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eISSN: 2581-9615 || CODEN: WJARAI || Impact Factor 8.2 ||  CrossRef DOI

Research and review articles are invited for publication in July 2026 (Volume 31, Issue 1) Submit manuscript

Reducing repeat findings and control failures in operationally intensive U.S. enterprises: A data-driven internal audit framework for remediation, loss prevention, and governance improvement

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  • Reducing repeat findings and control failures in operationally intensive U.S. enterprises: A data-driven internal audit framework for remediation, loss prevention, and governance improvement

Evans Chingezi 1, *, Last Chingezi 2, Lucy Ganyani 3, Pascal Gbang Yelduora 4 and Munashe Naphtali Mupa 5

1 American University, 
2 University of Northern Iowa.
3 Babson College.
4 Park University,
5 Hult International Business School.
Evans Chingezi; ORCiD: 0009-0006-8524-4355
Last Chingezi; ORCiD: 0009-0008-7787-0094
Lucy Ganyani, ORCiD: 0009-0007-4525-3393
Pascal Gbang Yelduora, ORCiD: 0009-0007-7010-2175
Munashe Naphtali Mupa, ORCiD: 0000-0003-3509-861X
 

Research Article

World Journal of Advanced Research and Reviews, 2026, 30(03), 2188-2199

Article DOI: 10.30574/wjarr.2026.30.3.1792

DOI url: https://doi.org/10.30574/wjarr.2026.30.3.1792

Received on 22 May 2026; revised on 27 June 2026; accepted on 29 June 2026

Operationally intensive enterprises are especially vulnerable to repeat audit findings because they combine high transaction volumes, distributed assets, complex workflows, decentralized execution, and uneven managerial follow-through. This study develops a data-driven internal audit framework for reducing recurring control failures, preventing avoidable loss, and strengthening governance in such settings. The paper combines a structured review of internal-audit, remediation, fraud, and audit-analytics literature with descriptive analysis of the public Audit Data corpus originally documented by the UCI Machine Learning Repository and widely mirrored on Kaggle. The dataset contains 777 observations across 14 sectors and was designed to support the prediction of suspicious firms using present and historical risk factors. Descriptive analysis of the documented sector counts shows that the three largest sectors account for 52.6% of observations and the top five account for 73.1%, indicating material concentration of auditable exposure. The concentration profile (HHI = 1,406.0; Gini = 0.521) suggests that repeat findings are likely to cluster in large, operationally dense environments while smaller sectors remain susceptible to under-audited tail risk. Based on those patterns and the broader literature, the study proposes a five-stage framework that integrates risk-based planning, root-cause analysis, remediation ownership, analytics-supported exception monitoring, and board-level action tracking. The core argument is that organizations do not reduce repeat findings simply by issuing more audit reports; they reduce them by shortening detection lag, assigning accountable owners, validating corrective action, and continuously measuring whether the same failure mode reappears. The paper contributes a practical governance model for U.S. enterprises seeking to move internal audit from retrospective reporting to a closed-loop assurance and remediation system.

Internal Audit; Repeat Findings; Control Failures; Remediation; Continuous Auditing; Audit Analytics; Governance; Loss Prevention; Risk-Based Audit Planning; Operational Controls

https://wjarr.com/sites/default/files/fulltext_pdf/WJARR-2026-1792.pdf

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Evans Chingezi, Last Chingezi, Lucy Ganyani, Pascal Gbang Yelduora and Munashe Naphtali Mupa. Reducing repeat findings and control failures in operationally intensive U.S. enterprises: A data-driven internal audit framework for remediation, loss prevention, and governance improvement. World Journal of Advanced Research and Reviews, 2026, 30(03), 2188-2199. Article DOI: https://doi.org/10.30574/wjarr.2026.30.3.1792

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