Understanding the implications of algorithmic trading calls for modeling financial markets at a level of fidelity that often precludes analytic solution. We describe how agent-based simulation modeling can be combined with game-theoretic reasoning to examine the effects of market variables on outcomes of interest. The approach is illustrated in a basic model where investors trade a single security through a continuous double auction mechanism. Our results demonstrate the feasibility of the approach, and raise questions about the use of spreads as a proxy for trading cost and welfare
Stock markets strive to provide an efficient trading platform for investors. Trading rules and mecha...
Stock markets strive to provide an efficient trading platform for investors. Trading rules and mecha...
Agent-based models (ABMs) are a natural choice for understanding many sociotechnical systems. In par...
Initially, financial market research has focused on analytical frameworks that are based on the assu...
Abstract—Algorithmic trading strategies are most often evaluated by running against historical data ...
Abstract—Algorithmic trading strategies are most often evaluated by running against historical data ...
textabstractThe dynamics of financial markets is subject of much debate among researchers and financ...
Agent-based modelling (ABM) is broadly adopted to empirically study the market microstructure. Resea...
This paper introduces an agent-based artificial financial market in which heterogeneous agents trade...
Given recent requirements for ensuring the robustness of algorithmic trading strategies laid out in ...
We implement a multi-agent financial market model simulation in which agents follow technical and fu...
Algorithmic trading (AT) strategies aim at executing large orders discretely, in order to minimize t...
The ultimate value of theories describing the fundamental mechanisms behind asset prices in financia...
This paper describes our experience in building an evo-lutionary system for agent-based modeling of ...
In the recent past, a number of interesting agent-based financial market models have been proposed. ...
Stock markets strive to provide an efficient trading platform for investors. Trading rules and mecha...
Stock markets strive to provide an efficient trading platform for investors. Trading rules and mecha...
Agent-based models (ABMs) are a natural choice for understanding many sociotechnical systems. In par...
Initially, financial market research has focused on analytical frameworks that are based on the assu...
Abstract—Algorithmic trading strategies are most often evaluated by running against historical data ...
Abstract—Algorithmic trading strategies are most often evaluated by running against historical data ...
textabstractThe dynamics of financial markets is subject of much debate among researchers and financ...
Agent-based modelling (ABM) is broadly adopted to empirically study the market microstructure. Resea...
This paper introduces an agent-based artificial financial market in which heterogeneous agents trade...
Given recent requirements for ensuring the robustness of algorithmic trading strategies laid out in ...
We implement a multi-agent financial market model simulation in which agents follow technical and fu...
Algorithmic trading (AT) strategies aim at executing large orders discretely, in order to minimize t...
The ultimate value of theories describing the fundamental mechanisms behind asset prices in financia...
This paper describes our experience in building an evo-lutionary system for agent-based modeling of ...
In the recent past, a number of interesting agent-based financial market models have been proposed. ...
Stock markets strive to provide an efficient trading platform for investors. Trading rules and mecha...
Stock markets strive to provide an efficient trading platform for investors. Trading rules and mecha...
Agent-based models (ABMs) are a natural choice for understanding many sociotechnical systems. In par...