Privacy-preserving statistical and machine learning methods under fully homomorphic encryption
<p>Advances in technology have now made it possible to monitor heart rate, body temperature and sleep patterns; continuously track movement; record brain activity; and sequence DNA in the jungle --- all using devices that fit in the palm of a hand. These and other recent developments have spar...
Hlavní autor: | Esperança, P |
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Další autoři: | Holmes, C |
Médium: | Diplomová práce |
Jazyk: | English |
Vydáno: |
2016
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