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NPS-AntiClone: Identity Cloning Detection based on Non-Privacy-Sensitive User Profile Data

conference contribution
posted on 2024-11-03, 14:45 authored by Ahmed Alharbi, Hai DongHai Dong, Xun YiXun Yi, Galapita Abeysekara
Social sensing is a paradigm that allows crowd-sourcing data from humans and devices. This sensed data (e.g. social network posts) can be hosted in social-sensor clouds (i.e. social networks) and delivered as social-sensor cloud services (SocSen services). These services can be identified by their providers' social network accounts. Attackers intrude social-sensor clouds by cloning SocSen service providers' user profiles to deceive social-sensor cloud users. We propose a novel unsupervised SocSen service provider identity cloning detection approach, NPS-AntiClone, to prevent the detrimental outcomes caused by such identity deception. This approach leverages non-privacy-sensitive user profile data gathered from social networks to perform cloned identity detection. It consists of three main components: 1) a multi-view account representation model, 2) an embedding learning model and 3) a prediction model. The multi-view account representation model forms three different views for a given identity, namely a post view, a network view and a profile attribute view. The embedding learning model learns a single embedding from the generated multi-view representation using Weighted Generalized Canonical Correlation Analysis. Finally, NPS-AntiClone calculates the cosine similarity between two accounts' embedding to predict whether these two accounts contain a cloned account and its victim. We evaluated our proposed approach using a real-world dataset. The results showed that NPS-AntiClone significantly outperforms the existing state-of-the-art identity cloning detection techniques and machine learning approaches.

History

Start page

618

End page

628

Total pages

11

Outlet

Proceedings of the 2021 IEEE International Conference on Web Services (ICWS 2021)

Name of conference

ICWS 2021

Publisher

IEEE

Place published

United States

Start date

2021-09-05

End date

2021-09-11

Language

English

Copyright

© 2021 IEEE

Former Identifier

2006111326

Esploro creation date

2021-12-13

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