AI in Auditing: A Comprehensive Review of Applications, Benefits and Challenges

Venkatasubramanian Ganapathy
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Abstract

The rapid evolution of artificial intelligence (AI) technologies has brought about transformative changes in various industries, and the field of auditing is no exception. This research paper presents a comprehensive review of the integration of AI in auditing practices, highlighting its applications, benefits, and associated challenges. Auditing, a critical process for ensuring the accuracy and reliability of financial information, has traditionally been a labor-intensive and time-consuming endeavor. The emergence of AI technologies, such as machine learning, natural language processing, and data analytics, has revolutionized the way audits are conducted. AI-powered auditing tools offer advanced capabilities for data analysis, pattern recognition, anomaly detection, and risk assessment. These capabilities enhance the effectiveness and efficiency of audits by allowing auditors to focus on high-risk areas and perform more in-depth analysis. The paper explores various applications of AI in auditing, including: Automated Data Analysis, Predictive Analytics, Fraud Detection, and Natural Language Processing (NLP), Continuous Monitoring. While AI brings significant benefits to the auditing process, its adoption also presents certain challenges like Data Quality and Integration, Interpretability, Ethical Considerations, Technical Expertise, Regulatory Frame Work. In conclusion, AI has the potential to revolutionize auditing practices by enhancing efficiency, accuracy, and risk assessment. However, successful integration requires addressing challenges related to data quality, transparency, ethics, skills, and regulations. As AI technologies continue to evolve, auditors and stakeholders must collaborate to harness the full potential of AI while maintaining the integrity and credibility of the auditing process. This paper serves as a comprehensive resource for auditors, researchers, and policymakers seeking to understand the current landscape and future directions of AI in auditing.
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人工智能在审计中的应用、好处和挑战的全面回顾
人工智能(AI)技术的快速发展给各行各业带来了翻天覆地的变化,审计领域也不例外。本研究报告对人工智能在审计实践中的整合进行了全面回顾,突出了其应用、好处和相关挑战。审计是确保财务信息准确性和可靠性的关键过程,传统上是一项劳动密集型和耗时的工作。人工智能技术的出现,如机器学习、自然语言处理和数据分析,已经彻底改变了审计的方式。人工智能审计工具为数据分析、模式识别、异常检测和风险评估提供了高级功能。这些功能允许审核员专注于高风险领域并执行更深入的分析,从而提高了审核的有效性和效率。本文探讨了人工智能在审计中的各种应用,包括:自动数据分析、预测分析、欺诈检测、自然语言处理(NLP)、持续监测。虽然人工智能为审计过程带来了巨大的好处,但它的采用也带来了一些挑战,如数据质量和集成、可解释性、道德考虑、技术专长、监管框架等。总之,人工智能有可能通过提高效率、准确性和风险评估来彻底改变审计实践。然而,成功的集成需要解决与数据质量、透明度、道德、技能和法规相关的挑战。随着人工智能技术的不断发展,审计师和利益相关者必须合作,充分利用人工智能的潜力,同时保持审计过程的完整性和可信度。本文为审计师、研究人员和政策制定者提供了全面的资源,帮助他们了解人工智能在审计领域的现状和未来方向。
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