Title :
Signal Processing and Machine Learning with Differential Privacy: Algorithms and Challenges for Continuous Data
Author :
Sarwate, Anand D. ; Chaudhuri, Kamalika
Author_Institution :
Toyota Technol. Inst. at Chicago, Chicago, IL, USA
Abstract :
Private companies, government entities, and institutions such as hospitals routinely gather vast amounts of digitized personal information about the individuals who are their customers, clients, or patients. Much of this information is private or sensitive, and a key technological challenge for the future is how to design systems and processing techniques for drawing inferences from this large-scale data while maintaining the privacy and security of the data and individual identities. Individuals are often willing to share data, especially for purposes such as public health, but they expect that their identity or the fact of their participation will not be disclosed. In recent years, there have been a number of privacy models and privacy-preserving data analysis algorithms to answer these challenges. In this article, we will describe the progress made on differentially private machine learning and signal processing.
Keywords :
data analysis; data privacy; learning (artificial intelligence); security of data; signal processing; continuous data; data privacy; data security; differential privacy; digitized personal information; government entities; large-scale data; privacy models; privacy-preserving data analysis algorithms; private companies; private information; processing techniques; sensitive information; signal processing; Approximation methods; Computer security; Data privacy; Noise measurement; Privacy; Signal processing algorithms;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2013.2259911