Optimum statistical estimation with strategic data sources
Author(s)
Cai, Y; Daskalakis, C; Papadimitriou, C
DownloadPublished version (321.0Kb)
Publisher Policy
Publisher Policy
Article is made available in accordance with the publisher's policy and may be subject to US copyright law. Please refer to the publisher's site for terms of use.
Terms of use
Metadata
Show full item recordAbstract
© 2015 A. Agarwal & S. Agarwal. We propose an optimum mechanism for providing monetary incentives to the data sources of a statistical estimator such as linear regression, so that high quality data is provided at low cost, in the sense that the weighted sum of payments and estimation error is minimized. The mechanism applies to a broad range of estimators, including linear and polynomial regression, kernel regression, and, under some additional assumptions, ridge regression. It also generalizes to several objectives, including minimizing estimation error subject to budget constraints. Besides our concrete results for regression problems, we contribute a mechanism design framework through which to design and analyze statistical estimators whose examples are supplied by workers with cost for labeling said examples.
Date issued
2015-01-01Department
Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Journal of Machine Learning Research
Citation
Cai, Y, Daskalakis, C and Papadimitriou, C. 2015. "Optimum statistical estimation with strategic data sources." Journal of Machine Learning Research, 40 (2015).
Version: Final published version