使用工资处理器微数据衡量劳动力市场活动总量

Tomaz Cajner, Leland D. Crane, Ryan A. Decker, Adrian Hamins-Puertolas, C. Kurz, Tyler Radler
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引用次数: 18

摘要

我们表明,高频私人工资微数据可以帮助预测劳动力市场状况。工资就业可能是商业周期最可靠的实时指标,因此受到政策制定者、学术界和金融市场的密切关注。长期以来,政府统计机构一直是劳动力市场信息的主要提供者,在可预见的未来,它们将继续这样做。也就是说,大数据的来源?通过与从事商业活动的私营企业的合作,这些商业活动以细粒度、频繁和及时的方式记录经济活动。其中一个数据来源是由ADP公司提供的,该公司处理约五分之一的美国私营部门劳动力的工资单。我们评估这些数据的有效性,以创建补充现有措施的新统计数据。特别是,我们开发了一套2000年至2017年的每周总就业指数,这使我们能够以比目前更高的频率衡量就业。ADP数据的广泛覆盖?在私营就业方面与劳工统计局的调查样本相似吗?暗示这些数据具有潜在的高信息价值,我们的结果证实了这一猜想。事实上,ADP工资微数据的及时性和频率大大提高了当月就业预测的准确性和对BLS CES数据的修订。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Payroll Processor Microdata to Measure Aggregate Labor Market Activity
We show that high-frequency private payroll microdata can help forecast labor market conditions. Payroll employment is perhaps the most reliable real-time indicator of the business cycle and is therefore closely followed by policymakers, academia, and financial markets. Government statistical agencies have long served as the primary suppliers of information on the labor market and will continue to do so for the foreseeable future. That said, sources of ?big data? are becoming increasingly available through collaborations with private businesses engaged in commercial activities that record economic activity on a granular, frequent, and timely basis. One such data source is generated by the firm ADP, which processes payrolls for about one fifth of the U.S. private sector workforce. We evaluate the efficacy of these data to create new statistics that complement existing measures. In particular, we develop a set of weekly aggregate employment indexes from 2000 to 2017, which allows us to measure employment at a higher frequency than is currently possible. The extensive coverage of the ADP data?similar in terms of private employment to the BLS CES sample?implies potentially high information value of these data, and our results confirm this conjecture. Indeed, the timeliness and frequency of the ADP payroll microdata substantially improves forecast accuracy for both current-month employment and revisions to the BLS CES data.
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