Email Clustering & Generating Email Templates Based on Their Topics

Fatih Coşkun, C. Gezer, V. C. Gungor
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引用次数: 0

Abstract

Email templates have a significant impact on users in terms of productivity. Using an email template that is produced successfully is going to transfer the main information with a considerable impression. While the previous studies were focused on the email generation by text-differences in the content of the emails, generated templates based on email topics can provide better productivity for the companies. This article proposes a system, in which user emails are clustered according to the topics of the emails, and introduces an email template generation system that utilizes the sample emails belonging to the formed email clusters. For this purpose, the Enron email dataset has been used and the performance of different text preprocessing and topic modeling algorithms, such as DMM, GPU-DMM, GPU-PDMM, LF-DMM, LDA, LF-LDA, BTM, WNTM, PTM, SATM, have been investigated and compared to determine the most efficient one. After obtaining the email topics, the system shows the examples of the emails representing the selected topics and enables the authorized users to create templates that generalize these topics.
电子邮件聚类&基于主题生成电子邮件模板
电子邮件模板对用户的工作效率有很大的影响。使用一个制作成功的电子邮件模板可以传递主要信息,给人留下深刻的印象。虽然以前的研究主要集中在电子邮件内容的文本差异生成电子邮件,但基于电子邮件主题生成的模板可以为公司提供更好的生产力。本文提出了一个根据邮件主题对用户邮件进行聚类的系统,并介绍了一个利用聚类后的邮件样本生成邮件模板的系统。为此,我们使用了安然电子邮件数据集,并对不同文本预处理和主题建模算法(如DMM、GPU-DMM、GPU-PDMM、LF-DMM、LDA、LF-LDA、BTM、WNTM、PTM、SATM)的性能进行了研究和比较,以确定最有效的算法。获取邮件主题后,系统将显示代表所选主题的邮件示例,并允许授权用户创建泛化这些主题的模板。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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