In mechanism design it is typical to impose incentive compatibility and then derive an optimal mechanism subject to this constraint. By replacing the incentive compatibility requirement with the goal of minimizing expected ex post regret, we are able to adapt statistical machine learning techniques to the design of payment rules. This computational approach to mechanism design is applicable to domains with multi-dimensional types and situations where computational efficiency is a concern. Specifically, given an outcome rule and access to a type distribution, we train a support vector machine with a specific structure imposed on the discriminant function, such that it implicitly learns a corresponding payment rule with desirable incentive pr...
We provide a reduction from revenue maximization to welfare maximization in multidimensional Bayesia...
In mechanism design theory, a designer would like to implement a desired social choice function whic...
We provide a computationally efficient black-box reduction from mechanism design to algorithm design...
pdf: publications/dfjo_svmmd.pdf ps: publications/dfjo_svmmd.ps.gz tr: http://arxiv.org/abs/1208.118...
In mechanism design it is typical to impose incentive compatibility and then derive an optimal mecha...
In mechanism design it is typical to impose incentive compatibility and then derive an optimal mecha...
In mechanism design it is typical to impose incentive compatibility and then derive an optimal mecha...
We use techniques from sample-complexity in machine learning to reduce problems of incentive-compati...
Combinatorial auctions have a wide range of real-world applications; yet, designing com-binatorial a...
We use statistical machine learning to develop methods for automatically designing mechanisms in dom...
Abstract. One of the most fundamental problems in mechanism design is that of designing the auction ...
Consider a seller with multiple digital goods or services for sale, such as movies, software, or net...
Thesis (Ph.D.)--University of Washington, 2019The data used as input for many algorithms today comes...
From social networks to supply chains, more and more aspects of how humans, firms and organizations ...
We develop a statistical framework for the design of a strategy-proof assignment mechanism that clos...
We provide a reduction from revenue maximization to welfare maximization in multidimensional Bayesia...
In mechanism design theory, a designer would like to implement a desired social choice function whic...
We provide a computationally efficient black-box reduction from mechanism design to algorithm design...
pdf: publications/dfjo_svmmd.pdf ps: publications/dfjo_svmmd.ps.gz tr: http://arxiv.org/abs/1208.118...
In mechanism design it is typical to impose incentive compatibility and then derive an optimal mecha...
In mechanism design it is typical to impose incentive compatibility and then derive an optimal mecha...
In mechanism design it is typical to impose incentive compatibility and then derive an optimal mecha...
We use techniques from sample-complexity in machine learning to reduce problems of incentive-compati...
Combinatorial auctions have a wide range of real-world applications; yet, designing com-binatorial a...
We use statistical machine learning to develop methods for automatically designing mechanisms in dom...
Abstract. One of the most fundamental problems in mechanism design is that of designing the auction ...
Consider a seller with multiple digital goods or services for sale, such as movies, software, or net...
Thesis (Ph.D.)--University of Washington, 2019The data used as input for many algorithms today comes...
From social networks to supply chains, more and more aspects of how humans, firms and organizations ...
We develop a statistical framework for the design of a strategy-proof assignment mechanism that clos...
We provide a reduction from revenue maximization to welfare maximization in multidimensional Bayesia...
In mechanism design theory, a designer would like to implement a desired social choice function whic...
We provide a computationally efficient black-box reduction from mechanism design to algorithm design...