DocumentCode :
3212918
Title :
Privacy preserving processing of high dimensional data classification based on sample selection and Singular Value Decomposition
Author :
Jain, Paril ; Tapashetti, Pratibha ; Umesh, A.S. ; Sharma, Shantanu
Author_Institution :
Dept. of CSE, AISECT Univ., Bhopal, India
fYear :
2013
fDate :
16-18 Dec. 2013
Firstpage :
1
Lastpage :
5
Abstract :
With the development of data mining technologies, privacy protection has become a challenge for data mining applications in many fields. To solve this problem, many privacy-preserving data mining methods have been proposed. One important type of such methods is based on Singular Value Decomposition (SVD). In the proposed algorithm, attributes are grouped according to their distance difference similarity by clustering the data set using decision tree classification. Secondly, the algorithm packetizes the attributes according to their SA value in each group. Thirdly, for each group it selects attributes from the smallest bucket and searches for a similar attributes in the attributes-1 largest buckets from the same group to create an equivalence class following the unique attribute-distinct diversity anonymization model. The proposed algorithm satisfies the “utility based anonymization principle that crucial information is protected from being suppressed. Also, weights given to attributes improve clustering and give the ability to control the generalization´s depth. In prototype classification is combination of clustering and classification technique such methods are called ensemble classifier, this new proposed method is more efficient in balancing data privacy and data utility.
Keywords :
data mining; data protection; decision trees; pattern classification; pattern clustering; singular value decomposition; SA value; SVD; attributes packetization; data classification; data set clustering technique; data utility based anonymization principle; decision tree classification; distance difference similarity; ensemble classifier; equivalence class; generalization depth control; information protection; privacy preserving data mining method; privacy protection; prototype classification technique; sample selection; similar attribute selection; singular value decomposition; unique attribute distinct diversity anonymization model; Classification algorithms; Clustering algorithms; Conferences; Data privacy; Prototypes; Singular value decomposition; Classification; Clustering; Privacy-Preserving Data Mining; Singular Value Decomposition (SVD);
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control, Automation, Robotics and Embedded Systems (CARE), 2013 International Conference on
Conference_Location :
Jabalpur
Type :
conf
DOI :
10.1109/CARE.2013.6733775
Filename :
6733775
Link To Document :
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