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Hazarika, D., Poria, S., Zadeh, A., Cambria, E., Morency, L. and Zimmermann, R. (2018) Conversational Memory Network for Emotion Recognition in Dyadic Dialogue Videos. Proceedings of the 2018 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies, Volume 1 (Long Papers), New Orleans, 1-6 June 2018, 2122-2132.
https://doi.org/10.18653/v1/n18-1193
has been cited by the following article:
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TITLE:
Emoti-Shing: Detecting Vishing Attacks by Learning Emotion Dynamics through Hidden Markov Models
AUTHORS:
Virgile Simé Nyassi, Franklin Tchakounté, Blaise Omer Yenké, Duplex Elvis Houpa Danga, Magnuss Dufe Ngoran, Jean Louis Kedieng Ebongue Fendji
KEYWORDS:
Social Engineering, Hidden Markov Model, Vishing, Voice Mining
JOURNAL NAME:
Journal of Intelligent Learning Systems and Applications,
Vol.16 No.3,
August
30,
2024
ABSTRACT: This study examines vishing, a form of social engineering scam using voice communication to deceive individuals into revealing sensitive information or losing money. With the rise of smartphone usage, people are more susceptible to vishing attacks. The proposed Emoti-Shing model analyzes potential victims’ emotions using Hidden Markov Models to track vishing scams by examining the emotional content of phone call audio conversations. This approach aims to detect vishing scams using biological features of humans, specifically emotions, which cannot be easily masked or spoofed. Experimental results on 30 generated emotions indicate the potential for increased vishing scam detection through this approach.