This article presents XGB-Chiarella, a powerful new approach for deploying agent-based models to generate realistic intra-day artificial financial price data. This approach is based on agent-based models, calibrated by XGBoost machine learning surrogate. Following the Extended Chiarella model, three types of trading agents are introduced in this agent-based model: fundamental traders, momentum traders, and noise traders. In particular, XGB-Chiarella focuses on configuring the simulation to accurately reflect real market behaviours. Instead of using the original Expectation-Maximisation algorithm for parameter estimation, the agent-based Extended Chiarella model is calibrated using XGBoost machine learning surrogate. It is shown that the mac...
Agent-Based Modeling (ABM) is a powerful simulation technique with applications in several fields, i...
We build an agent-based model of a financial market that is able to jointly reproduce many of the st...
Given recent requirements for ensuring the robustness of algorithmic trading strategies laid out in ...
textabstractThe dynamics of financial markets is subject of much debate among researchers and financ...
Abstract. We propose a new method for creating alternative scenarios for the evolution of a financia...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
This paper introduces an agent-based artificial financial market in which heterogeneous agents trade...
Abstract—Algorithmic trading strategies are most often evaluated by running against historical data ...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
The R code explores the calibration and simulation of the Farmer and Joshi (2002) agent-based model ...
We investigate the application of machine learning Agent Based Modelling (ABM) techniques to model a...
International audienceQuantitative finance has had a long tradition of a bottom-up approach to compl...
Initially, financial market research has focused on analytical frameworks that are based on the assu...
Agent-Based Modeling (ABM) is a powerful simulation technique with applications in several fields, i...
We build an agent-based model of a financial market that is able to jointly reproduce many of the st...
Given recent requirements for ensuring the robustness of algorithmic trading strategies laid out in ...
textabstractThe dynamics of financial markets is subject of much debate among researchers and financ...
Abstract. We propose a new method for creating alternative scenarios for the evolution of a financia...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
Thesis: M. Fin., Massachusetts Institute of Technology, Sloan School of Management, Master of Financ...
This paper introduces an agent-based artificial financial market in which heterogeneous agents trade...
Abstract—Algorithmic trading strategies are most often evaluated by running against historical data ...
In this paper we introduce a calibration procedure for validating of agent based models. Starting fr...
The R code explores the calibration and simulation of the Farmer and Joshi (2002) agent-based model ...
We investigate the application of machine learning Agent Based Modelling (ABM) techniques to model a...
International audienceQuantitative finance has had a long tradition of a bottom-up approach to compl...
Initially, financial market research has focused on analytical frameworks that are based on the assu...
Agent-Based Modeling (ABM) is a powerful simulation technique with applications in several fields, i...
We build an agent-based model of a financial market that is able to jointly reproduce many of the st...
Given recent requirements for ensuring the robustness of algorithmic trading strategies laid out in ...