Yapay Zeka Teknolojilerinin, Bağımsız Denetim Uygulamalarına Etkileri


Özet Görüntüleme: 21 / PDF İndirme: 22

Yazarlar

DOI:

https://doi.org/10.5281/zenodo.13881546

Anahtar Kelimeler:

Yapay Zeka, Otomasyon, Hizmet Kalitesi

Özet

Bu çalışmada Yapay Zeka (YZ) teknolojilerinin bağımsız denetim uygulamalarına olan etkileri incelenmiştir. Bu bağlamda derleme olarak hazırlanan bu çalışmada tümden gelim yöntemi izlenmiştir. Bu kapsamda YZ, bağımsız denetim, otomasyon gibi kavramlara yer verilmiş, daha sonra YZ teknolojileri Olan, yüz tanıma sistemleri, sanal asistanlar, YZ haritaları, otomasyon, akıllı öneri sistemleri, sesli asistanlar, dil çevreleri, öneri sistemleri, navigasyon, siber güvenlik, robot uygulamaları büyük veri analitiği ve blok zincir teknolojisi konuları incelenmiştir. çalışmanın son bölümünde ise YZ teknolojileri ile denetim uygulamalarında, mali tabloları düzenleme, analiz yapma, planlama, yöntem belirleme, stratejiler, standartların oluşturulması, verimlilik, güvenirlik ve kalite konuları incelenmiştir. Çalışma sonucunda YZ teknolojilerinin bağımsız denetim üzerindeki etkilerine yönelik sonuçlar ve oluşturulan öneriler; araştırmacıların, denetçilerin, kamu kurumlarının, toplumun ve konu ile ilgili tarafların bilgisine sunulmuştur..

İndirmeler

İndirme verileri henüz mevcut değil.

Referanslar

Akinadewo, I. S. (2021). Artificial Intelligence and Accountants' Approach to Accounting Functions. Covenant University Journal of Politics & International Affairs (Special Edition). 9(1), 40-55.

Aksoy, T., & Gurol, B. (2021). Artificial intelligence in computer-aided auditing techniques and technologies (CAATTs) and an application proposal for auditors. In Auditing Ecosystem and Strategic Accounting in the Digital Era: Global Approaches and New Opportunities (pp. 361-384). Cham: Springer International Publishing.

Albawwat, I., & Frijat, Y. (2021). An analysis of auditors’ perceptions towards artificial intelligence and its contribution to audit quality. Accounting, 7(4), 755-762.

Andreu-Perez, J., Deligianni, F., Ravi, D., & Yang, G. Z. (2018). Artificial Intelligence and robotics. arXiv preprint arXiv:1803.10813.

Askary, S., Abu-Ghazaleh, N., & Tahat, Y. A. (2018). Artificial intelligence and reliability of accounting information. In Challenges and Opportunities in the Digital Era: 17th IFIP WG 6.11 Conference on e-Business, e-Services, and e-Society, I3E 2018, Kuwait City, Kuwait, October 30–November 1, 2018, Proceedings 17 (pp. 315-324). Springer International Publishing.

Asquith, A., & Horsman, G. (2019). Let the robots do it!–Taking a look at Robotic Process Automation and its potential application in digital forensics. Forensic Science International: Reports, 1, 100007.

Benabderrahmane, S., Mellouli, N., & Lamolle, M. (2018). On the predictive analysis of behavioral massive job data using embedded clustering and deep recurrent neural networks. Knowledge-Based Systems, 151, 95-113. 1-51.

Bolatkyzy, A. (2019). Conceptual approach to the defınıtıon of audıt ın the context of dıgıtalızatıon of the economy. In The VIII International Scientific and Practical Conference «Actual trends in science and practice», February 28–March 02, Geneva, Switzerland. 195 p. (p. 30).

Canada, J., Sutton, S. G., & Kuhn, J. R. (2009). The pervasive nature of IT controls. International Journal of Accounting and Information Management, 17(1), 106-119.

Court, D. (2015). Getting big impact from big data. McKinsey Quarterly, 1(1), 52-60.

Dickins, D., Johnson-Snyder, A. J., & Reisch, J. T. (2018). Selecting an auditor for Bradco using indicators of audit quality. Journal of Accounting Education, 45, 32-44. 1-13.

Enríquez, J. G., Jiménez-Ramírez, A., Domínguez-Mayo, F. J., & García-García, J. A. (2020). Robotic process automation: a scientific and industrial systematic mapping study. IEEE Access, 8, 39113-39129.

Feng, H., Fawaz, K., & Shin, K. G. (2017, October). Continuous authentication for voice assistants. In Proceedings of the 23rd Annual International Conference on Mobile Computing and Networking (pp. 343-355).

Fukas, P., Rebstadt, J., Remark, F., & Thomas, O. (2021). Developing an Artificial Intelligence Maturity Model for Auditing. In ECIS.

Gul, F., Rahiman, W., & Nazli Alhady, S. S. (2019). A comprehensive study for robot navigation techniques. Cogent Engineering, 6(1), 1632046. 1-25.

Gusai, O. P. (2019). Robot human interaction: role of artificial intelligence in accounting and auditing. Indian Journal of Accounting, 51(1), 59-62.

Hamon, R., Junklewitz, H., & Sanchez, I. (2020). Robustness and explainability of artificial intelligence. Publications Office of the European Union, 207, 2020.

Hosny, A., Parmar, C., Quackenbush, J., Schwartz, L. H., & Aerts, H. J. (2018). Artificial intelligence in radiology. Nature Reviews Cancer, 18(8), 500-510. 1-27.

Issa, H., Sun, T., & Vasarhelyi, M. A. (2016). Research ideas for artificial intelligence in auditing: The formalization of audit and workforce supplementation. Journal of emerging technologies in accounting, 13(2), 1-20.

Jain, S., & Jain, N. K. (2010, December). Scope of natural language translations in EHCPRs System. In Proceedings of international conference on role of translation in nation building, nationalism and supra-nationalism. 1-13.

Jakovljević, N. E. M. A. N. J. A. (2021). Application of artificial intelligence in audit. Monografija konferencije STES21, 277-290.

Kokina, J., & Davenport, T. H. (2017). The emergence of artificial intelligence: How automation is changing auditing. Journal of emerging technologies in accounting, 14(1), 115-122.

Kokina, J., & Davenport, T. H. (2017). The emergence of artificial intelligence: How automation is changing auditing. Journal of emerging technologies in accounting, 14(1), 115-122.

Kunduru, A. R. (2023). Cloud BPM Application (Appian) Robotic Process Automation Capabilities. Asian Journal of Research in Computer Science, 16(3), 267-280.

Kunze, L., Hawes, N., Duckett, T., Hanheide, M., & Krajník, T. (2018). Artificial intelligence for long-term robot autonomy: A survey. IEEE Robotics and Automation Letters, 3(4), 4023-4030.

Kurhan, N., Fartushniak, O., & Bezkorovaina, L. (2023). Improvement of organization and automation of commercial enterprise electronic money accounting in conditions of economy digitalization.

Li, J. H. (2018). Cyber security meets artificial intelligence: a survey. Frontiers of Information Technology & Electronic Engineering, 19(12), 1462-1474.

Li, Z., & Zheng, L. (2018) The impact of artificial intelligence on accounting. In 2018 4th International Conference on Social Science and Higher Education (ICSSHE 2018). Atlantis Press.

Mardijuwono, A. W., & Subianto, C. (2018). Independence, professionalism, professional skepticism: The relation toward the resulted audit quality. Asian Journal of Accounting Research, 3(1), 61-71.

Miller, T. (2019). Explanation in artificial intelligence: Insights from the social sciences. Artificial intelligence, 267, 1-38.

Mohammad, S. J., Hamad, A. K., Borgi, H., Thu, P. A., Sial, M. S., & Alhadidi, A. A. (2020). How artificial intelligence changes the future of accounting industry. International Journal of Economics and Business Administration, 8(3), 478-488.

Moor, J. H. (2005). Why we need better ethics for emerging technologies. Ethics and Information Technology, 7(3), 111–119.

Mughal, A. A. (2018). Artificial Intelligence in Information Security: Exploring the Advantages, Challenges, and Future Directions. Journal of Artificial Intelligence and Machine Learning in Management, 2(1), 22-34.

Munoko, I., Brown-Liburd, H. L., & Vasarhelyi, M. (2020). The ethical implications of using artificial intelligence in auditing. Journal of business ethics, 167(2), 209-234.

Munoko, I., Brown-Liburd, H. L., & Vasarhelyi, M. (2020). The ethical implications of using artificial intelligence in auditing. Journal of business ethics, 167(2), 209-234. 1-26.

Novac, C. (2000). Artificial intelligence system for decision -making process. "Ovidius" University Annals Constantza.Series Civil Engineering, 1(2), 261-266.

Nwankwo, S. N. P. (2023). Enhancıng non-fınancıal performance ın manufacturıng companıes through the ıntegratıon of artıfıcıal ıntellıgence ın accountıng ınformatıon systems. Advance Journal of Management, Accounting and Finance, 8(10), 43-56.

Parmar, D. N., & Mehta, B. B. (2014). Face recognition methods & applications. arXiv preprint arXiv:1403.0485.

Pee, L. G., Pan, S. L., & Cui, L. (2019). Artificial intelligence in healthcare robots: A social informatics study of knowledge embodiment. Journal of the Association for Information Science and Technology, 70(4), 351-369.

Rafailidis, D., & Manolopoulos, Y. (2019, June). Can virtual assistants produce recommendations?. In Proceedings of the 9th international conference on web intelligence, mining and semantics (pp. 1-6).

Rapoport, M. (2016). Auditors count on tech for backup. Wall Street Journal (March 8).

Rezaee, Z., Sharbatoghlie, A., Elam, R., & McMickle, P. L. (2002). Continuous Auditing: Building Automated Auditing Capability. Auditing: A Journal of Practice & Theory, 21, 147-163. https://doi.org/10.2308/aud.2002.21.1.147

Sánchez, L., Vasile, M., & Minisci, E. (2019, October). AI to support decision making in collision risk assessment. In 70th International Astronautical Congress.

Schneider, H. (2022). Navigation map-based artificial intelligence. AI, 3(2), 434-464.

Smith, K. T. (2020). Marketing via smart speakers: what should Alexa say?. Journal of Strategic Marketing, 28(4), 350-365. 1-16.

Tobore, I., Li, J., Yuhang, L., Al-Handarish, Y., Kandwal, A., Nie, Z., & Wang, L. (2019). Deep learning intervention for health care challenges: some biomedical domain considerations. JMIR mHealth and uHealth, 7(8), e11966.

Van der Aalst, W. M., Bichler, M., & Heinzl, A. (2018). Robotic process automation. Business & information systems engineering, 60, 269-272.

Wang, X., & He, Y. (2016). Learning from uncertainty for big data: future analytical challenges and strategies. IEEE Systems, Man, and Cybernetics Magazine, 2(2), 26-31.

Wang, Z., Li, M., Lu, J., & Cheng, X. (2022). Business Innovation based on artificial intelligence and Blockchain technology. Information Processing & Management, 59(1), 102759.

Wright, S. A., & Schultz, A. E. (2018). The rising tide of artificial intelligence and business automation: Developing an ethical framework. Business Horizons, 61(6), 823–832.

Zhang, M., & Bockstedt, J. (2020). Complements and substitutes in online product recommendations: The differential effects on consumers’ willingness to pay. Information & Management, 57(6), 103341.

Zhang, Q., Lu, J., & Jin, Y. (2021). Artificial intelligence in recommender systems. Complex & Intelligent Systems, 7(1), 439-457.

Zhang, Y., Chen, X., Ai, Q., Yang, L., & Croft, W. B. (2018, October). Towards conversational search and recommendation: System ask, user respond. In Proceedings of the 27th acm international conference on information and knowledge management. 177-186.

Zhao, N., Yen, D. C., & Chang, I. (2004). Auditing in the e-Commerce Era. Information Management & Computer Security, 12, 389-400. https://doi.org/10.1108/09685220410563360

İndir

Yayınlanmış

2024-09-30

Nasıl Atıf Yapılır

Dede, A. (2024). Yapay Zeka Teknolojilerinin, Bağımsız Denetim Uygulamalarına Etkileri. Premium E-Journal of Social Sciences (PEJOSS), 8(46), 1210–1221. https://doi.org/10.5281/zenodo.13881546