Machine learning and external auditor perception: An analysis for UAE external auditors using technology acceptance model

Ahmad Faisal Hayek, Noraini Noordin, K. Hussainey
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引用次数: 1

Abstract

Research Question: Do external auditors in the United Arab Emirates (UAE) perceive the ease of use and usefulness of Machine Learning (ML)? Motivation: This study aims to investigate external auditors' perceptions of the ease of use and usefulness of Machine Learning in auditing in the UAE. In addition, the study intends to examine the difference in perceived ease of use of Machine Learning between local and international audit companies in the UAE. Data: Data for this study were gathered from 63 external auditors working for local and global audit firms in the UAE. The study's population comprises external auditors from national and international audit companies in UAE. Tool: The questionnaire was deployed through an online survey tool. Findings: The results have shown that the findings do not support the idea that there is a different perception of the Perceived Ease of Use of Machine Learning in auditing between local and international audit firms. According to the conclusions of this study, external auditors have a restricted perception of the simplicity of use and utility of Machine Learning. Practical implications: The importance of the findings of such research stems from the lack of research evidence on the perceived ease of use and usefulness of Machine Learning in external auditing in the UAE. As a result, this paper provides new empirical evidence by assessing external auditors' assessments of the usage of Machine Learning in the UAE.
机器学习和外部审计师感知:阿联酋外部审计师使用技术接受模型的分析
研究问题:阿拉伯联合酋长国(UAE)的外部审计师是否认为机器学习(ML)易于使用和有用?动机:本研究旨在调查外部审计师对阿联酋审计中机器学习的易用性和有用性的看法。此外,该研究旨在研究阿联酋本地和国际审计公司在机器学习易用性方面的差异。数据:本研究的数据来自63名为阿联酋本地和全球审计公司工作的外部审计师。该研究的参与者包括来自阿联酋国内和国际审计公司的外部审计师。工具:通过在线调查工具进行问卷调查。研究结果:结果表明,研究结果并不支持本地和国际审计公司对审计中机器学习的易用性有不同看法的观点。根据这项研究的结论,外部审计人员对机器学习的简单性和实用性的看法有限。实际意义:此类研究结果的重要性源于缺乏关于阿联酋外部审计中机器学习的易用性和有用性的研究证据。因此,本文通过评估外部审计师对阿联酋机器学习使用情况的评估,提供了新的经验证据。
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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