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Multi-dimensional mechanism design with limited information
Author(s) -
Dirk Bergemann,
Ji Shen,
Yun Xu,
Edmund Yeh
Publication year - 2012
Publication title -
london school of economics and political science research online (london school of economics and political science)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/2229012.2229028
Subject(s) - mechanism design , preference , variety (cybernetics) , scalar (mathematics) , computer science , nonlinear pricing , space (punctuation) , mechanism (biology) , mathematical economics , mathematical optimization , mathematics , theoretical computer science , microeconomics , economics , artificial intelligence , geometry , operating system , philosophy , epistemology
We analyze a nonlinear pricing model with limited information. Each buyer can purchase a large variety, d, of goods. His preference for each good is represented by a scalar and his preference over d goods is represented by a d-dimensional vector. The type space of each buyer is given by a compact subset of R d+ with a continuum of possible types. By contrast, the seller is limited to offer a finite number M of d-dimensional choices. We provide necessary conditions that the optimal finite menu of the social welfare maximizing problem has to satisfy. We establish an underlying connection to the theory of quantization and provide an estimate of the welfare loss resulting from the usage of the d-dimensional M-class menu. We show that the welfare loss converges to zero at a rate proportional to d/M 2/d. We show that in higher dimensions, a significant reduction in the welfare loss arises from an optimal partition of the d-dimensional type space that takes advantage of the correlation among the d parameters

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