"This Candle Has No Smell": Detecting the Effect of COVID Anosmia on Amazon Reviews Using Bayesian Vector Autoregression

Nick Beauchamp
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引用次数: 1

Abstract

While there have been many efforts to monitor or predict Covid using digital traces such as social media, one of the most distinctive and diagnostically important symptoms of Covid -- anosmia, or loss of smell -- remains elusive due to the infrequency of discussions of smell online. It was recently hypothesized that an inadvertent indicator of this key symptom may be misplaced complaints in Amazon reviews that scented products such as candles have no smell. This paper presents a novel Bayesian vector autoregression model developed to test this hypothesis, finding that "no smell" reviews do indeed reflect changes in US Covid cases even when controlling for the seasonality of those reviews. A series of robustness checks suggests that this effect is also seen in perfume reviews, but did not hold for the flu prior to Covid. These results suggest that inadvertent digital traces may be an important tool for tracking epidemics.
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“这支蜡烛没有气味”:使用贝叶斯向量自回归检测COVID嗅觉缺失对亚马逊评论的影响
虽然已经有许多努力利用社交媒体等数字痕迹来监测或预测Covid,但Covid最独特和诊断上最重要的症状之一-嗅觉缺失或嗅觉丧失-仍然难以捉摸,因为网上很少讨论嗅觉。最近有一种假设认为,这一关键症状的一个不经意的指标可能是亚马逊评论中错误的抱怨,即蜡烛等有香味的产品没有气味。本文提出了一个新的贝叶斯向量自回归模型来检验这一假设,发现即使在控制这些评论的季节性时,“无气味”评论确实反映了美国新冠病例的变化。一系列稳健性检查表明,这种效应也出现在香水评论中,但在Covid之前的流感中并不适用。这些结果表明,无意的数字痕迹可能是追踪流行病的重要工具。
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