privacy and machine
When Machine Learning Meets Privacy: A Survey and Outlook
The newly emerged machine learning (e.g. Meanwhile, privacy has emerged as a big concern in this machine learning-based artificial intelligence era. It is important to note that the problem of privacy preservation in the context of machine learning is quite different from that in traditional data privacy protection, as machine learning can act as both friend and foe. Currently, the work on the preservation of privacy and machine learning (ML) is still in an infancy stage, as most existing solutions only focus on privacy problems during the machine learning process. Therefore, a comprehensive study on the privacy preservation problems and machine learning is required. This paper surveys the state of the art in privacy issues and solutions for machine learning.
Data collection and data markets in the age of privacy and machine learning
Check out the "Decentralized data markets for training AI models" session at the Artificial Intelligence Conference in San Francisco, September 4-7, 2018. Hurry--early price ends July 20. In this post I share slides and notes from a keynote I gave at the Strata Data Conference in London at the end of May. My goal was to remind the data community about the many interesting opportunities and challenges in data itself. Much of the focus of recent press coverage has been on algorithms and models, specifically the expanding utility of deep learning.