Harry Halpin (Nym Technologies)

With the ascendance of artificial intelligence (AI), one of the largest problems facing privacy-enhancing technologies (PETs) is how they can successfully counter-act the large-scale surveillance that is required for the collection of data–and metadata–necessary for the training of AI models. While there has been a flurry of research into the foundations of AI, the field of privacy-enhancing technologies still appears to be a grabbag of techniques without an overarching theoretical foundation. However, we will point to the potential unification of AI and PETS via the concepts of signal and noise, as formalized by informationtheoretic metrics like entropy. We overview the concept of entropy (“noise”) and its applications in both AI and PETs. For example, mixnets can be thought of as noise-generating networks, and so the inverse of neural networks. Then we defend the use of entropy as a metric to compare both different PETs, as well as both PETs and AI systems.

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Hang Zhang (Indiana University Bloomington), Jangha Kim (The Affiliated Institute of ETRI, ROK), Chuhong Yuan (Georgia Institute of Technology), Zhiyun Qian (University of California, Riverside), Taesoo Kim (Georgia Institute of Technology)

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Caihua Li (Yale University), Seung-seob Lee (Yale University), Lin Zhong (Yale University)

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Caleb Stewart, Rhonda Gaede, Jeffrey Kulick (University of Alabama in Huntsville)

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Andrick Adhikari (University of Denver), Sanchari Das (University of Denver), Rinku Dewri (University of Denver)

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