PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATION

Privacy preservation is that the most targeted issue in information publication, because the sensitive data shouldn't be leaked. For this sake, several privacy preservation data mining algorithms are proposed. In this work, feature selection using evolutionary algorithm and data masking coupled...

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Main Authors: V. Shyamala Susan, T. Christopher
Format: Article
Language:English
Published: ICT Academy of Tamil Nadu 2016-10-01
Series:ICTACT Journal on Soft Computing
Subjects:
Online Access:http://ictactjournals.in/ArticleDetails.aspx?id=2703
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spelling doaj-b563688486494b6fbb49b016c5c9342a2020-11-25T01:14:02ZengICT Academy of Tamil NaduICTACT Journal on Soft Computing0976-65612229-69562016-10-017113661371PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATIONV. Shyamala Susan0T. Christopher1Government Arts College, Udumalpet, IndiaGovernment Arts College, Coimbatore, IndiaPrivacy preservation is that the most targeted issue in information publication, because the sensitive data shouldn't be leaked. For this sake, several privacy preservation data mining algorithms are proposed. In this work, feature selection using evolutionary algorithm and data masking coupled with slicing is treated as a multiple objective optimisation to preserve privacy. To start with, Genetic Algorithm (GA) is carried out over the datasets to perceive the sensitive attributes and prioritise the attributes for treatment as per their determined sensitive level. In the next phase, to distort the data, noise is added to the higher level sensitive value using Hybrid Data Transformation (HDT) method. In the following phase slicing algorithm groups the correlated attributes organized and by this means reduces the dimensionality by retaining the Advanced Clustering Algorithm (ACA). With the aim of getting the optimal dimensions of buckets, tuple segregating is accomplished by Metaheuristic Firefly Algorithm (MFA). The investigational consequences imply that the anticipated technique can reserve confidentiality and therefore the information utility is additionally high. Slicing algorithm allows the protection of association and usefulness in which effects in decreasing the information dimensionality and information loss. Performance analysis is created over OCC 7 and OCC 15 and our optimization method proves its effectiveness over two totally different datasets by showing 92.98% and 96.92% respectively.http://ictactjournals.in/ArticleDetails.aspx?id=2703Privacy preservationGenetic AlgorithmAdvanced Clustering AlgorithmMetaheuristic Firefly AlgorithmHybrid Data Transformation
collection DOAJ
language English
format Article
sources DOAJ
author V. Shyamala Susan
T. Christopher
spellingShingle V. Shyamala Susan
T. Christopher
PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATION
ICTACT Journal on Soft Computing
Privacy preservation
Genetic Algorithm
Advanced Clustering Algorithm
Metaheuristic Firefly Algorithm
Hybrid Data Transformation
author_facet V. Shyamala Susan
T. Christopher
author_sort V. Shyamala Susan
title PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATION
title_short PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATION
title_full PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATION
title_fullStr PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATION
title_full_unstemmed PRIVACY PRESERVING DATA MINING USING MULTIPLE OBJECTIVE OPTIMIZATION
title_sort privacy preserving data mining using multiple objective optimization
publisher ICT Academy of Tamil Nadu
series ICTACT Journal on Soft Computing
issn 0976-6561
2229-6956
publishDate 2016-10-01
description Privacy preservation is that the most targeted issue in information publication, because the sensitive data shouldn't be leaked. For this sake, several privacy preservation data mining algorithms are proposed. In this work, feature selection using evolutionary algorithm and data masking coupled with slicing is treated as a multiple objective optimisation to preserve privacy. To start with, Genetic Algorithm (GA) is carried out over the datasets to perceive the sensitive attributes and prioritise the attributes for treatment as per their determined sensitive level. In the next phase, to distort the data, noise is added to the higher level sensitive value using Hybrid Data Transformation (HDT) method. In the following phase slicing algorithm groups the correlated attributes organized and by this means reduces the dimensionality by retaining the Advanced Clustering Algorithm (ACA). With the aim of getting the optimal dimensions of buckets, tuple segregating is accomplished by Metaheuristic Firefly Algorithm (MFA). The investigational consequences imply that the anticipated technique can reserve confidentiality and therefore the information utility is additionally high. Slicing algorithm allows the protection of association and usefulness in which effects in decreasing the information dimensionality and information loss. Performance analysis is created over OCC 7 and OCC 15 and our optimization method proves its effectiveness over two totally different datasets by showing 92.98% and 96.92% respectively.
topic Privacy preservation
Genetic Algorithm
Advanced Clustering Algorithm
Metaheuristic Firefly Algorithm
Hybrid Data Transformation
url http://ictactjournals.in/ArticleDetails.aspx?id=2703
work_keys_str_mv AT vshyamalasusan privacypreservingdataminingusingmultipleobjectiveoptimization
AT tchristopher privacypreservingdataminingusingmultipleobjectiveoptimization
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