Multi-dimensional data publishing method and system of local differential privacy based on incremental learning
The invention belongs to the field of data security and privacy protection, and provides a local differential privacy multi-dimensional data publishing method and system based on incremental learning, and the method comprises the steps: learning the correlation of all attribute pairs by aggregating...
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creator | LIU GAOYUAN GUO SHANQING TANG PENG JIN CHONGSHI HU CHENGYU |
description | The invention belongs to the field of data security and privacy protection, and provides a local differential privacy multi-dimensional data publishing method and system based on incremental learning, and the method comprises the steps: learning the correlation of all attribute pairs by aggregating a first batch of user disturbance data; a dependency graph model is constructed according to the correlation of the attribute pairs, and the constructed dependency graph model is converted into a connection tree model composed of a plurality of clusters through a connection tree algorithm; on the basis of the second batch of user data, according to the number and size type of attributes contained in each group, estimating the distribution of the groups by adopting a corresponding estimation method to obtain the joint distribution of each group in the junction tree model; and according to the joint tree model and the joint distribution of each group in the joint tree model, generating a data set which also contains |
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subjects | CALCULATING COMPUTING COUNTING ELECTRIC DIGITAL DATA PROCESSING HANDLING RECORD CARRIERS PHYSICS PRESENTATION OF DATA RECOGNITION OF DATA RECORD CARRIERS |
title | Multi-dimensional data publishing method and system of local differential privacy based on incremental learning |
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