User identification across online social networks in practice: pitfalls and solutions
Abstract
To take advantage of the full range of services that online social networks (OSNs) offer, people commonly open several accounts on diverse OSNs where they leave lots of different types of profile information. The integration of these pieces of information from various sources can be achieved by identifying individuals across social networks. In this article, we address the problem of user identification by treating it as a classification task. Relying on common public attributes available through the official application programming interface (API) of social networks, we propose different methods for building negative instances that go beyond usual random selection so as to investigate the effectiveness of each method in training the classifier. Two test sets with different levels of discrimination are set up to evaluate the robustness of our different classifiers. The effectiveness of the approach is measured in real conditions by matching profiles gathered from Google+, Facebook and Twitter.Citation
Esfandyari A, Zignani M, Gaito S, Rossi GP (2018) 'User identification across online social networks in practice: pitfalls and solutions', Journal of Information Science, 44 (3), pp.377-391.Publisher
SAGEJournal
Journal of Information ScienceAdditional Links
https://journals.sagepub.com/doi/abs/10.1177/0165551516673480Type
ArticleLanguage
enISSN
0165-5515EISSN
1741-6485ae974a485f413a2113503eed53cd6c53
10.1177/0165551516673480