The Use of Artificial Intelligence and Audit Quality: An Analysis from the Perspectives of External Auditors in the UAE
Abstract
:1. Introduction
2. Literature Review and Hypotheses Development
2.1. Theoretical Framework
2.2. Literature Review
2.2.1. Application of AI in Auditing
2.2.2. Risks and Benefits of Artificial Intelligence
2.2.3. Technology Acceptance Model
2.2.4. Perceived Contribution and Acceptance of AI
2.2.5. Research Gap
2.3. Hypotheses Development
3. Research Design
3.1. Sample and Data
3.2. Dependent Variable
3.3. Independent Variable
4. Data Analysis and Results
4.1. Validity and Reliability Test of the Instrument
4.2. Demographic Analysis
4.3. Descriptive Statistics
4.4. Hypotheses Testing
4.5. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Item Code | Items for Perceived Contribution to Audit Quality (Adapted from Albawwat and Frijat 2021) |
---|---|
PC1 | Using AI systems and tools in auditing will aid my professional skepticism. |
PC2 | Using AI systems and tools in auditing will automate routine audit processes and procedures, allowing more time to focus on areas of significant judgment. |
PC3 | Using AI systems and tools in auditing will deepen my understanding of the entity and its processes. |
PC4 | Using AI systems and tools in auditing will facilitate robust risk assessment through the analysis of entire populations. |
PC5 | Using AI systems and tools in auditing will enable ongoing risk assessment throughout the audit process. |
PC6 | Using AI systems and tools in auditing will facilitate the focus of audit testing on the areas of the highest risk through the stratification of large populations. |
PC7 | Using AI systems and tools in auditing will enable me to perform tests on large or complex datasets where a manual approach would not be feasible. |
PC8 | Using AI systems and tools in auditing will enable the independent re-performance of complex calculations and modeling. |
PC9 | Using AI systems and tools in auditing will improve consistency and central oversight in group audits. |
PC10 | Using AI systems and tools in auditing will identify instances of potential fraud. |
PC11 | Using AI systems and tools in auditing will identify unusual patterns and exceptions that might not be discernible using more traditional audit techniques. |
Cronbach’s Alpha | Number of Items |
---|---|
0.96 | 11 |
Demographic Items | Frequency | Response Rates | |
---|---|---|---|
Type of Audit Firms | Local Audit Firms | 22 | 35% |
International Audit Firms | 41 | 65% | |
Gender | Female | 33 | 52% |
Male | 30 | 48% | |
Education Degree | Bachelor’s Degree | 36 | 57% |
Master’s Degree | 18 | 28% | |
Ph.D. Degree | 1 | 2% | |
Other | 8 | 13% | |
Years of Experience | 0–2 Years | 16 | 25% |
Above 2, less than 4 | 10 | 16% | |
Above 4, less than 6 | 13 | 21% | |
More than 6 years | 24 | 38% | |
Job Position | Audit Partner | 14 | 22% |
Audit Manager | 14 | 22% | |
Senior Auditor | 13 | 21% | |
Other | 22 | 35% |
Perceived Contributions | ||
---|---|---|
(1) Local Audit Firms | (2) Int. Audit Firms | |
Valid | 22 | 41 |
Mean | 3.975 | 3.927 |
Std. Deviation | 0.736 | 0.768 |
PC4 | PC10 | |||
---|---|---|---|---|
(1) Local Audit Firms | (2) Int. Audit Firms | (1) Local Audit Firms | (2) Int. Audit Firms | |
Valid | 22 | 41 | 22 | 41 |
Mean | 4.091 | 3.878 | 4.091 | 4.000 |
Std. Deviation | 0.921 | 0.900 | 0.921 | 0.922 |
Independent Samples t-Test | |||||||
---|---|---|---|---|---|---|---|
95% CI for Mean Difference | |||||||
t | df | p | Mean Difference | SE Difference | Lower | Upper | |
PEOU | 0.242 | 61 | 0.810 | 0.048 | 0.200 | −0.352 | 0.448 |
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Noordin, N.A.; Hussainey, K.; Hayek, A.F. The Use of Artificial Intelligence and Audit Quality: An Analysis from the Perspectives of External Auditors in the UAE. J. Risk Financial Manag. 2022, 15, 339. https://doi.org/10.3390/jrfm15080339
Noordin NA, Hussainey K, Hayek AF. The Use of Artificial Intelligence and Audit Quality: An Analysis from the Perspectives of External Auditors in the UAE. Journal of Risk and Financial Management. 2022; 15(8):339. https://doi.org/10.3390/jrfm15080339
Chicago/Turabian StyleNoordin, Nora Azima, Khaled Hussainey, and Ahmad Faisal Hayek. 2022. "The Use of Artificial Intelligence and Audit Quality: An Analysis from the Perspectives of External Auditors in the UAE" Journal of Risk and Financial Management 15, no. 8: 339. https://doi.org/10.3390/jrfm15080339
APA StyleNoordin, N. A., Hussainey, K., & Hayek, A. F. (2022). The Use of Artificial Intelligence and Audit Quality: An Analysis from the Perspectives of External Auditors in the UAE. Journal of Risk and Financial Management, 15(8), 339. https://doi.org/10.3390/jrfm15080339