Regression analysis for equipment auditing
Abstract
Purpose
To develop, test and implement a sampling strategy for equipment auditing for a Fortune 100 company.
Design/methodology/approach
Regression analysis is applied to auditing of equipment for a large US corporation. Empirical data and test data sets are used to evaluate the efficacy of using regression for auditing and to determine reasonable and efficient sample sizes to be employed across more than 5,000 locations.
Findings
Regression is a viable and useful method for equipment auditing when there is anticipated high correlation between pre‐ and post‐audit equipment value. Recommended sample size is dependent upon the size of the location as measured by total pieces of equipment. Decision rules combining acceptable tolerance limits, desired confidence level and sample size are provided.
Research limitations/implications
The method, recommended sample sizes and decision rules are particularly applicable to instances where high correlation is expected between pre‐ and post‐audit equipment values. Standard regression assumptions are not all met in all instances, especially with small sample sizes.
Practical implications
The regression approach and model, sample size recommendations and decision rules for passing or failing an equipment audit described herein have been implemented at a Fortune 100 company, and are generally applicable to equipment and inventory auditing when high correlation between pre‐ and post‐audit equipment is expected.
Originality/value
This paper provides a practical and useful regression‐based approach to sampling for equipment auditing. Recommended sample sizes and decision rules for passing or failing the audit are explicitly defined.
Keywords
Citation
Beldona, S. and Francis, V.E. (2007), "Regression analysis for equipment auditing", Managerial Auditing Journal, Vol. 22 No. 8, pp. 809-822. https://doi.org/10.1108/02686900710819652
Publisher
:Emerald Group Publishing Limited
Copyright © 2007, Emerald Group Publishing Limited