Author :
Roffo, Giorgio ; Cristani, Matteo ; Bazzani, Loris ; Ha Quang Minh ; Murino, Vittorio
Abstract :
Identity safekeeping on chats has recently become an important problem on social networks. One of the most important issues is identity theft, where impostors steal the identity of a person, substituting her in the chats, in order to have access to private information. In the literature, the problem has been addressed by designing sets of features which capture the way a person interacts through the chats. However, such approaches perform well only on the long term, after a long conversation has been performed, this is a problem, since in the early turns of a conversation, much important information can be stolen. This paper focuses on this issue, presenting a learning approach which boosts the performance of user recognition and verification, allowing to recognize a subject with considerable accuracy. The proposed method is based on a recent framework of one-shot multi-class multi-view learning, based on Reproducing Kernel Hilbert Spaces (RKHS) theory. Our technique reaches a recognition rate of 76.9% in terms of AUC of the Cumulative Matching Characteristic curve, with only 10 conversational turns considered, on a total of 78 subjects. This sets the new best performances on a public conversation benchmark.
Keywords :
Hilbert spaces; computer crime; learning (artificial intelligence); social networking (online); AUC; RKHS; Skype trusting; chat; cumulative matching characteristic curve; identity theft; learning approach; one-shot multiclass multiview learning; public conversation benchmark; reproducing kernel Hilbert space theory; safekeeping identification; social networks; user recognition; user verification; Accuracy; Feature extraction; Kernel; Probes; Testing; Training; Vectors; Authorship Attribution; Authorship Verification; Biometry; Chat; Instant Messaging; Social Media; Stylometry;