检测 Vkontakte 社交网络中的恶意机器人并评估其参数的方法

A. Chechulin, M. Kolomeets
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引用次数: 0

摘要

社交网络中新型机器人的出现及其模仿真实用户自然行为能力的提高,是社交网络和在线社区保护领域的一个重大问题。本文提出了一种在社交网络 "VKontakte "中检测和评估机器人参数的新方法。该方法的基础是使用 "控制购买 "机器人的方法创建数据集,从而评估机器人的价格、质量和行动速度等特征,并使用图灵测试评估用户对机器人的信任程度。结合传统的机器学习方法以及从交互图、文本信息和统计分布中提取的特征,不仅可以准确检测机器人,还能预测其特征。本文证明,基于所提方法训练的机器学习模型对不平衡数据具有鲁棒性,并且能够识别大多数类型的机器人,因为它与机器人的主要特征只有很小的相关性。所提出的方法可用于选择保护社交网络的应对措施和历史分析,不仅能确认机器人的存在,还能确定攻击的具体特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approach to Detecting Malicious Bots in the Vkontakte Social Network and Assessing Their Parameters
The emergence of new varieties of bots in social networks and the improvement of their capabilities to imitate the natural behavior of real users represent a significant problem in the field of protection of social networks and online communities. This paper proposes a new approach to detecting and assessing the parameters of bots within the social network «VKontakte». The basis of the proposed approach is the creation of datasets using the method of «controlled purchase» of bots, which allows one to assess bots’ characteristics such as price, quality, and speed of action of bots, and using the Turing Test to assess how much users trust bots. In combination with traditional machine learning methods and features extracted from interaction graphs, text messages, and statistical distributions, it becomes possible to not only detect bots accurately but also predict their characteristics. This paper demonstrates that the trained machine learning model, based on the proposed approach, is robust to imbalanced data and can identify most types of bots as it has only a minor correlation with their main characteristics. The proposed approach can be used within the choice of countermeasures for the protection of social networks and for historical analysis, which allows not only to confirm the presence of bots but also to characterize the specifics of the attack.
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