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This article is cited in 3 scientific papers (total in 3 papers)
Machine learning-based malicious users' detection in the VKontakte social network
D. I. Samokhvalov National Research University Higher School of Economics
Abstract:
This paper presents a machine learning-based approach for detection of malicious users in the largest Russian online social network VKontakte. An exploratory data analysis was conducted to determine the insights and anomalies in a dataset consisted of 42394 malicious and 241035 genuine accounts. Furthermore, a tool for automated collection of the information about malicious accounts in the VKontakte online social network was developed and used for the dataset collection, described in this research. A baseline feature engineering was conducted and the CatBoost classifier was used to build a classification model. The results showed that this model can identify malicious users with an overall 0.91 AUC-score validated with 4-folds cross-validation approach.
Keywords:
VKontakte, malicious users, machine learning, social networks, classification models.
Citation:
D. I. Samokhvalov, “Machine learning-based malicious users' detection in the VKontakte social network”, Proceedings of ISP RAS, 32:3 (2020), 109–117
Linking options:
https://www.mathnet.ru/eng/tisp517 https://www.mathnet.ru/eng/tisp/v32/i3/p109
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Abstract page: | 155 | Full-text PDF : | 95 | References: | 34 |
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