巴西通货膨胀预测的机器学习方法:新竞争者与经典模型

Gustavo Silva Araujo , Wagner Piazza Gaglianone
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引用次数: 5

摘要

在本文中,我们探索了机器学习(ML)方法来改进巴西的通货膨胀预测。本文设计了一种广泛的样本外预测方法,采用了多个视角、501系列的大型数据库和50种预测方法,包括本文提出的新机器学习技术、传统的计量经济模型和预测组合方法。我们还提供工具来识别预测通货膨胀的关键变量,从而帮助打开机器学习黑匣子。尽管没有普遍的最佳模型的证据,但结果表明,在许多情况下,机器学习方法可以在均方误差方面优于传统的计量经济学模型。此外,研究结果表明,通货膨胀动力学存在非线性,这与预测通货膨胀有关。最重要的预测通常包括预测组合、基于树的方法(如随机森林和xgboost)、盈亏平衡通胀和基于调查的预期。总而言之,这些发现为宏观经济预测提供了宝贵的贡献,尤其是对巴西通胀的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning methods for inflation forecasting in Brazil: New contenders versus classical models

In this paper, we explore machine learning (ML) methods to improve inflation forecasting in Brazil. An extensive out-of-sample forecasting exercise is designed with multiple horizons, a large database of 501 series, and 50 forecasting methods, including new ML techniques proposed here, traditional econometric models and forecast combination methods. We also provide tools to identify the key variables to predict inflation, thus helping to open the ML black box. Despite the evidence of no universal best model, the results indicate that ML methods can, in numerous cases, outperform traditional econometric models in terms of mean-squared error. Moreover, the results indicate the existence of nonlinearities in the inflation dynamics, which are relevant to forecasting inflation. The set of top forecasts often includes forecast combinations, tree-based methods (such as random forest and xgboost), breakeven inflation, and survey-based expectations. Altogether, these findings offer a valuable contribution to macroeconomic forecasting, especially, focused on Brazilian inflation.

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