机器学习宏观计量经济学:入门

Dimitris Korobilis
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引用次数: 2

摘要

本章回顾了可用于处理高维经验宏观模型中可能“参数多于观测值”的推理挑战的计量经济学方法。这些方法广泛地包括大数据的机器学习算法,但也包括相对于解释变量数量而言观测时间较短的数据的更传统的估计算法。
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 Macroeconometrics: A Primer
This Chapter reviews econometric methods that can be used in order to deal with the challenges of inference in high-dimensional empirical macro models with possibly 'more parameters than observations'.These methods broadly include machine learning algorithms for Big Data, but also more traditional estimation algorithms for data with a short span of observations relative to the number of explanatory variables. While building mainly on a univariate linear regression setting, I show how machine learning ideas can be generalized to classes of models that are interesting to applied macroeconomists, such as time-varying parameter models and vector autoregressions.
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