DocumentCode :
3757218
Title :
An Efficient Generalized Clustering Method for Achieving K-Anonymization
Author :
Xiaoshuang Xu;Masayuki Numao
Author_Institution :
Dept. of Commun. Eng. &
fYear :
2015
Firstpage :
499
Lastpage :
502
Abstract :
This paper proposed an efficient generalized clustering method which derives from the k-means algorithm for achieving k-anonymization with good data quality and minimum information loss. We defined the distance function for the three major attribute types: numerical type, categorical type, and structural type. Then we proceeded the method in two stages: preprocessing stage and postprocessing stage. The preprocessing stage is to partitions all records into[n/k] groups, and then add the records that are naturally similar to each other into every group. The postprocessing stage is to add each remaining record into a cluster with respect to which the increment of the information loss is minimal. We experimentally compared our method with other two clustering-based k-anonymization methods. The experiment showed that our method outperforms their method and also ensures the anonymization of data.
Keywords :
"Clustering algorithms","Algorithm design and analysis","Electronic mail","Partitioning algorithms","Loss measurement","Vegetation","Clustering methods"
Publisher :
ieee
Conference_Titel :
Computing and Networking (CANDAR), 2015 Third International Symposium on
Electronic_ISBN :
2379-1896
Type :
conf
DOI :
10.1109/CANDAR.2015.61
Filename :
7424765
Link To Document :
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