用谷歌趋势预测总零售额

E. Golovanova, A. Zubarev
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引用次数: 0

摘要

随着互联网的普及,许多购物都是在网上商店进行的。谷歌Trends是一个在线工具,它收集用户查询的数据,并从中形成分类。我们使用宏观经济变量和谷歌趋势类别来预测食品和非食品产品的总零售额和个别类别的动态。对于每种类型的零售,我们从宏观经济变量中考虑最佳预测模型,并尝试通过添加趋势来改进它们。出于这些目的,我们使用伪样本外临近预报以及几个月前的递归预测。我们的结论是,一旦将趋势添加到模型中,对食品和非食品产品的预测可以显着提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Aggregate Retail Sales with Google Trends
As the internet grows in popularity, many purchases are being made in online stores. Google Trends is an online tool that collects data on user queries and forms categories from them. We forecast the dynamics of both aggregate retail sales and individual categories of food and non-food products using macroeconomic variables and Google Trends categories that correspond to various product groups. For each type of retail, we consider the best forecasting models from macroeconomic variables and try to improve them by adding trends. For these purposes, we use pseudo-out-of-sample nowcasting as well as recursive forecasting several months ahead. We conclude that forecasts for food and non-food products can improve significantly once trends are added to the models.
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