会计对预测GDP增长有用吗?机器学习视角

S. Datar, Apurv Jain, Charles C. Y. Wang, Siyu Zhang
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引用次数: 0

摘要

我们提供了一个全面的检查是否,在多大程度上,哪些会计变量是有用的,以提高GDP增长预测的预测准确性。我们利用统计模型来容纳广泛的(341)个变量(超过时间序列观察的总数),并应用机器学习技术来训练、验证和测试预测模型。对于近期(当前和下个季度)GDP增长,会计并不能提高预测的样本外准确性,因为专业预测者的预测相对有效。会计对更长期(未来三个季度和四个季度)GDP增长预测的预测有用性增加:它们对模型预测的贡献更大;此外,它们的加入将模型的样本外预测精度提高了13%到46%。总的来说,四类会计变量——与利润、应计估计(例如,贷款损失准备金或注销)、资本筹集或分配以及资本配置决策(例如,投资)有关——是最能反映经济长期前景的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Is Accounting Useful for Forecasting GDP Growth? A Machine Learning Perspective
We provide a comprehensive examination of whether, to what extent, and which accounting variables are useful for improving the predictive accuracy of GDP growth forecasts. We leverage statistical models that accommodate a broad set of (341) variables---outnumbering the total time-series observations---and apply machine learning techniques to train, validate, and test the prediction models. For near-term (current and next-quarter) GDP growth, accounting does not improve the out-of-sample accuracy of predictions because the professional forecasters' predictions are relatively efficient. Accounting's predictive usefulness increases for more distant-term (three- and four-quarters-ahead) GDP growth forecasts: they contribute more to the model's predictions; moreover, their inclusion increases the model's out-of-sample predictive accuracy by 13 to 46%. Overall, four categories of accounting variables---relating to profits, accrual estimates (e.g., loan loss provisions or write-offs), capital raises or distributions, and capital allocation decisions (e.g., investments)---are most informative of the longer-term outlook of the economy.
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