Books and journals Case studies Expert Briefings Open Access
Advanced search

A study of an augmented CPFR model for the 3C retail industry

Tien‐Hsiang Chang (Department of Information Management, National Kaohsiung University of Applied Science, Kaohsiung, Taiwan, Republic of China)
Hsin‐Pin Fu (Department of Marketing and Distribution Management, National Kaohsiung First University of Science and Technology, Kaohsiung, Taiwan, Republic of China)
Wan‐I Lee (Department of Marketing and Distribution Management, National Kaohsiung First University of Science and Technology, Kaohsiung, Taiwan, Republic of China)
Yichen Lin (Institute of Technology Management, National University of Tainan, Tainan, Taiwan, Republic of China)
Hsu‐Chih Hsueh (Smartant Co. Ltd Hsinchu, Taiwan, Republic of China)

Supply Chain Management

ISSN: 1359-8546

Publication date: 8 May 2007

Abstract

Purpose

–

To propose and test an augmented collaborative planning, forecasting, and replenishment (A‐CPFR) model in a retailer‐supplier context with a view to improving forecasting accuracy and then reducing the “bullwhip effect” in the supply chain.

Design/methodology/approach

–

After a literature review, the paper presents a real case in which the present authors provided assistance. The description of the case includes: case company background; an “as‐is” model analysis; a “to‐be” (CPFR) model analysis; and a description of the results and potential benefits. The paper then proposes an A‐CPFR model for the case and performs a simulation of the new model for comparison with the existing CPFR model.

Findings

–

The results show that the mean absolute deviation of forecasting and the inventory variance are both better in the proposed model than in the existing CPFR model. The proposed model can thus improve the accuracy of sales forecasting, reduce inventory levels, and reduce the “bullwhip effect”.

Practical implications

–

In addition to information provided by the retailer, a logistics supplier should also obtain competitors' promotional information from the market as another factor for forecasting – thus enabling timely responses to demand fluctuations.

Originality/value

–

The proposed model is an original and useful development on the existing CPFR model. It could become a reference model for the retail industry in implementing CPFR in the future.

Keywords

  • Retailing
  • Supply chain management

Citation

Chang, T., Fu, H., Lee, W., Lin, Y. and Hsueh, H. (2007), "A study of an augmented CPFR model for the 3C retail industry", Supply Chain Management, Vol. 12 No. 3, pp. 200-209. https://doi.org/10.1108/13598540710742518

Download as .RIS

Publisher

:

Emerald Group Publishing Limited

Copyright © 2007, Emerald Group Publishing Limited

Please note you do not have access to teaching notes

You may be able to access teaching notes by logging in via Shibboleth, Open Athens or with your Emerald account.
Login
If you think you should have access to this content, click the button to contact our support team.
Contact us

To read the full version of this content please select one of the options below

You may be able to access this content by logging in via Shibboleth, Open Athens or with your Emerald account.
Login
To rent this content from Deepdyve, please click the button.
Rent from Deepdyve
If you think you should have access to this content, click the button to contact our support team.
Contact us
Emerald Publishing
  • Opens in new window
  • Opens in new window
  • Opens in new window
  • Opens in new window
© 2021 Emerald Publishing Limited

Services

  • Authors Opens in new window
  • Editors Opens in new window
  • Librarians Opens in new window
  • Researchers Opens in new window
  • Reviewers Opens in new window

About

  • About Emerald Opens in new window
  • Working for Emerald Opens in new window
  • Contact us Opens in new window
  • Publication sitemap

Policies and information

  • Privacy notice
  • Site policies
  • Modern Slavery Act Opens in new window
  • Chair of Trustees governance statement Opens in new window
  • COVID-19 policy Opens in new window
Manage cookies

We’re listening — tell us what you think

  • Something didn’t work…

    Report bugs here

  • All feedback is valuable

    Please share your general feedback

  • Member of Emerald Engage?

    You can join in the discussion by joining the community or logging in here.
    You can also find out more about Emerald Engage.

Join us on our journey

  • Platform update page

    Visit emeraldpublishing.com/platformupdate to discover the latest news and updates

  • Questions & More Information

    Answers to the most commonly asked questions here