senseprice
Senseprice is an emerging pricing paradigm that seeks to incorporate real-time sensory information into price formation. Rather than relying solely on traditional supply-demand signals, it uses data from sensor networks and related streams to adjust prices in response to current conditions such as crowding, occupancy, environmental factors, or product quality signals. The goal is to reflect the marginal value of a good or service in its immediate context.
Technically, senseprice combines data fusion from diverse sensors with analytics, machine learning, and appropriate market-design concepts.
Applications span energy markets, transportation, retail, and smart cities. In smart grids, prices may respond to
Potential advantages include improved efficiency, better resource use, and responsiveness to changing conditions. Risks involve data
Senseprice intersects with dynamic pricing, surge pricing, and value-based pricing, serving as a broader framework that