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Quantum Machine Learning

Quantum Privacy-Preserving Perceptron

arXiv
Authors: Shenggang Ying, Mingsheng Ying, Yuan Feng

Year

2017

Paper ID

44297

Status

Preprint

Abstract Read

~2 min

Abstract Words

132

Citations

N/A

Abstract

With the extensive applications of machine learning, the issue of private or sensitive data in the training examples becomes more and more serious: during the training process, personal information or habits may be disclosed to unexpected persons or organisations, which can cause serious privacy problems or even financial loss. In this paper, we present a quantum privacy-preserving algorithm for machine learning with perceptron. There are mainly two steps to protect original training examples. Firstly when checking the current classifier, quantum tests are employed to detect data user's possible dishonesty. Secondly when updating the current classifier, private random noise is used to protect the original data. The advantages of our algorithm are: (1) it protects training examples better than the known classical methods; (2) it requires no quantum database and thus is easy to implement.

Why This Paper Matters

  • This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
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  • With the extensive applications of machine learning, the issue of private or sensitive data in the training examples becomes more and more serious: during the training process...

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