This is the last part of the research paper โ€œReinforcement Learning In Agent-based Market Simulation: Unveiling Realistic Stylized Facts And Behaviorโ€. Use the table of links below to navigate to the next part.

Part 1: Abstract & Introduction

Part 2: Important Concepts

Part 3: System Description

Part 4: Agents & Simulation Details

Part 5: Experiment Design

Part 6: Continual Learning

Part 7: Experiment Results

Part 8: Market and Agent Responsiveness to External Events

Part 9: Conclusion & References

Part 10: Additional Simulation Results

Part 11: Simulation Configuration

7.2 Simulation Configuration

Table 2 consists of all 14 agentsโ€™ configurations for groups of training, testing, and untrained. The hyper-parameters can be referenced in section 3.2.

Table 3 describes the detailed setups for the special simulations mentioned in Section 5.2 (Flash Sale and Informed LTs).

Table 4 shows the market characteristics of the simulations generated from different sets of hyper-parameters.

Table 5 shows the different setups for the simulation results.

Authors:

(1) Zhiyuan Yao, Stevens Institute of Technology, Hoboken, New Jersey, USA ([email protected]);

(2) Zheng Li, Stevens Institute of Technology, Hoboken, New Jersey, USA ([email protected]);

(3) Matthew Thomas, Stevens Institute of Technology, Hoboken, New Jersey, USA ([email protected]);

(4) Ionut Florescu, Stevens Institute of Technology, Hoboken, New Jersey, USA ([email protected]).


This paper is available on arxiv under CC BY-NC-SA 4.0 DEED license.