使用谷歌搜索公司产品来检测收益管理

IF 3.6 2区 管理学 Q1 BUSINESS, FINANCE Accounting Organizations and Society Pub Date : 2023-08-01 DOI:10.1016/j.aos.2023.101457
Peng-Chia Chiu , Siew Hong Teoh , Yinglei Zhang , Xuan Huang
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引用次数: 0

摘要

我们引入了一种新的大数据分析模型来检测向上的收入误报。该模型使用免费的谷歌公司产品搜索来提供外部实体商业状态(EBS)证据。当审计师能够获得与报告数字一致的外部EBS证据时,报告数字的准确性会得到提高。公司产品的谷歌搜索量指数(SVI)是此类EBS证据的一个很好的候选者,因为它现在预测(即预测当前)公司销售额,并且独立于管理控制。巨大的差异,如销售额的高增长和SVI的大幅下降,表明收入可能被操纵。我们发现,在每个行业季度中,处于最高销售增长四分位数和最低ΔSVI四分位数的公司的指标变量MUP预测收入错报,其增量为F_Score、自由支配收入模型、两个可选的向上收入操纵标识符以及分析师和媒体报道。相对于第四季度,终端用户行业和中期季度的MUP可预测性更强。我们还发现了确凿的证据,证明MUP公司的销售增长持续性较低,应收账款增加较大,坏账准备金较低,这与其较低的收入质量一致。
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Using Google searches of firm products to detect revenue management

We introduce a novel Big Data analytics model to detect upward revenue misreporting. The model uses freely available Google searches of firm products to provide external entity business state (EBS) evidence. The veracity of the reported numbers is enhanced when auditors can obtain external EBS evidence congruent with the reported numbers. The Google search volume index (SVI) of firm products is a good candidate for such EBS evidence because it nowcasts (i.e. predicts present) firm sales and is independent of management control. A large discrepancy such as a high sales growth together with a large decline in the SVI suggests possible manipulation upwards of revenues. We find that an indicator variable, MUP, of a firm in the top sales growth quartile and bottom ΔSVI quartile in each industry-quarter predicts revenue misstatements incrementally to the F_Score, Discretionary-Revenues model, two alternative upward revenue manipulation identifiers, and analyst and media coverages. MUP predictability is stronger in end-user industries and in interim quarters relative to the fourth quarter. We also find corroborating evidence that MUP firms have lower sales growth persistence, larger increases in accounts receivables, and lower allowances for bad debts, consistent with their lower revenue quality.

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来源期刊
CiteScore
7.80
自引率
6.40%
发文量
38
期刊介绍: Accounting, Organizations & Society is a major international journal concerned with all aspects of the relationship between accounting and human behaviour, organizational structures and processes, and the changing social and political environment of the enterprise.
期刊最新文献
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