Forecasting newspaper demand with censored regression

Forecasting newspaper demand with censored regression

0.00 Avg rating0 Votes
Article ID: iaor200969003
Country: United Kingdom
Volume: 60
Issue: 7
Start Page Number: 944
End Page Number: 951
Publication Date: Jul 2009
Journal: Journal of the Operational Research Society
Authors: ,
Keywords: production
Abstract:

Newspaper circulation has to be determined at the level of the individual retail outlets for each of the editions to be sold through such outlets. Traditional forecasting methods provide no insight into the impact of the service level: defined as the probability that no out-of-stock will occur. The service level results in out-of-stock situations, causing missed sales and oversupply or returns. In our application management sets a policy aiming at a 97% service level. The forecasting system developed provides estimates for excess deliveries and for the expected shortages. The results compare favourably to the traditional moving average approach previously employed by the publisher. Censored regression is a natural approach to the newspaper problem. It provides information on key policy variables and it is relatively simple to integrate into the distribution policy, with only small adaptations to the existing forecasting and distribution policy.

Reviews

Required fields are marked *. Your email address will not be published.