Associative classification rules hiding for privacy preservation
Sensitive patterns could be discovered from the given data when the data are shared between business partners. Such patterns should not be disclosed to the other parties. However, the shared data should be credible and trustworthy for their 'quality'. In this paper, we address a problem of...
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th-cmuir.6653943832-15742014-08-29T09:29:28Z Associative classification rules hiding for privacy preservation Natwichai J. Sun X. Li X. Sensitive patterns could be discovered from the given data when the data are shared between business partners. Such patterns should not be disclosed to the other parties. However, the shared data should be credible and trustworthy for their 'quality'. In this paper, we address a problem of sensitive classification rule hiding by a data reduction approach. We focus on an important type of classification rules, i.e., associative classification rule. In our context, the impact on data quality generated by data reduction processes is represented by the number of false-dropped rules and ghost rules. To address the problem, we propose a few observations on the reduction approach. Subsequently, we propose a greedy algorithm for the problem based on the observations. Also, we apply two-bitmap indexes to improve the efficiency of the proposed algorithm. Experiment results are presented to show the effectiveness and the efficiency of the proposed algorithm. Copyright © 2011 Inderscience Enterprises Ltd. 2014-08-29T09:29:28Z 2014-08-29T09:29:28Z 2011 Article 17515858 10.1504/IJIIDS.2011.040088 http://www.scopus.com/inward/record.url?eid=2-s2.0-79956073972&partnerID=40&md5=bb36d3810623aa32abcd2cac40d50630 http://cmuir.cmu.ac.th/handle/6653943832/1574 English |
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Sensitive patterns could be discovered from the given data when the data are shared between business partners. Such patterns should not be disclosed to the other parties. However, the shared data should be credible and trustworthy for their 'quality'. In this paper, we address a problem of sensitive classification rule hiding by a data reduction approach. We focus on an important type of classification rules, i.e., associative classification rule. In our context, the impact on data quality generated by data reduction processes is represented by the number of false-dropped rules and ghost rules. To address the problem, we propose a few observations on the reduction approach. Subsequently, we propose a greedy algorithm for the problem based on the observations. Also, we apply two-bitmap indexes to improve the efficiency of the proposed algorithm. Experiment results are presented to show the effectiveness and the efficiency of the proposed algorithm. Copyright © 2011 Inderscience Enterprises Ltd. |
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Article |
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Natwichai J. Sun X. Li X. |
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Natwichai J. Sun X. Li X. Associative classification rules hiding for privacy preservation |
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Natwichai J. Sun X. Li X. |
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Natwichai J. |
title |
Associative classification rules hiding for privacy preservation |
title_short |
Associative classification rules hiding for privacy preservation |
title_full |
Associative classification rules hiding for privacy preservation |
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Associative classification rules hiding for privacy preservation |
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Associative classification rules hiding for privacy preservation |
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associative classification rules hiding for privacy preservation |
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2014 |
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http://www.scopus.com/inward/record.url?eid=2-s2.0-79956073972&partnerID=40&md5=bb36d3810623aa32abcd2cac40d50630 http://cmuir.cmu.ac.th/handle/6653943832/1574 |
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