skip to main content
research-article

Retail sales prediction and item recommendations using customer demographics at store level

Published:20 December 2008Publication History
Skip Abstract Section

Abstract

This paper outlines a retail sales prediction and product recommendation system that was implemented for a chain of retail stores. The relative importance of consumer demographic characteristics for accurately modeling the sales of each customer type are derived and implemented in the model. Data consisted of daily sales information for 600 products at the store level, broken out over a set of non-overlapping customer types. A recommender system was built based on a fast online thin Singular Value Decomposition. It is shown that modeling data at a finer level of detail by clustering across customer types and demographics yields improved performance compared to a single aggregate model built for the entire dataset. Details of the system implementation are described and practical issues that arise in such real-world applications are discussed. Preliminary results from test stores over a one-year period indicate that the system resulted in significantly increased sales and improved efficiencies. A brief overview of how the primary methods discussed here were extended to a much larger data set is given to confirm and illustrate the scalability of this approach.

References

  1. Brand, M. 2002. Incremental Singular Value Decomposition of Uncertain Data with Missing Values. In Proceedings of the 7th European Conference on Computer Vision-Part I Springer-Verlag, London, 707--720. Google ScholarGoogle ScholarDigital LibraryDigital Library
  2. Brand, M. 2003. Fast online svd revisions for lightweight recommender systems. In SIAM Intl conf on DM.Google ScholarGoogle ScholarCross RefCross Ref
  3. Chandrasekaran, S., Manjunath, B.S., Wang, Y.F., Winkeler, J., and Zhang, H. 1997. An eigenspace update algorithm for image analysis. Graph. Models Image Process. 59, 5, 321--332. Google ScholarGoogle ScholarDigital LibraryDigital Library
  4. Gu, M., and Eisenstat S.C. 1994. A Stable and Fast Algorithm for Updating and Singular Value Decomposition, Technical Report YALE/DCS/RR-996, Yale University.Google ScholarGoogle Scholar
  5. Hofmann, T. 2001. Unsupervised Learning by Probabilistic Latent Semantic Analysis. Mach. Learn. 42, 1-2, 177--196. Google ScholarGoogle ScholarDigital LibraryDigital Library
  6. Schafer, J.B., Konstan, J.A., and Riedl, J. 2001. ECommerce Recommendation Applications. Data Min. Knowl. Discov. 5, 1-2 (Jan. 2001), 115--153. Google ScholarGoogle ScholarDigital LibraryDigital Library
  7. Zhang, X., Edwards, J., and Harding, J. 2007. Personalised online sales using web usage data mining. Comput. Ind. 58, 8-9, 772--782. Google ScholarGoogle ScholarDigital LibraryDigital Library

Index Terms

  1. Retail sales prediction and item recommendations using customer demographics at store level

      Recommendations

      Comments

      Login options

      Check if you have access through your login credentials or your institution to get full access on this article.

      Sign in

      Full Access

      PDF Format

      View or Download as a PDF file.

      PDF

      eReader

      View online with eReader.

      eReader