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Mining Interaction Behaviors for Email Reply Order Prediction

机译:用于电子邮件回复订单预测的挖掘交互行为

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In email networks, user behaviors affect the way emails are wit and replied.. While knowing these user behaviors can help to create more intelligent email services, there has not been much research into mining these behaviors. In this paper, we investigate user engagingness and responsiveness as two interaction behaviors that give us useful insights into how users email one another. Engaging users are those who can effectively solicit responses from other users. Responsive users are those who are willing to respond to other users. By modeling such behaviors, we are able, to mine them and to identify engaging or responsive users. This paper proposes four types of models to quantify engagingness and responsiveness of users. These behaviors can be used as features in the email reply order prediction task which predicts the email reply order given an email pair. Our experiments show that engagingness and responsiveness behavior features are more useful than other non-behavior features in building a classifier for the email reply order prediction task. When combining behavior and non-behavior features, our classifier is also shown to predict the-email reply order with good accuracy.
机译:在电子邮件网络中,用户行为影响电子邮件的机智和回复方式。在知道这些用户行为可以帮助创建更智能的电子邮件服务时,挖掘这些行为并没有太多的研究。在本文中,我们调查了用户的参与度和响应性,作为两个交互行为,使我们有用的见解如何互相电子邮件。参与用户是能够有效地征求其他用户响应的用户。响应用户是那些愿意回应其他用户的用户。通过建模此类行为,我们能够挖掘它们并识别参与或响应用户。本文提出了四种类型的模型来量化用户的参与度和响应性。这些行为可以用作电子邮件回复订单预测任务中的特征,该任务预测给给给给给给给给给给定电子邮件对的电子邮件回复顺序。我们的实验表明,参与和响应性行为特征比构建用于电子邮件回复订单预测任务的分类器中的其他非行为功能更有用。在组合行为和非行为功能时,我们的分类器也会显示以良好的准确度预测电子邮件回复订单。

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