International Association for Cryptologic Research

International Association
for Cryptologic Research

IACR News item: 13 May 2014

Raphael Bost, Raluca Ada Popa, Stephen Tu, Shafi Goldwasser
ePrint Report ePrint Report
Machine learning classification is used in numerous settings nowadays, such as medical or genomics predictions, spam detection, face recognition, and financial predictions. Due to privacy concerns in some of these applications, it is important that the data and the classifier remain confidential.

In this work, we construct three major classification protocols that satisfy this privacy constraint: hyperplane decision, Na\\\"ive Bayes, and decision trees. These protocols may also be combined with AdaBoost. They rely on a library of building blocks for constructing classifiers securely, and we demonstrate the versatility of this library by constructing a face detection classifier.

Our protocols are efficient, taking milliseconds to a few seconds to perform a classification when running on real medical datasets.

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