) [4], a single agent learns to act in an environment by op...
Market making is a fundamental trading problem in which an agent provides liquidity by continually o...
In real-world applications, inferring the intentions of expert agents (e.g., human operators) can be...
A major challenge faced by machine learning community is the decision making problems under uncertai...
First online: 31 January 2015This paper investigates learning-based agents that are capable of mimic...
The objective of this thesis is to design adaptive, data-driven and model-free automated trading str...
Inverse reinforcement learning (IRL) aims at estimating an unknown reward function optimized by some...
Various methods for solving the inverse reinforcement learning (IRL) problem have been developed ind...
Classical game-theoretic approaches for multi-agent systems in both the forward policy design proble...
Inverse reinforcement learning has proved its ability to explain state-action trajectories of expert...
In decision-making problems reward function plays an important role in finding the best policy. Rein...
The field of finance is an interesting field in which much research takes place. In particular, its ...
Modeling possible future outcomes of robot-human interactions is of importance in the intelligent ve...
Abstract: Reinforcement learning (RL) is a kind of machine learning. It aims to optimize agents ’ po...
This purpose of this paper is to provide an overview of the theoretical background and applications ...
In traditional Reinforcement Learning (RL) [4], a single agent learns to act in an environment by op...
Market making is a fundamental trading problem in which an agent provides liquidity by continually o...
In real-world applications, inferring the intentions of expert agents (e.g., human operators) can be...
A major challenge faced by machine learning community is the decision making problems under uncertai...
First online: 31 January 2015This paper investigates learning-based agents that are capable of mimic...
The objective of this thesis is to design adaptive, data-driven and model-free automated trading str...
Inverse reinforcement learning (IRL) aims at estimating an unknown reward function optimized by some...
Various methods for solving the inverse reinforcement learning (IRL) problem have been developed ind...
Classical game-theoretic approaches for multi-agent systems in both the forward policy design proble...