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has been cited by the following article:
TITLE: The Use of the Ant Algorithm in the Audit Planning of Multi-Branch Organizations
AUTHORS: Majed Alsolamy, Gihan Taha
KEYWORDS: Audit Planning, Audit Risk, Ant Algorithm, Multi-Branch Organization
JOURNAL NAME: iBusiness, Vol.13 No.4, December 30, 2021
ABSTRACT: The study aims to define the important variables to be considered by auditors during the planning phase in multi-branch organizations. The objective of the research determines the possibility of using the ant algorithm as an AI tool suited to plan the audit and identify the audit schedule. The data is based on a survey to collect data to explore the most important factors that influence audit planning. The findings of the study indicate that: 1) the most important variables in audit planning in multi-branch organizations are risk and materiality; 2) the application of AI methods helps reduce bias and judgment of auditors.