查看哪个:广播电子邮件的个性化优先级

Beidou Wang, M. Ester, Jiajun Bu, Yu Zhu, Ziyu Guan, Deng Cai
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引用次数: 24

摘要

电子邮件是当今最重要的沟通工具之一,但由于大量不重要或不相关的电子邮件而导致的电子邮件过载每年造成数万亿美元的经济损失。因此,个性化的邮件优先排序算法是迫切需要的。尽管之前在这个主题上做了很多努力,但广播电子邮件作为一种重要的电子邮件类型,在以前的文献中被忽视了。广播邮件与普通邮件有很大的不同,它带来了新的挑战和机遇。一方面,缺乏真正的发件人和有限的用户交互使传统的电子邮件优先排序算法所利用的关键功能失效;另一方面,一封广播邮件有成千上万的收件人,这使我们有机会通过协同过滤来预测邮件的重要性。然而,广播邮件面临着严重的冷启动问题,阻碍了协同过滤的直接应用。在本文中,我们通过设计一种新的主动学习模型,提出了广播电子邮件优先级的第一个框架,该模型考虑了广播电子邮件的协同过滤、隐式反馈和时间敏感响应特性。我们的方法在三星电子的大规模真实工业数据集上进行了彻底的评估。我们的方法被证明是非常有效的,并且优于最先进的个性化电子邮件优先级方法。
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Which to View: Personalized Prioritization for Broadcast Emails
Email is one of the most important communication tools today, but email overload resulting from the large number of unimportant or irrelevant emails is causing trillion-level economy loss every year. Thus personalized email prioritization algorithms are of urgent need. Despite lots of previous effort on this topic, broadcast email, an important type of email, is overlooked in previous literature. Broadcast emails are significantly different from normal emails, introducing both new challenges and opportunities. On one hand, lack of real senders and limited user interactions invalidate the key features exploited by traditional email prioritization algorithms; on the other hand, thousands of receivers for one broadcast email bring us the opportunity to predict importance through collaborative filtering. However, broadcast emails face a severe cold-start problem which hinders the direct application of collaborative filtering. In this paper, we propose the first framework for broadcast email prioritization by designing a novel active learning model that considers the collaborative filtering, implicit feedback and time sensitive responsiveness features of broadcast emails. Our method is thoroughly evaluated on a large scale real world industrial dataset from Samsung Electronics. Our method is proved highly effective and outperforms state-of-the-art personalized email prioritization methods.
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