Mary Ann Liebert, Inc., Publishers
1 Article found

Mary Ann Liebert, Inc., Publishers articles

ABSTRACT

Synthetic data are becoming increasingly important mechanisms for sharing data among collaborators and with the public. Multiple methods for the generation of synthetic data have been proposed, but many have short comings with respect to maintaining the statistical properties of the original data. We propose a new method for fully synthetic data generation that leverages linear and integer mathematical programming models in order to

Sep. 1, 2016

Brittany Megan Bogle;Sanjay Mehrotra