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Treffer: Integrated conservative profitability evaluation for newsboy-type product in an OBM group.

Title:
Integrated conservative profitability evaluation for newsboy-type product in an OBM group.
Authors:
Su, Rung-Hung1 (AUTHOR) 141637@mail.fju.edu.tw, Chen, Jun-Jie1 (AUTHOR)
Source:
Quality Technology & Quantitative Management. May2025, Vol. 22 Issue 3, p418-441. 24p.
Database:
Business Source Premier

Weitere Informationen

Manufacturers in competitive markets can enhance profit opportunities by transforming their business model to own branding and manufacture (OBM). Note however that in situations involving limited storage and production capacity, OBM groups must determine the optimal preparation quantity and frequently evaluate profitability in all channels. This is particularly important when dealing with newsboy-type (i.e. single-period) products. The achievable capacity index (ACI) can effectively measure and estimate the profitability of a newsboy-type product. However, the ACI is applicable only to measure a single product in a single retail point. In the current study, we developed an integrated achievable capacity index (IACI) to enable OBM groups with owned channels to measure the overall profitability with multiple independent normal demands. To estimate the true IACI, we derived the statistical properties of the IACI estimator based on the historical demand data. The lower confidence bound on IACI (LCBIA) was also presented to prevent overestimation due to sampling error. The LCBIA values for various values of parameters were summarized as the generic tables for the manager's convenience pertaining to decision-making in conservative profitability evaluation. Finally, the applicability of the proposed scheme was assessed by applying numerical and sensitivity analyses to a real-world OBM example. [ABSTRACT FROM AUTHOR]

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