Robotic Process Automation for the Extraction of Audit Information: A Use Case

IF 0.8 Q4 BUSINESS, FINANCE
Jeroen Bellinga, Tjibbe Bosman, S. Hocuk, Wim H.P. Janssen, Alaa Khzam
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引用次数: 2

Abstract

The reconciliation of audit evidence to the audit subject matter is a key and recurring audit procedure. Before reconciling information, data needs to be extracted from the audit subject matter, which is often in a Portable Document Format (PDF). Reconciliations are a recurring task for every new version of the audit subject matter. Large audit firms tend to “offshore” simple and repetitive audit tasks such as reconciliations to shared service centers. Offshoring however comes at the expense of coordination costs, delays in the process and challenges regarding the liability risk to the auditor. This paper presents an open-source algorithm to extract data from (draft) annual reports (PDF files) using Python to automate, rather than outsource, the data extraction for reconciliations. The algorithm resulted in a significant time saving for the audit of a large Dutch asset management firm. Researchers apply the algorithm to minimize hand-collection of financial statement data.
用于审计信息提取的机器人过程自动化:一个用例
审计证据与审计主题的核对是一项关键的、经常性的审计程序。在核对信息之前,需要从审计主题中提取数据,审计主题通常采用可移植文档格式(PDF)。对账是审计主题每一个新版本的重复任务。大型审计公司倾向于“离岸”简单重复的审计任务,如与共享服务中心的对账。然而,离岸外包是以协调成本、流程延误和审计师责任风险挑战为代价的。本文提出了一种开源算法,使用Python从(草案)年度报告(PDF文件)中提取数据,以自动化而不是外包数据提取以进行对账。该算法为荷兰一家大型资产管理公司的审计节省了大量时间。研究人员将该算法应用于最大限度地减少手工收集财务报表数据。
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
Current Issues in Auditing
Current Issues in Auditing BUSINESS, FINANCE-
CiteScore
1.60
自引率
12.50%
发文量
19
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