Sequential Audit Sampling with Statistical Guarantees
TLDR
This paper presents a sequential audit sampling framework with statistical guarantees for finite populations, controlling decision error probabilities ex ante.
Key contributions
- Formulates sequential audit sampling as a testing problem for finite populations.
- Defines hypotheses, stopping rules, and exact sequential boundary conditions.
- Calibrates boundaries via Monte Carlo simulation for practical implementation.
- Provides ex ante control of decision error probabilities and expected stopping times.
Why it matters
Auditors often extend sampling, but current statistical designs are underdeveloped. This framework provides a statistically sound method for sequential auditing, ensuring reliable conclusions. It improves efficiency in tests of controls.
Original Abstract
Financial statement auditing is conducted under a risk-based evidence approach to obtain reasonable assurance. In practice, auditors often perform additional sampling or related procedures when an initial sample does not provide a sufficient basis for a conclusion. Across jurisdictions, current standards and practice manuals acknowledge such extensions, while the statistical design of sequential audit procedures has not been fully explored. This study formulates audit sampling with additional, sequentially collected items as a sequential testing problem for a finite population under sampling without replacement. We define null and alternative hypotheses in terms of a tolerable deviation rate, specify stopping and decision rules, and formulate exact sequential boundary conditions in terms of finite-population error probabilities. For practical implementation, we calibrate those boundaries by Monte Carlo simulation at least-favorable deviation rates. The exact design yields ex ante control of decision error probabilities, and the simulation-based implementation approximates that design while allowing the computation of expected stopping times. The framework is most naturally suited to attribute auditing and deviation-rate auditing, especially tests of controls, and it can be extended to one-sided, two-stage, and truncated designs.
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