Shifting Dataset to Preserve Data Privacy

Data analytic is very valuable in any domain that produces large amount of data making demands on full datasets to be revealed for analytic purposes are rising. Regardless, the privacy of the released dataset should be preserved. New techniques using synthetic data as a mean to preserve the privacy...

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Main Authors: Pozi, M.S.M., Bakar, A.A., Ismail, R., Yussof, S., Rahim, F.A., Ramli, R.
Format: Conference Paper
Language:English
Published: 2020
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spelling my.uniten.dspace-131702020-07-06T03:04:39Z Shifting Dataset to Preserve Data Privacy Pozi, M.S.M. Bakar, A.A. Ismail, R. Yussof, S. Rahim, F.A. Ramli, R. Data analytic is very valuable in any domain that produces large amount of data making demands on full datasets to be revealed for analytic purposes are rising. Regardless, the privacy of the released dataset should be preserved. New techniques using synthetic data as a mean to preserve the privacy has been identified as appropriate approach to fulfill the demand. In this paper, a privacy-preserving data synthetic framework for data analytic is proposed. Using a generative model that captures the density function of data attributes, the privacy-preserving synthetic data is produced. We performed classification task through various machine learning classifiers in measuring the data utility of the new privacy-preserving synthesized data. © 2018 IEEE. 2020-02-03T03:30:52Z 2020-02-03T03:30:52Z 2019 Conference Paper 10.1109/IC3e.2018.8632641 en
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
language English
description Data analytic is very valuable in any domain that produces large amount of data making demands on full datasets to be revealed for analytic purposes are rising. Regardless, the privacy of the released dataset should be preserved. New techniques using synthetic data as a mean to preserve the privacy has been identified as appropriate approach to fulfill the demand. In this paper, a privacy-preserving data synthetic framework for data analytic is proposed. Using a generative model that captures the density function of data attributes, the privacy-preserving synthetic data is produced. We performed classification task through various machine learning classifiers in measuring the data utility of the new privacy-preserving synthesized data. © 2018 IEEE.
format Conference Paper
author Pozi, M.S.M.
Bakar, A.A.
Ismail, R.
Yussof, S.
Rahim, F.A.
Ramli, R.
spellingShingle Pozi, M.S.M.
Bakar, A.A.
Ismail, R.
Yussof, S.
Rahim, F.A.
Ramli, R.
Shifting Dataset to Preserve Data Privacy
author_facet Pozi, M.S.M.
Bakar, A.A.
Ismail, R.
Yussof, S.
Rahim, F.A.
Ramli, R.
author_sort Pozi, M.S.M.
title Shifting Dataset to Preserve Data Privacy
title_short Shifting Dataset to Preserve Data Privacy
title_full Shifting Dataset to Preserve Data Privacy
title_fullStr Shifting Dataset to Preserve Data Privacy
title_full_unstemmed Shifting Dataset to Preserve Data Privacy
title_sort shifting dataset to preserve data privacy
publishDate 2020
_version_ 1672614212348674048
score 13.214268