INTAGS: Interactive Agent-Guided Simulation
Song Wei, Andrea Coletta, Svitlana Vyetrenko, Tucker Balch

TL;DR
This paper introduces INTAGS, a novel framework for creating realistic multi-agent system simulators by optimizing a new metric through reinforcement learning, demonstrated on stock market simulations.
Contribution
The paper proposes a new MAS distance metric and an interactive agent-guided simulation framework that improves the realism of multi-agent system simulators.
Findings
INTAGS produces more realistic simulated data than existing methods.
The framework effectively captures the sequential and interactive nature of MAS.
Demonstrated success in stock market simulation example.
Abstract
In many applications involving multi-agent system (MAS), it is imperative to test an experimental (Exp) autonomous agent in a high-fidelity simulator prior to its deployment to production, to avoid unexpected losses in the real-world. Such a simulator acts as the environmental background (BG) agent(s), called agent-based simulator (ABS), aiming to replicate the complex real MAS. However, developing realistic ABS remains challenging, mainly due to the sequential and dynamic nature of such systems. To fill this gap, we propose a metric to distinguish between real and synthetic multi-agent systems, which is evaluated through the live interaction between the Exp and BG agents to explicitly account for the systems' sequential nature. Specifically, we characterize the system/environment by studying the effect of a sequence of BG agents' responses to the environment state evolution and take…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Stock Market Forecasting Methods
MethodsMixing Adam and SGD · Causal inference
