2021
DOI: 10.3390/computers10090107
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Dynamic Privacy-Preserving Recommendations on Academic Graph Data

Abstract: In the age of digital information, where the internet and social networks, as well as personalised systems, have become an integral part of everyone’s life, it is often challenging to be aware of the amount of data produced daily and, unfortunately, of the potential risks caused by the indiscriminate sharing of personal data. Recently, attention to privacy has grown thanks to the introduction of specific regulations such as the European GDPR. In some fields, including recommender systems, this has inevitably l… Show more

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Cited by 7 publications
(1 citation statement)
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“…Another work by Beg, S., Anjum, [19] introduces a Dynamic Parameters-Based Reversible Data Transform (RDT) algorithm, designed to balance privacy preservation and recommendation accuracy through reversible data transformation techniques. Furthermore, research by Purificato, E. [20] focuses on developing dynamic privacy-preserving recommendation techniques specific to academic graph data, ensuring personalized recommendations while safeguarding academic information integrity and confidentiality. Work by Anelli, V.W.…”
Section: Methodsmentioning
confidence: 99%
“…Another work by Beg, S., Anjum, [19] introduces a Dynamic Parameters-Based Reversible Data Transform (RDT) algorithm, designed to balance privacy preservation and recommendation accuracy through reversible data transformation techniques. Furthermore, research by Purificato, E. [20] focuses on developing dynamic privacy-preserving recommendation techniques specific to academic graph data, ensuring personalized recommendations while safeguarding academic information integrity and confidentiality. Work by Anelli, V.W.…”
Section: Methodsmentioning
confidence: 99%