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Classifying Organizational Roles Using Email Social Networks

机译:使用电子邮件社交网络对组织角色进行分类

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This paper addresses the problem of role classification, which is related to classifying and grouping email users into a collection of organizational roles. This classification can be used in designing modern email clients by adding an Inbox prioritizing feature that can predict the role of a sender to the recipient of an email. A comprehensive study has been done on the social network of the Enron dataset. For classifying organizational roles, a feature vector containing a set of social network metrics and interaction-based features reflecting users' engagingness and responsiveness in their community is created. After representing each role in this feature space, Expectation Maximization (EM) algorithm has been applied to evaluate the extracted feature set. In turn, a Neural Network classifier has been built based on the extracted features for classifying organizational roles that resulted in 63.57% of accuracy.
机译:本文解决了角色分类问题,它与将电子邮件用户分类和分组到组织角色的集合有关。此分类可用于通过添加收件箱优先级配置功能来设计现代电子邮件客户端,该功能可以预测发件人对电子邮件收件人的角色。在安康数据集的社交网络上已经完成了全面的研究。对于组织角色进行分类,创建了一个包含一组社交网络指标和反映用户在社区中的相互作用和响应性的基于交互的特征的特征向量。在该特征空间中代表每个角色后,已应用期望最大化(EM)算法来评估提取的特征集。反过来,基于提取的功能,构建了一个神经网络分类器,用于分类组织角色的提取功能,这些功能是导致精度的63.57%。

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