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演講公告

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Data Perturbation

演講時段:上午11:00-12:00。

Abstract

Data perturbation is a technique for generating synthetic data by adding "noise" to original data, which has a wide range of applications, primarily in data security. Yet, it has not received much attention within data science. In this presentation, I will describe a fundamental principle of data perturbation that preserves the distributional information, thus ascertaining the validity of the downstream analysis and a machine learning task while protecting data privacy. Applying this principle, we derive a scheme to allow a user to perturb data nonlinearly while meeting the requirements of differential privacy and statistical analysis. It yields credible statistical analysis and high predictive accuracy of a machine learning task. Finally, I will highlight multiple facets of data perturbation through examples.

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1111114 Prof. Xiaotong Shen ( 沈曉彤 教授 ).pdf
最後更新日期:2022-11-11 14:46
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