同性恋
基于Agent的模型
计算机科学
骨料(复合)
数据科学
过程(计算)
还原论
心理学
管理科学
认识论
人工智能
社会心理学
工程类
纳米技术
哲学
材料科学
操作系统
作者
Joshua J. Jackson,David G. Rand,Kevin W. Lewis,Michael I. Norton,Kurt Gray
标识
DOI:10.1177/1948550617691100
摘要
Agent-based modeling is a long-standing but underused method that allows researchers to simulate artificial worlds for hypothesis testing and theory building. Agent-based models (ABMs) offer unprecedented control and statistical power by allowing researchers to precisely specify the behavior of any number of agents and observe their interactions over time. ABMs are especially useful when investigating group behavior or evolutionary processes and can uniquely reveal nonlinear dynamics and emergence—the process whereby local interactions aggregate into often-surprising collective phenomena such as spatial segregation and relational homophily. We review several illustrative ABMs, describe the strengths and limitations of this method, and address two misconceptions about ABMs: reductionism and “you get out what you put in.” We also offer maxims for good and bad ABMs, give practical tips for beginner modelers, and include a list of resources and other models. We conclude with a seven-step guide to creating your own model.
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