系统化宏观框架预测:具有会计恒等式的高维条件预测

IF 3.3 2区 经济学 Q1 BUSINESS, FINANCE
Sakai Ando, Taehoon Kim
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引用次数: 0

摘要

预测具有会计同一性限制的多个宏观经济变量,也称为宏观框架,有助于提出内部一致的经济叙述,并广泛用于政策机构。然而,宏观框架预测是具有挑战性的。预测者通常只有(已知)变量的一个子集的信息,并且在缺乏系统的方法来预测其余(未知)变量的情况下,这项任务是资源密集型的,并且涉及到特别的调整。我们提出了一种新的两步预测方法,以已知变量为条件预测未知变量,该方法反映了历史相关性并满足会计恒等式。该方法提供了(1)将可用信息纳入已知变量的灵活性和(2)自动化预测未知变量的便利性。应用我们的方法来预测一个发达国家和新兴市场国家的GDP子成分,我们表明它在替代预测技术上有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Systematizing Macroframework Forecasting: High-Dimensional Conditional Forecasting with Accounting Identities

Systematizing Macroframework Forecasting: High-Dimensional Conditional Forecasting with Accounting Identities

Forecasting multiple macroeconomic variables with accounting identity restrictions, also known as macroframework, is useful for presenting an internally consistent economic narrative and is widely used in policy institutions. Macroframework forecasting, however, is challenging. Forecasters often have information about only a subset of (known) variables, and in the absence of a systematic way to forecast the rest of the (unknown) variables, the task is resource-intensive and involves ad-hoc adjustments. We propose a novel 2-step method to forecast unknown variables conditional on known variables, which reflects historical correlations and satisfies accounting identities. The method offers (1) the flexibility to incorporate available information in known variables and (2) the convenience to automate the forecasting of unknown variables. Applying our method to forecast GDP subcomponents in an advanced and emerging market country, we show that it improves upon alternative forecasting techniques.

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来源期刊
CiteScore
5.50
自引率
4.70%
发文量
39
期刊介绍: The IMF Economic Review is the official research journal of the International Monetary Fund (IMF). It is dedicated to publishing peer-reviewed, high-quality, context-related academic research on open-economy macroeconomics. It emphasizes rigorous analysis with an empirical orientation that is of interest to a broad audience, including academics and policymakers. Studies that borrow from, and interact with, other fields such as finance, international trade, political economy, labor, economic history or development are also welcome. The views presented in published papers are those of the authors and should not be attributed to, or reported as, reflecting the position of the IMF, its Executive Board, or any other organization mentioned herein. Comments “The IMF Economic Review has been uniquely successful in publishing papers that rigorously analyze real international macroeconomic problems and in a manner that has immediate policy relevance. This success is owed to a great extent to the high quality of the editorial board, which is able to identify papers that are both relevant for policy and are executed using state-of-the-art tools so as to make the analysis compelling.” - Gita Gopinath, Economic Counsellor and Director of Research, IMF “IMF Economic Review is devoted to state-of-the-art research on the global economy. Given the Fund''s unique position on the front lines of surveillance and crisis management, anyone interested in international economic policy or in macroeconomics more generally will find this journal to be essential reading.” - Maurice Obstfeld, Professor of Economics at University of California, Berkeley; and former Economic Counsellor and Director of Research, IMF “There is great need for a rigorous academic publication that addresses the key global macro questions of our times. This is what the IMF Economic Review aims to be.” - Pierre-Olivier Gourinchas, Professor of Economics at University of California, Berkeley; and former Editor of the IMF Economic Review “To navigate the global crisis, and to take the best policy decisions, will require mobilizing and extending the knowledge we have about open economy macro, from the implications of liquidity traps, to the dangers of large fiscal deficits, to macro-financial interactions, to the contours of a better international monetary and financial system. My hope and my expectation is that the IMF Economic Review will be central to the effort.” - Olivier J. Blanchard, Peterson Institute for International Economics; former Economic Counsellor and Director of Research Department, IMF
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