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A framework for detecting injected influence attacks on microblog websites using change detection techniques

机译:使用变更检测技术检测对微博网站的注入影响攻击的框架

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Presidential elections can impact world peace, global economics, and overall well-being. Recent news indicates that fraud on the Web has played a substantial role in elections, particularly in developing countries in South America and the public discourse, in general. To protect the trustworthiness of the Web, in this paper, we present a novel framework using statistical techniques to help detect veiled Web fraud attacks in Online Social Networks (OSN). Specific examples are used to demonstrate how some statistical techniques, such as the Kalman Filter and the modified CUSUM, can be applied to detect various attack scenarios. A hybrid data set, consisting of both real user tweets collected from Twitter and simulated fake tweets is constructed for testing purposes. The efficacy of the proposed framework has been verified by computing metrics, such as Precision, Recall, and Area Under the ROC curve. The algorithms achieved up to 99.9% accuracy in some scenarios and are over 80% accurate for most of the other scenarios.
机译:总统选举会影响世界和平,全球经济和整体福祉。最新消息表明,网络欺诈在选举中发挥了重要作用,特别是在南美的发展中国家和一般的公众话语中。为了保护Web的可信度,在本文中,我们提出了一种使用统计技术的新颖框架,以帮助检测在线社交网络(OSN)中隐蔽的Web欺诈攻击。使用特定示例来说明如何将某些统计技术(例如卡尔曼滤波器和改进的CUSUM)应用于检测各种攻击情形。构建了一个混合数据集,其中包含从Twitter收集的真实用户推文和模拟的虚假推文,以进行测试。通过计算度量标准(例如精度,召回率和ROC曲线下面积)已经验证了所提出框架的有效性。在某些情况下,该算法可达到99.9%的精度,而在大多数其他情况下,则可达到80%以上的精度。

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