Personalized Price Discrimination Using Big Data
Benjamin Shiller
No 108, Working Papers from Brandeis University, Department of Economics and International Business School
Abstract:
Person-specific pricing was rarely observed in the past because reservation prices were unobtainable. I investigate whether this still holds now that detailed individual behaviors are tracked. Individuals' expected demand functions are estimated by combining a classic economic model with machine learning techniques to address overfitting and high dimensionality. I find that tailoring prices based on web browsing histories increases profits by 14.55%, and results in some consumers paying nearly double the price others do for the same product. Using only demographics to personalize prices raises profits by only 0.30%, suggesting the percent profit gain from personalized pricing has increased 48-fold. This is a revised version. The original title of this paper was: 'First Degree Price Discrimination Using Big Data', working paper #58 from 2013.
Pages: 38 pages
Date: 2016-07
New Economics Papers: this item is included in nep-com
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Persistent link: https://EconPapers.repec.org/RePEc:brd:wpaper:108
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