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Detection of Criminally Convicted Email Users by Behavioral Dissimilarity

机译:通过行为不相似检测刑事定罪的电子邮件用户

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The phenomenon of social interactions is prevailing charismatically like a spider net in nowadays society despite the people busy lives. In this fashion, people willingly supply their private or public data without sensing the threat of any information theft. These kinds of information could be easily misused and could be analyzed by any third party for malicious or non-malicious purposes. In this paper, detection of irregular or anomalous individual are focused. Individual with behavioral dissimilarity are discovered and validated with the real denounced victims. An affluent feature set of 15 characteristics is anticipated for deviation detection. The kth nearest neighbour technique is applied on the Enron dataset for finding accused email users. Noteworthy outputs are achieved by implication of the KNN method.
机译:尽管人们忙碌的生活,社会互动现象就像在当今社会中的蜘蛛网一样竞争。 在这种方式,人们愿意提供私人或公共数据,而不感知任何信息盗窃的威胁。 这些信息可以很容易地滥用,并且可以通过任何第三方分析恶意或非恶意目的。 在本文中,重点检测不规则或异常个体。 发现并验证了具有行为不相似性的个体,并用真正的谴责的受害者验证。 预计15个特征组的富裕特征组对于偏差检测。 kth最接近的邻技术应用于Enron DataSet以查找被控电子邮件用户。 值得注意的输出通过暗示KNN方法来实现。

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