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Influencing Competition Through Shelf Design

Author

Listed:
  • Francisco Cisternas
  • Wee Chaimanowong
  • Alan Montgomery
  • Timothy Derdenger

Abstract

Shelf design decisions strongly influence product demand. In particular, placing products in desirable locations increases demand. This primary effect on shelf position is clear, but there is a secondary effect based on the relative positioning of nearby products. Intuitively, products located next to each other are more likely to be compared having positive and negative effects. On the one hand, locations closer to relatively strong products will be undesirable, as these strong products will draw demand from others -- an effect that is stronger for those in close proximity. On the other hand, because strong products tend to attract more traffic, locations closer to them elicit high consumer attention by increased visibility. Modifying the GEV class of models to allow demand to be moderated by competitors' proximity, these two effects emerge naturally. We found that although the competition effect is usually stronger, it is not always the dominating effect. Shelf displays can achieve higher profits by exploiting the relative influence on competition from shelf design to shift demand to higher profitability products. In the paper towel category, we found profitability differences of up to 7\% and displays with 3\% higher gross profits over the best shelf design present in our data.

Suggested Citation

  • Francisco Cisternas & Wee Chaimanowong & Alan Montgomery & Timothy Derdenger, 2020. "Influencing Competition Through Shelf Design," Papers 2010.09227, arXiv.org, revised Mar 2024.
  • Handle: RePEc:arx:papers:2010.09227
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