BriefGPT.xyz
May, 2023
私密长存预测
Private Everlasting Prediction
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Moni Naor, Kobbi Nissim, Uri Stemmer, Chao Yan
TL;DR
本研究提出了一种私有永久预测模型来解决传统私有模型中样本复杂度高的问题,其中预测是替代假设的,用来回答一系列分类查询,并使用预测修改假设,同时考虑对训练集和(自适应选择的)查询的隐私保护,而在PAC模型中提供通用建设,有效预测所有具有有限VC维的概念类,无论是有限域还是无限域。
Abstract
A
private learner
is trained on a sample of labeled points and generates a hypothesis that can be used for predicting the labels of newly sampled points while protecting the
privacy
of the training set [Kasiviswa
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