4.6 Article

Privacy-Aware Content-of-Interest Search and Recommendation in Internet of Things for Cross-Dressers

Journal

IEEE ACCESS
Volume 9, Issue -, Pages 125126-125133

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2021.3110815

Keywords

Privacy; Internet of Things; Tools; Search engines; Licenses; Games; Transforms; Cross-dressers; Content-of-Interest; recommendation; privacy-preservation; user input keywords; the Internet of Things

Funding

  1. Ministry of Education in China (MOE) Project of Humanities and Social Sciences [18YJC880078]
  2. Natural Science Foundation of Zhejiang Province [LQ21F020021]
  3. Hangzhou Normal University [2020QD2035]
  4. Fundamental Research Funds for the Central Universities [30919011282]

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The development of the Internet of Things has led to the emergence of new cultures, including the cross-dressing culture. Cross-dressers, as a special group, often face difficulties when using modern information technologies due to their non-mainstream identities. The PCSR solution introduced advanced information retrieval and privacy protection techniques to provide privacy-aware COI search and recommendation for cross-dressers.
With the continuous development and gradual progress of Internet of Things (IoT) in human society, people are becoming increasingly diverse in terms of user preferences and things choices. In this situation, several new cultures or social phenomena have been emerging including the so-called Cross-dressing culture. As a special group of humans, cross-dressers are often very sensitive to their non-mainstream identities. Therefore, they are often confronted with more difficulties when using some modern information techniques such as Content-of-Interest (COI) search. Motivated by this fact, we introduce some advanced information retrieval and privacy protection techniques into the cross-dressing domain and further propose a privacy-aware COI search and recommendation solution for cross-dressers, named PCSR. First, PCSR uses fastText tool to transform the cross-dressers' input keywords and the candidate webpages into corresponding vectors with less private content associated with cross-dressers. Afterwards, we use vector similarity calculation techniques to make privacy-preserving COI search and recommendation. At last, we validate the effectiveness of PCSR through a set of experiments. We believe that our proposed PCSR solution can benefit the cross-dressers significantly when performing COI search and recommendation in IoT while protecting sensitive information of cross-dressers.

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