The use of the agent-based paradigm in modelling financial markets provides an intuitively natural approach and is a well established technique. In contrast with the assumptions and conclusions of the efficient markets hypothesis (EMH), agent based models provide a refreshing causal approach to understanding the emergence of the general stylized facts of financial markets. In this report we present details of an agent-based stock market simulation in which traders utilise a hybrid mixture of common information criteria based inference procedures, including minimum message length (MML) inference. Traders in our model compete with each other using a range of different inference techniques to infer the parameters and appropriate order of simpl...
The R code explores the calibration and simulation of the Farmer and Joshi (2002) agent-based model ...
In this paper we propose an artificial stock market model based on interaction of heterogeneous agen...
Algorithmic trading (AT) strategies aim at executing large orders discretely, in order to minimize t...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
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...
Algorithmic trading (AT) strategies aim at executing large orders discretely, in order to minimize t...
Agent-based models (ABMs) are a natural choice for understanding many sociotechnical systems. In par...
textabstractThe dynamics of financial markets is subject of much debate among researchers and financ...
Agent-Based Modeling (ABM) is a powerful simulation technique with applications in several fields, i...
Initially, financial market research has focused on analytical frameworks that are based on the assu...
<div><p>Since the 2008 financial crisis, agent-based models (ABMs), which account for out-of-equilib...
We previously laid out a framework for predicting financial movements and pockets of predictability ...
Given recent requirements for ensuring the robustness of algorithmic trading strategies laid out in ...
Since the 2008 financial crisis, agent-based models (ABMs), which account for out-of-equilibrium dyn...
The R code explores the calibration and simulation of the Farmer and Joshi (2002) agent-based model ...
In this paper we propose an artificial stock market model based on interaction of heterogeneous agen...
Algorithmic trading (AT) strategies aim at executing large orders discretely, in order to minimize t...
Over the last three decades, most of the world's stock exchanges have transitioned to electronic tra...
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...
Algorithmic trading (AT) strategies aim at executing large orders discretely, in order to minimize t...
Agent-based models (ABMs) are a natural choice for understanding many sociotechnical systems. In par...
textabstractThe dynamics of financial markets is subject of much debate among researchers and financ...
Agent-Based Modeling (ABM) is a powerful simulation technique with applications in several fields, i...
Initially, financial market research has focused on analytical frameworks that are based on the assu...
<div><p>Since the 2008 financial crisis, agent-based models (ABMs), which account for out-of-equilib...
We previously laid out a framework for predicting financial movements and pockets of predictability ...
Given recent requirements for ensuring the robustness of algorithmic trading strategies laid out in ...
Since the 2008 financial crisis, agent-based models (ABMs), which account for out-of-equilibrium dyn...
The R code explores the calibration and simulation of the Farmer and Joshi (2002) agent-based model ...
In this paper we propose an artificial stock market model based on interaction of heterogeneous agen...
Algorithmic trading (AT) strategies aim at executing large orders discretely, in order to minimize t...