论文标题
形成和结构保存差异隐私
Shape And Structure Preserving Differential Privacy
论文作者
论文摘要
对于要表示为歧管上点的2D对象的图像和形状等数据结构通常是常见的。从此类数据中产生差异私有估计的机制的实用性与它与空间的基础结构和几何形状的兼容性密切相关。特别是,如最近所示,拉普拉斯机理在弯曲的歧管上的效用(例如肯德尔的2D形状空间)受到曲率的显着影响。为了关注歧管上一个点样本的弗雷奇的平均值的问题,我们利用了均值的特征为作为目标函数的最小化,由平方距离的总和组成,并在riemannian流形中开发了k-norm梯度机制,这些机制在riemannian流形上产生了梯度,这些梯度有利,这些梯度有帮助接近目标函数的范围。对于正面弯曲的歧管的情况,我们描述了如何使用平方距离函数的梯度比Laplace机制更好地控制灵敏度,并在数值上在callosa的形状数据集上进行数值演示。还提出了该机理在球体上的效用的进一步说明以及对称正定矩阵的多种词。
It is common for data structures such as images and shapes of 2D objects to be represented as points on a manifold. The utility of a mechanism to produce sanitized differentially private estimates from such data is intimately linked to how compatible it is with the underlying structure and geometry of the space. In particular, as recently shown, utility of the Laplace mechanism on a positively curved manifold, such as Kendall's 2D shape space, is significantly influences by the curvature. Focusing on the problem of sanitizing the Fréchet mean of a sample of points on a manifold, we exploit the characterisation of the mean as the minimizer of an objective function comprised of the sum of squared distances and develop a K-norm gradient mechanism on Riemannian manifolds that favors values that produce gradients close to the the zero of the objective function. For the case of positively curved manifolds, we describe how using the gradient of the squared distance function offers better control over sensitivity than the Laplace mechanism, and demonstrate this numerically on a dataset of shapes of corpus callosa. Further illustrations of the mechanism's utility on a sphere and the manifold of symmetric positive definite matrices are also presented.