Title :
Large Margin Gaussian Mixture Models with Differential Privacy
Author :
Pathak, Manas A. ; Raj, Bhiksha
Author_Institution :
Carnegie Mellon Univ., Pittsburgh, PA, USA
Abstract :
As increasing amounts of sensitive personal information is aggregated into data repositories, it has become important to develop mechanisms for processing the data without revealing information about individual data instances. The differential privacy model provides a framework for the development and theoretical analysis of such mechanisms. In this paper, we propose an algorithm for learning a discriminatively trained multiclass Gaussian mixture model-based classifier that preserves differential privacy using a large margin loss function with a perturbed regularization term. We present a theoretical upper bound on the excess risk of the classifier introduced by the perturbation.
Keywords :
Gaussian processes; data privacy; learning (artificial intelligence); pattern classification; classifier excess risk; data processing; data repositories; differential privacy model; large margin Gaussian mixture models; large margin loss function; multiclass Gaussian mixture model-based classifier learning; perturbed regularization term; sensitive personal information; Classification algorithms; Data models; Data privacy; Optimization; Privacy; Training; Training data; Differential privacy; machine learning.;
Journal_Title :
Dependable and Secure Computing, IEEE Transactions on
DOI :
10.1109/TDSC.2012.27