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Augmenting topic models with user relations in context based communication services

机译:在基于上下文的通信服务中通过用户关系增强主题模型

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Context-based communication services analyze user data and offer new and novel services that enhance end user unified communication experience. These services rely on data analysis and machine learning techniques to predict user behavior. In this paper we look at topic modeling as an unsupervised learning tool to categorize user communication data for retrieval. However, modeling topics based on user communication data, such as emails, meetings, invites, etc, poses several interesting challenges. One challenge is that user communication, even for a single topic, varies with the current context of the participating users. Other challenges include low lexical content and high contextual data in communication corpus. Hence, relying primarily on lexical analysis could result in inferior topic models. In this paper, we look at this problem of modeling topics for documents based on user communication. First, we use Latent Dirichlet Allocation (LDA) for extracting topics. LDA models documents as a mixture of latent topics where each topic consists of a probabilistic distribution over words. Then we use a technique that overlays a user-relational model over the lexical topic model generated by LDA. In this paper, we present our work and discuss our results.
机译:基于上下文的通信服务会分析用户数据,并提供可增强最终用户统一通信体验的新颖服务。这些服务依赖于数据分析和机器学习技术来预测用户行为。在本文中,我们将主题建模视为一种无监督的学习工具,用于对用户通信数据进行分类以进行检索。但是,基于用户通信数据(例如电子邮件,会议,邀请等)对主题进行建模会带来一些有趣的挑战。一个挑战是,即使对于单个主题,用户交流也会随参与用户的当前上下文而变化。其他挑战包括沟通语料库中的词汇量少和上下文数据多。因此,主要依靠词法分析可能会导致主题模型的质量下降。在本文中,我们研究了基于用户交流为文档主题建模的问题。首先,我们使用潜在Dirichlet分配(LDA)提取主题。 LDA将文档建模为潜在主题的混合,其中每个主题都包含单词的概率分布。然后,我们使用一种将用户关系模型覆盖在LDA生成的词汇主题模型上的技术。在本文中,我们介绍了我们的工作并讨论了我们的结果。

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