Title:
A Random Rotation Perturbation Approach to Privacy Preserving Data Classification

dc.contributor.author Chen, Keke
dc.contributor.author Liu, Ling
dc.date.accessioned 2006-04-21T16:20:55Z
dc.date.available 2006-04-21T16:20:55Z
dc.date.issued 2005
dc.description.abstract This paper presents a random rotation perturbation approach for privacy preserving data classification. Concretely, we identify the importance of classification-specific information with respect to the loss of information factor, and present a random rotation perturbation framework for privacy preserving data classification. Our approach has two unique characteristics. First, we identify that many classification models utilize the geometric properties of datasets, which can be preserved by geometric rotation. We prove that the three types of classifiers will deliver the same performance over the rotation perturbed dataset as over the original dataset. Second, we propose a multi-column privacy model to address the problems of evaluating privacy quality for multidimensional perturbation. With this metric, we develop a local optimal algorithm to find the good rotation perturbation in terms of privacy guarantee. We also analyze both naive estimation and ICA-based reconstruction attacks with the privacy model. Our initial experiments show that the random rotation approach can provide high privacy guarantee while maintaining zero-loss of accuracy for the discussed classifiers. en
dc.format.extent 182973 bytes
dc.format.mimetype application/pdf
dc.identifier.uri http://hdl.handle.net/1853/9434
dc.language.iso en_US en
dc.publisher Georgia Institute of Technology en
dc.relation.ispartofseries CC Technical Report; GIT-CC-05-12 en
dc.subject Metrics
dc.subject Optimization algorithms
dc.subject Perturbed datasets
dc.subject Privacy preserving data mining
dc.subject Random rotation perturbation
dc.subject Independent Component Analysis (ICA)
dc.title A Random Rotation Perturbation Approach to Privacy Preserving Data Classification en
dc.type Text
dc.type.genre Technical Report
dspace.entity.type Publication
local.contributor.author Liu, Ling
local.contributor.corporatename College of Computing
local.relation.ispartofseries College of Computing Technical Report Series
relation.isAuthorOfPublication 96391b98-ac42-4e2c-93ee-79a5e16c2dfb
relation.isOrgUnitOfPublication c8892b3c-8db6-4b7b-a33a-1b67f7db2021
relation.isSeriesOfPublication 35c9e8fc-dd67-4201-b1d5-016381ef65b8
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