交易级数据的好处:以尼尔森扫描仪数据为例

Ilia D. Dichev, J. Qian
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引用次数: 4

摘要

本研究使用尼尔森扫描仪数据来说明事务级数据的好处。具体来说,我们探讨了消费者购买是否包含相应制造商的增量价值相关信息。利用销售点系统从2006年到2018年产生的每周消费者购买数据(这些数据捕获了约2万亿美元的美国零售额),我们构建了一个公司季度级消费者总购买量的衡量标准,并发现它有力地预测了制造商的收入。此外,分析师对收入的预测有可预见的误差和修正,这意味着分析师没有及时地将信息完全纳入消费者的购买中。探索投资影响,我们发现,对冲投资组合购买(卖出)高(低)异常消费者购买的公司股票,产生的年化回报率在14%到19%之间,具体取决于规格。在控制了风险因素和公司特征之后,这种回报的可预测性保持不变,并且在时间上是稳健的。最后,约39%的季度对冲回报集中在财报公布前后的三天窗口,这表明回报来自对有偏见的预期的修正,而不是风险。这些发现表明,消费者的购买行为传达了对公司基本面的有用见解,而投资者掌握这些信息的速度很慢,这揭示了使用交易数据对市场参与者的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Benefits of Transaction-Level Data: The Case of Nielsen Scanner Data
This study uses Nielsen scanner data to illustrate the benefits of transaction-level data. Specifically, we explore whether granular consumer purchases contain incremental value-relevant information about the corresponding manufacturers. Using weekly consumer purchases data generated by point-of-sale systems from 2006 to 2018, which capture around $2 trillion of U.S. retail sales, we construct a measure of aggregated consumer purchases at the firm-quarter level, and find that it strongly predicts manufacturer revenues. In addition, analyst forecasts of revenues have predictable errors and revisions, which implies that analysts do not fully incorporate the information in consumer purchases in a timely manner. Exploring investment implications, we find that hedge portfolios that buy (sell) stocks of firms with high (low) abnormal consumer purchases generate annualized returns on the magnitude of 14% to 19% depending on specification. This return predictability holds after controlling for risk factors and firm characteristics, and is robust across time. Finally, about 39% of the quarterly hedge returns are concentrated over the three-day window around earnings announcements, which suggests that the returns result from the correction of biased expectations rather than risk. These findings suggest that consumer purchases convey useful insights into firm fundamentals, and investors are slow to grasp this information, shedding light on the benefits of using transactional data for market participants.
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