Big Data Analytics and Management Forecasting Behavior

IF 2.2 4区 管理学 Q2 BUSINESS, FINANCE
Beng Wee Goh, Na Li, Tharindra Ranasinghe
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Abstract

This paper investigates whether the use of Big Data analytics by firms has a spillover effect on management forecasting behavior. Insights provided by Big Data could potentially improve firms’ ability to forecast earnings (supply channel) and investor demand for earnings information is likely higher for firms engaging in data analytics (demand channel). Using a text-based measure of firms’ commitments to and usage of Big Data analytics, we find that Big Data analytics usage is positively associated with the propensity to issue management earnings forecasts. Consistent with the “supply channel” explanation, we find that Big Data analytics usage is positively associated with management forecast accuracy as well. Also, supporting the “demand channel” explanation, we find that Big Data analytics usage is associated with greater analyst following. Our findings of improved disclosure following commitments to Big Data analytics highlight a potentially unintended benefit of the Big Data revolution.
大数据分析和管理预测行为
本文研究了企业对大数据分析的使用是否会对管理预测行为产生溢出效应。大数据提供的见解可能会潜在地提高公司预测收益的能力(供应渠道),而投资者对收益信息的需求可能会更高,因为从事数据分析的公司(需求渠道)。通过对企业对大数据分析的承诺和使用情况的文本测量,我们发现大数据分析的使用与发布管理层盈利预测的倾向呈正相关。与“供应渠道”的解释一致,我们发现大数据分析的使用也与管理预测的准确性呈正相关。此外,为了支持“需求渠道”的解释,我们发现大数据分析的使用与更多的分析师追随者相关。我们的研究发现,在大数据分析的承诺之后,信息披露得到了改善,这凸显了大数据革命可能带来的意想不到的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Accounting Horizons
Accounting Horizons BUSINESS, FINANCE-
CiteScore
3.80
自引率
4.00%
发文量
40
期刊介绍: Accounting Horizons is one of three association-wide journals published by the American Accounting Association AAA. This journal seeks to bridge academic and professional audiences with articles that focus on accounting, broadly defined, and that provide insights pertinent to the accounting profession. The contents of Accounting Horizons, therefore, should interest researchers, educators, practitioners, regulators, and students of accounting.
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