Abstract
AbstractSocial networks are a vast source of information, and they have been increasing impact on people’s daily lives. They permit us to share emotions, passions, and interactions with other people around the world. While enabling people to exhibit their lives, social networks guarantee their privacy. The definitions of privacy requirements and default policies for safeguarding people’s data are the most difficult challenges that social networks have to deal with. In this work, we have collected data concerning people who have different social network profiles, aiming to analyse privacy requirements offered by social networks. In particular, we have built a tool exploiting image-recognition techniques to recognise a user from his/her picture, aiming to collect his/her personal data accessible through social networks where s/he has a profile. We have composed a dataset of 5000 users by combining data available from several social networks; we compared social network data mandatory in the registration phases, publicly accessible and those retrieved by our analysis. We aim to analyse the amount of extrapolated data for evaluating privacy threats when users share information on different social networks to help them be aware of these aspects. This work shows how users data on social networks can be retrieved easily by representing a clear privacy violation. Our research aims to improve the user’s awareness concerning the spreading and managing of social networks data. To this end, we highlighted all the statistical evaluations made over the gathered data for putting in evidence the privacy issues.
Publisher
Springer Science and Business Media LLC
Subject
Information Systems and Management,Computer Networks and Communications,Hardware and Architecture,Information Systems
Reference37 articles.
1. Breve B, Caruccio L, Cirillo S, Desiato D, Deufemia V, Polese G. Enhancing user awareness during internet browsing. In: ITASEC, 2020;pp. 71–81.
2. Cirillo S, Desiato D, Breve B. Chravat-chronology awareness visual analytic tool. In: 2019 23rd International Conference Information Visualisation (IV), 2019;pp. 255–260. IEEE.
3. García-Sánchez F, Colomo-Palacios R, Valencia-García R. A social-semantic recommender system for advertisements. Inf Proc Manag. 2020;57(2):102153.
4. Choi J, Yoon J, Chung J, Coh B-Y, Lee J-M. Social media analytics and business intelligence research: a systematic review. Inf Proc Manag. 2020;57(6):102279.
5. Desiato D. A methodology for gdpr compliant data processing. In: SEBD 2018.
Cited by
32 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献