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Differentially-private learning of low dimensional manifolds

机译:低维流形的微分私有学习

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摘要

In this paper, we study the problem of differentially-private learning of low dimensional manifolds embedded in high dimensional spaces. The problems one faces in learning in high dimensional spaces are compounded in a differentially-private learning. We achieve the dual goals of learning the manifold while maintaining the privacy of the dataset by constructing a differentially-private data structure that adapts to the doubling dimension of the dataset. Our differentially-private manifold learning algorithm extends random projection trees of Dasgupta and Freund. A naive construction of differentially-private random projection trees could involve queries with high global sensitivity that would affect the usefulness of the trees. Instead, we present an alternate way of constructing differentially-private random projection trees that uses low sensitivity queries that are precise enough for learning the low dimensional manifolds. We prove that the size of the tree depends only on the doubling dimension of the dataset and not its extrinsic dimension. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,我们研究了嵌入高维空间的低维流形的微分-私有学习问题。一个人在高维空间中学习所面临的问题在一个差异化的私有学习中更加复杂。我们通过构造适应数据集倍增维度的差分私有数据结构,实现了在学习流形的同时保持数据集隐私的双重目标。我们的差分私有流形学习算法扩展了Dasgupta和Freund的随机投影树。幼稚地构造差异私有的随机投影树可能涉及具有高全局敏感性的查询,这会影响树的有用性。取而代之的是,我们提出了一种构造差分私有随机投影树的替代方法,该方法使用足够精确的低灵敏度查询来学习低维流形。我们证明树的大小仅取决于数据集的加倍维度,而不取决于其外部维度。 (C)2015 Elsevier B.V.保留所有权利。

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