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Tracking and modelling prices using web-scraped price microdata: towards automated daily consumer price index forecasting

机译:使用网络抓取的价格微数据跟踪和建模价格:实现自动化的每日消费者价格指数预测

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With the increasing relevance and availability of on-line prices that we see today, it is natural to ask whether the prediction of the consumer price index (CPI), or related statistics, may usefully be computed more frequently than existing monthly schedules allow for. The simple answer is 'yes', but there are challenges to be overcome first. A key challenge, addressed by our work, is that web-scraped price data are extremely messy and it is not obvious, a priori, how to reconcile them with standard CPI statistics. Our research focuses on average prices and disaggregated CPI at the level of product categories (lager, potatoes, etc.) and develops a new model that describes the joint time evolution of latent daily log-inflation rates driving prices seen on the Internet and prices recorded in official surveys, with the model adapting to various product categories. Our model reveals the differing levels of dynamic behaviour across product category and, correspondingly, differing levels of predictability. Our methodology enables good prediction of product-category-specific CPI immediately before their release. In due course, with increasingly complete web-scraped data, combined with the best survey data, the prospect of more frequent intermonth aggregated CPI prediction is an achievable goal.
机译:随着我们今天看到的在线价格的相关性和可用性越来越高,很自然地要问,是否可以比现有的每月计划所允许的更频繁地计算消费者价格指数(CPI)或相关统计数据的预测。简单的答案是“是”,但是首先要克服一些挑战。我们的工作解决了一个关键挑战,那就是网上抓取的价格数据非常混乱,而且先验地发现如何将它们与标准CPI统计数据进行协调并不明显。我们的研究集中在产品类别(啤酒,土豆等)水平上的平均价格和分类CPI,并开发了一个新模型,该模型描述了潜在的每日日志通货膨胀率随时间变化共同推动着互联网上的价格和所记录的价格在官方调查中,该模型适用于各种产品类别。我们的模型揭示了不同产品类别之间动态行为的不同水平,以及相应的可预测性水平。我们的方法可以在产品发布之前立即准确预测特定于产品类别的CPI。在适当的时候,随着越来越多的网络爬虫数据以及最好的调查数据的结合,更频繁的月度CPI总和预测是可以实现的目标。

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