利用集合卡尔曼滤波器的美国财富分布代理模型

IF 2.3 3区 经济学 Q2 ECONOMICS
Yannick Oswald , Keiran Suchak , Nick Malleson
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引用次数: 0

摘要

财富分配是经济、社会和环境动态的核心。高频分配数据的发布以及复杂的全球经济的快速发展,使得对财富和收入分配的 "实时 "预测变得越来越重要。例如,在 2020 年春季 COVID-19 大流行期间,股票市场在短时间内经历了暴跌和暴涨,显然重塑了美国的财富分配。然而,经济数据在发布之初可能具有不确定性,需要重新调整,尤其是在大流行病等危机时刻,有关家庭消费和企业回报的信息是零散的,与 "正常情况 "大相径庭。我们在此的动机是开发一种方法来克服 "实时 "数据不确定的问题,并使经济模拟方法(如基于代理的模型)在与新发布的数据相结合时能够准确地进行 "实时 "预测。因此,我们利用 1990 年至 2022 年的美国数据,结合数据同化,测试了两个不同的、基于代理的财富分配模型。数据同化本质上是应用控制理论--一套旨在通过将 "实时 "观测数据整合到模拟中来改进模型预测的算法。我们采用的算法是集合卡尔曼滤波器(EnKF),它在计算昂贵的问题上表现出色。我们的研究结果表明,虽然基础模型在历史上已经非常吻合,但 EnKF 能够更好地拟合数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agent-based models of the United States wealth distribution with Ensemble Kalman Filter
The distribution of wealth is central to economic, social, and environmental dynamics. The release of high-frequency distributional data and the rapid pace of the complex global economy makes ‘real-time’ predictions about the distribution of wealth and income increasingly relevant. For instance, during the COVID-19 pandemic in spring 2020, the stock markets experienced a crash followed by a surge within a brief period, evidently reshaping the wealth distribution in the US. Yet economic data, when first released, can be uncertain and need to be readjusted — again specifically so during crisis moments like the pandemic when information about household consumption and business returns is patchy and drastically different from “business-as-usual”. Our motivation here is to develop one way of overcoming the problem of uncertain ‘real-time’ data and enable economic simulation methods, such as agent-based models, to accurately predict in ‘real-time’ when combined with newly released data. Therefore, we tested two distinct, parsimonious agent-based models of wealth distribution, calibrated with US data from 1990 to 2022, in conjunction with data assimilation. Data assimilation is essentially applied control theory — a set of algorithms aiming to improve model predictions by integrating ‘real-time’ observational data into a simulation. The algorithm we employed is the Ensemble Kalman Filter (EnKF), which performs well in the context of computationally expensive problems. Our findings reveal that while the base models already align well historically, the EnKF enables a superior fit to the data.
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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
392
期刊介绍: The Journal of Economic Behavior and Organization is devoted to theoretical and empirical research concerning economic decision, organization and behavior and to economic change in all its aspects. Its specific purposes are to foster an improved understanding of how human cognitive, computational and informational characteristics influence the working of economic organizations and market economies and how an economy structural features lead to various types of micro and macro behavior, to changing patterns of development and to institutional evolution. Research with these purposes that explore the interrelations of economics with other disciplines such as biology, psychology, law, anthropology, sociology and mathematics is particularly welcome.
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