大数据中的因子增强预测

IF 6.9 2区 经济学 Q1 ECONOMICS
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引用次数: 0

摘要

本文评估了大数据中各种因素估计方法的预测性能。使用七种因子估计方法和 13 条决定因子数量的决策规则进行了广泛的预测实验。样本外预测结果表明,在所有可能的替代方法中,第一个偏最小二乘法因子(1-PLS)往往是表现最好的方法。这一发现在不同预测期限和预测模型下的许多目标变量中都很普遍。这种明显改善的原因在于 PLS 因子估计策略考虑了与目标变量的协方差。其次,使用一致估计的因子数不一定能提高预测性能。最大的预测收益往往来自于决策规则,而决策规则并不能始终如一地估算出真正的因子数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Factor-augmented forecasting in big data

This paper evaluates the predictive performance of various factor estimation methods in big data. Extensive forecasting experiments are examined using seven factor estimation methods with 13 decision rules determining the number of factors. The out-of-sample forecasting results show that the first Partial Least Squares factor (1-PLS) tends to be the best-performing method among all the possible alternatives. This finding is prevalent in many target variables under different forecasting horizons and models. This significant improvement can be explained by the PLS factor estimation strategy that considers the covariance with the target variable. Second, using a consistently estimated number of factors may not necessarily improve forecasting performance. The greatest predictive gain often derives from decision rules that do not consistently estimate the true number of factors.

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来源期刊
CiteScore
17.10
自引率
11.40%
发文量
189
审稿时长
77 days
期刊介绍: The International Journal of Forecasting is a leading journal in its field that publishes high quality refereed papers. It aims to bridge the gap between theory and practice, making forecasting useful and relevant for decision and policy makers. The journal places strong emphasis on empirical studies, evaluation activities, implementation research, and improving the practice of forecasting. It welcomes various points of view and encourages debate to find solutions to field-related problems. The journal is the official publication of the International Institute of Forecasters (IIF) and is indexed in Sociological Abstracts, Journal of Economic Literature, Statistical Theory and Method Abstracts, INSPEC, Current Contents, UMI Data Courier, RePEc, Academic Journal Guide, CIS, IAOR, and Social Sciences Citation Index.
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