二十一世纪贝叶斯计量经济学的挑战与机遇:个人观点

Herman K. van Dijk
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引用次数: 0

摘要

这篇文章是关于有目的的贝叶斯计量经济学。具体而言,本文利用现代贝叶斯计量经济学的一个重要特征,讨论了二十一世纪贝叶斯计量经济学面临的六项社会挑战和研究机遇:通过使用基于模拟的贝叶斯推断,可以评估各种相关经济事件的条件概率。硬件和软件方面的巨大进步使得这种贝叶斯计算方法成为经济学中许多新数据模式和模型复杂性占主导地位的子领域中极具吸引力的研究工具。本文将简要讨论以下挑战和机遇,包括二十世纪为应对这些挑战所取得的科学成果:对一切事物的后验和预测分析:将微观经济因果关系与宏观经济问题联系起来;对速度的需求:模型的复杂性和算法的黄金时代;对模型、预测和政策(包括其不确定性)的学习;两极分化、失衡和冲击导致的时间分布变化;气候变化与宏观经济;最后,也是最重要的一点,广泛、便捷、先进的高级培训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Challenges and Opportunities for Twenty First Century Bayesian Econometricians: A Personal View
This essay is about Bayesian econometrics with a purpose. Specifically, six societal challenges and research opportunities that confront twenty first century Bayesian econometricians are discussed using an important feature of modern Bayesian econometrics: conditional probabilities of a wide range of economic events of interest can be evaluated by using simulation-based Bayesian inference. The enormous advances in hardware and software have made this Bayesian computational approach a very attractive vehicle of research in many subfields in economics where novel data patterns and substantial model complexity are predominant. In this essay the following challenges and opportunities are briefly discussed, including the scientific results obtained in the twentieth century leading up to these challenges: Posterior and predictive analysis of everything: connecting micro-economic causality with macro-economic issues; the need for speed: model complexity and the golden age of algorithms; learning about models, forecasts and policies including their uncertainty; temporal distributional change due to polarisation, imbalances and shocks; climate change and the macroeconomy; finally and most importantly, widespread, accessible, advanced high-level training.
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