Dynamic Pricing in Digital Environments
A Review of its Evolution and Impact on Consumers’ Perceptions of Value, Fairness and Trust
Keywords:
dynamic pricing, consumer behavior, perceived fairness, trust, e-commerceAbstract
The growth of e-commerce, the availability of transactional and behavioral data, and the automation of commercial decisions have intensified the use of dynamic pricing strategies. Although these practices have a long tradition in revenue management, their expansion into digital retail environments raises new questions about their impact on consumer behavior. This article presents a narrative literature review on dynamic pricing, perceived fairness, trust, and algorithmic pricing. The review shows that the discussion cannot be limited to the economic efficiency of adjusting prices according to demand, inventory, or competition: it must also consider how consumers interpret the legitimacy of the pricing process. The literature suggests that price variations may be accepted when they are perceived as coherent, explainable, and linked to recognizable market conditions; however, they may generate resistance when perceived as discriminatory, opaque, or abusive. The article concludes that the implementation of dynamic pricing in e-commerce requires the integration of economic, behavioral, and ethical criteria, particularly when algorithms or personal data are involved.
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