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Personalized pricing with heterogeneous mismatch costs

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  • Noriaki Matsushima
  • Tomomichi Mizuno
  • Cong Pan

Abstract

Personalized pricing has become a reality through digitization. We examine firms' incentives to adopt one of the three pricing schemes: uniform, personalized, or group pricing in a Hotelling duopoly model. There are two types of consumer groups that are heterogeneous in their mismatch costs. We show that both firms employ personalized pricing in equilibrium regardless of the heterogeneity of consumer groups. If the consumer groups' heterogeneity is significant, the profits are higher when both firms use personalized pricing than when they employ uniform pricing; otherwise, the latter profits are higher than the former. Profits are highest when firms employ group pricing among the three cases. The ranking of consumer welfare among the three cases is opposite to that of profits.

Suggested Citation

  • Noriaki Matsushima & Tomomichi Mizuno & Cong Pan, 2022. "Personalized pricing with heterogeneous mismatch costs," ISER Discussion Paper 1184, Institute of Social and Economic Research, Osaka University.
  • Handle: RePEc:dpr:wpaper:1184
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    References listed on IDEAS

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    Cited by:

    1. Qiuyu Lu & Noriaki Matsushima, 2023. "Personalized pricing when consumers can purchase multiple items," ISER Discussion Paper 1192, Institute of Social and Economic Research, Osaka University.

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