TY - BOOK
T1 - Audit and Artificial Intelligence
T2 - Audit data analytics and auditing AI
AU - Dayeh, Jasmin
PY - 2025
Y1 - 2025
N2 - This PhD dissertation explores the intersection of Artificial Intelligence (AI) and auditing, focusing on both the adoption of AI technologies by audit firms and the auditing of AI-driven systems by external auditors, IT auditors, and public sector auditors. The dissertation consists of a brief synopsis and three articles designed to stand alone and can be read independently. The first article examines how audit firms integrate AI into financial statement audits, including fraud and misstatement identification, with particular emphasis on the barriers preventing auditors from adopting Advanced Audit Data Analytics. The second article investigates the role of public sector auditors in assessing ministries that have implemented AI in their operations, evaluating potential audit risks, and analyzing the development of audit criteria for AI systems. The third article investigates how external auditors flag critical audit matters related to AI technologies in the auditors reports for public financial statements in the United States. The dissertation is grounded in the Unified Theory of Acceptance and Use of Technology (UTAUT) and the A Statement of Basic Auditing Concepts (ASOBAC) conceptual framework. A mixed-methods approach is employed, incorporating literature and document analysis (audit frameworks and financial statements), text mining, and interviews to provide comprehensive insights into this evolving field.
AB - This PhD dissertation explores the intersection of Artificial Intelligence (AI) and auditing, focusing on both the adoption of AI technologies by audit firms and the auditing of AI-driven systems by external auditors, IT auditors, and public sector auditors. The dissertation consists of a brief synopsis and three articles designed to stand alone and can be read independently. The first article examines how audit firms integrate AI into financial statement audits, including fraud and misstatement identification, with particular emphasis on the barriers preventing auditors from adopting Advanced Audit Data Analytics. The second article investigates the role of public sector auditors in assessing ministries that have implemented AI in their operations, evaluating potential audit risks, and analyzing the development of audit criteria for AI systems. The third article investigates how external auditors flag critical audit matters related to AI technologies in the auditors reports for public financial statements in the United States. The dissertation is grounded in the Unified Theory of Acceptance and Use of Technology (UTAUT) and the A Statement of Basic Auditing Concepts (ASOBAC) conceptual framework. A mixed-methods approach is employed, incorporating literature and document analysis (audit frameworks and financial statements), text mining, and interviews to provide comprehensive insights into this evolving field.
U2 - 10.22439/phd.27.2025
DO - 10.22439/phd.27.2025
M3 - PhD thesis
SN - 9788775683734
T3 - PhD Series
BT - Audit and Artificial Intelligence
PB - Copenhagen Business School [Phd]
CY - Frederiksberg
ER -