Can we replicate real human behaviour using artificial neural networks?

IF 1.8 4区 数学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
G. Jäger, D. Reisinger
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引用次数: 2

Abstract

ABSTRACT Agent-based modelling is a powerful tool when simulating human systems, yet when human behaviour cannot be described by simple rules or maximizing one’s own profit, we quickly reach the limits of this methodology. Machine learning has the potential to bridge this gap by providing a link between what people observe and how they act in order to reach their goal. In this paper we use a framework for agent-based modelling that utilizes human values like fairness, conformity and altruism. Using this framework we simulate a public goods game and compare to experimental results. We can report good agreement between simulation and experiment and furthermore find that the presented framework outperforms strict reinforcement learning. Both the framework and the utility function are generic enough that they can be used for arbitrary systems, which makes this method a promising candidate for a foundation of a universal agent-based model.
我们能用人工神经网络复制真实的人类行为吗?
摘要:基于Agent的建模是模拟人类系统的强大工具,但当人类行为不能用简单的规则或最大化自身利润来描述时,我们很快就会达到这种方法的极限。机器学习有可能通过在人们的观察和行动之间建立联系来弥合这一差距,从而达到目标。在本文中,我们使用了一个基于代理的建模框架,该框架利用了公平、一致和利他主义等人类价值观。使用这个框架,我们模拟了一个公共产品游戏,并与实验结果进行了比较。我们可以报告模拟和实验之间的良好一致性,并且进一步发现所提出的框架优于严格的强化学习。该框架和效用函数都足够通用,可以用于任意系统,这使得该方法成为一种很有前途的基于通用代理的模型基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.80
自引率
5.30%
发文量
7
审稿时长
>12 weeks
期刊介绍: Mathematical and Computer Modelling of Dynamical Systems (MCMDS) publishes high quality international research that presents new ideas and approaches in the derivation, simplification, and validation of models and sub-models of relevance to complex (real-world) dynamical systems. The journal brings together engineers and scientists working in different areas of application and/or theory where researchers can learn about recent developments across engineering, environmental systems, and biotechnology amongst other fields. As MCMDS covers a wide range of application areas, papers aim to be accessible to readers who are not necessarily experts in the specific area of application. MCMDS welcomes original articles on a range of topics including: -methods of modelling and simulation- automation of modelling- qualitative and modular modelling- data-based and learning-based modelling- uncertainties and the effects of modelling errors on system performance- application of modelling to complex real-world systems.
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