2019
DOI: 10.1155/2019/9169802
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Laplace Input and Output Perturbation for Differentially Private Principal Components Analysis

Abstract: With the widespread application of big data, privacy-preserving data analysis has become a topic of increasing significance. The current research studies mainly focus on privacy-preserving classification and regression. However, principal component analysis (PCA) is also an effective data analysis method which can be used to reduce the data dimensionality, commonly used in data processing, machine learning, and data mining. In order to implement approximate PCA while preserving data privacy, we apply the Lapla… Show more

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Cited by 9 publications
(10 citation statements)
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References 16 publications
(19 reference statements)
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“…Nb4Ta in a PIT wire have also been recently reported by Xu et al [32]. However, in this comparison of properties with and without SnO2, we note that we do still see a small HIrr degradation in the presence of O, the effect being significantly worse in the Zr alloy.…”
Section: Discussionsupporting
confidence: 84%
“…Nb4Ta in a PIT wire have also been recently reported by Xu et al [32]. However, in this comparison of properties with and without SnO2, we note that we do still see a small HIrr degradation in the presence of O, the effect being significantly worse in the Zr alloy.…”
Section: Discussionsupporting
confidence: 84%
“…e Laplace mechanism adds independent noise to data; we use lap(b) to represent the noise sampled from Laplace distribution with a scaling of b. Definition 3 (Laplace mechanism) (see [17]). Given a data set D, for a function f: D ⟶ R d , with sensitivity Δf, the mechanism M provides ε− differential privacy satisfying…”
Section: Differential Privacymentioning
confidence: 99%
“…27, where they are compared with the results from ANL at 2.2 GeV [79]. The overall normalizations of the KOALA data have not yet been determined because the completely pure Coulomb region was not fully accessed and the analysis is still proceeding [83].…”
Section: Proton-proton Elastic Scatteringmentioning
confidence: 99%
“…Elastic proton-proton differential cross sections at small momentum transfers t. The preliminary values measured by the PANDA collaboration with the KOALA detector at 2.5, 2.8, and 3.2 GeV/c [82] are compared to the angular dependence measured at ANL at 3.0 GeV/c [79]. The normalizations of the KOALA data at the three momenta are still under study [83] and all data are given in arbitrary units. 85].…”
Section: Neutron-proton Elastic Scatteringmentioning
confidence: 99%