库存成本估计中分层抽样的新方法

A New Approach for Stratified Sampling in Inventory Cost Estimation.

Auditing A Journal of Practice & Theory · 1987
被引 0
人大 BABS 3

中文导读

详细讨论了基于模型的分层抽样方法在库存成本估计中的应用,通过分析四个库存总体设计满足审计标准的抽样方案,发现该方法在相同精度和可靠性下平均比传统方法少抽12%的项目。

Abstract

Abstract Model-based statistical sampling (MBSS) is a recently developed method for designing efficiently stratified sampling plans to estimate a total. MBSS has been suggested by the authors for inventory cost estimation. In a previous paper, the mathematical formulation of MBSS was given in detail and one example was presented to demonstrate the feasibility of the approach. In the present paper, MBSS is discussed with greater attention given to issues relevant to auditors. Four inventory populations are analyzed and sampling plans are designed to meet auditing standards. Comparisons are made between model-based stratification, Dalenius-Hodges stratification, equal-aggregate-size stratification, and proportional allocation. On average, the model-based sampling plans require 12 percent fewer items than the Dalenius-Hodges sampling plans for the same planned levels of precision and reliability. Simulation results confirm the achieved precision and reliability of these procedures but reveal sometimes poor coverage for confidence intervals, even in a population with a high error rate.

审计库存管理抽样方法成本估计