Heppenstall Alison, Crooks Andrew, Malleson Nick, Manley Ed, Ge Jiaqi, Batty Michael
School of Geography University of Leeds Leeds U.K.
Alan Turing Institute The British Library London U.K.
Geogr Anal. 2021 Jan;53(1):76-91. doi: 10.1111/gean.12267. Epub 2020 Dec 4.
Despite reaching a point of acceptance as a research tool across the geographical and social sciences, there remain significant methodological challenges for agent-based models. These include recognizing and simulating emergent phenomena, agent representation, construction of behavioral rules, and calibration and validation. While advances in individual-level data and computing power have opened up new research avenues, they have also brought with them a new set of challenges. This article reviews some of the challenges that the field has faced, the opportunities available to advance the state-of-the-art, and the outlook for the field over the next decade. We argue that although agent-based models continue to have enormous promise as a means of developing dynamic spatial simulations, the field needs to fully embrace the potential offered by approaches from machine learning to allow us to fully broaden and deepen our understanding of geographical systems.
尽管基于主体的模型在地理科学和社会科学领域已成为一种被广泛接受的研究工具,但该模型仍面临重大的方法论挑战。这些挑战包括识别和模拟涌现现象、主体表征、行为规则构建以及校准与验证。虽然个体层面数据和计算能力的进步开辟了新的研究途径,但也带来了一系列新的挑战。本文回顾了该领域所面临的一些挑战、推动技术发展的机遇以及未来十年该领域的前景。我们认为,尽管基于主体的模型作为开发动态空间模拟的手段仍具有巨大潜力,但该领域需要充分利用机器学习方法所提供的潜力,以便全面拓宽和加深我们对地理系统的理解。