Privacy-Preserving Data Sharing in High Dimensional Regression and Classification Settings

Abstract

We focus on the problem of multi-party data sharing in high dimensional data settings where the number of measured features (or the dimension) p is frequently much larger than the number of subjects (or the sample size) n, the so-called p >> n scenario that has been the focus of much recent statistical research. Here, we consider data sharing for two interconnected problems in high dimensional data analysis, namely the feature selection and classification. We characterize the notions of ``cautious", ``regular", and ``generous" data sharing in terms of their privacy-preserving implications for the parties and their share of data, with focus on the ``feature privacy" rather than the ``sample privacy", though the violation of the former may lead to the latter. We evaluate the data sharing methods using {\it phase diagram} from the statistical literature on multiplicity and Higher Criticism thresholding. In the two-dimensional phase space calibrated by the signal sparsity and signal strength, a phase diagram is a partition of the phase space and contains three distinguished regions, where we have no (feature)-privacy violation, relatively rare privacy violations, and an overwhelming amount of privacy violation.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jul 20, 2012
Source ID
10.29012/jpc.v4i1.618

Entities

People

  • Jiashun Jin
  • Stephen E. Fienberg

Organizations

  • National Science Foundation
  • United States Army

Tags

Fields of Study

  • Computer science

Readers

  • Computer Networking
  • Educational Psychology
  • Image Processing and Computer Vision.

Technology Areas

  • Space