Do Google Searches Help in Nowcasting Private Consumption? A Real-Time Evidence for the US

K. Kholodilin, Maximilian Podstawski, Boriss Siliverstovs
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引用次数: 66

Abstract

In this paper, we investigate whether the Google search activity can help in nowcasting the year-on-year growth rates of monthly US private consumption using a real-time data set. The Google-based forecasts are compared to those based on a benchmark AR(1) model and the models including the consumer surveys and financial indicators. According to the Diebold-Mariano test of equal predictive ability, the null hypothesis can be rejected suggesting that Google-based forecasts are significantly more accurate than those of the benchmark model. At the same time, the corresponding null hypothesis cannot be rejected for models with consumer surveys and financial variables. Moreover, when we apply the test of superior predictive ability (Hansen, 2005) that controls for possible data-snooping biases, we are able to reject the null hypothesis that the benchmark model is not inferior to any alternative model forecasts. Furthermore, the results of the model confidence set (MCS) procedure (Hansen et al., 2005) suggest that the autoregressive benchmark is not selected into a set of the best forecasting models. Apart from several Google-based models, the MCS contains also some models including survey-based indicators and financial variables. We conclude that Google searches do help improving the nowcasts of the private consumption in US.
谷歌搜索有助于预测个人消费吗?美国的实时证据
在本文中,我们研究了谷歌搜索活动是否有助于使用实时数据集来预测美国每月私人消费的同比增长率。将基于谷歌的预测与基于基准AR(1)模型和包括消费者调查和财务指标在内的模型的预测进行比较。根据同等预测能力的Diebold-Mariano检验,零假设可以被拒绝,这表明基于google的预测明显比基准模型的预测更准确。同时,对于包含消费者调查和金融变量的模型,不能拒绝相应的零假设。此外,当我们应用控制可能的数据窥探偏差的卓越预测能力测试(Hansen, 2005)时,我们能够拒绝基准模型并不逊于任何替代模型预测的零假设。此外,模型置信集(MCS)过程(Hansen et al., 2005)的结果表明,自回归基准没有被选为一组最佳预测模型。除了几个基于谷歌的模型外,MCS还包含一些模型,包括基于调查的指标和财务变量。我们得出的结论是,谷歌搜索确实有助于改善美国私人消费的即时预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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