User activity profiling with multi-layer analysis

Hongxia Jin
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引用次数: 1

Abstract

In this paper, we are interested in discovering semantically meaningful communities from a single user's perspective. We define a multi-layer analysis problem to derive a user's activity profile. Such an activity profile would include what activity areas a user is involved with, how important each activity is to the user, and who else is involved with the user on each activity as well as each participant's participation level. We believe a semantically meaningful community (corresponding to an activity area) must also consider the topics of the social messages rather than only the social links. While it is possible to use a hybrid approach based on traditional topic modeling, in this paper we propose a unified user modeling approach based on direct clustering over the social messages taking into considerations of both social connections and topics of social messages. Our clustering algorithm can be performed in a unified way in a unsupervised fashion as well as semi-supervised fashion when the user wants to give our algorithm some seeding inputs on his viewpoints. Moreover, when the new data comes, our algorithm can perform incremental updates on the new data without re-clustering the old data. Our experiments on social media datasets available from both within an enterprise and public social network demonstrate the effectiveness of our approach.
用户活动分析与多层分析
在本文中,我们感兴趣的是从单个用户的角度发现语义上有意义的社区。我们定义了一个多层分析问题来导出用户的活动概况。这样的活动概况将包括用户参与的活动区域,每个活动对用户的重要性,以及在每个活动中与用户参与的其他人以及每个参与者的参与水平。我们认为,一个语义上有意义的社区(对应于一个活动区域)也必须考虑社会信息的主题,而不仅仅是社会链接。虽然可以使用基于传统主题建模的混合方法,但在本文中,我们提出了一种基于社交消息的直接聚类的统一用户建模方法,同时考虑了社交消息的社交关系和主题。当用户希望给我们的算法提供一些关于他的观点的播种输入时,我们的聚类算法可以以一种无监督的方式和半监督的方式统一执行。此外,当新数据出现时,我们的算法可以在不重新聚类旧数据的情况下对新数据进行增量更新。我们对来自企业和公共社交网络的社交媒体数据集进行的实验证明了我们方法的有效性。
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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