通过学习用户活动的On- and - Off-topic特征,在特定事件中突出用户检测

Imen Bizid, Nibal Nayef, P. Boursier, Sami Faïz, Jacques Morcos
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引用次数: 18

摘要

微博(如Twitter)的特点是用户在重大事件期间分享的信息的丰富性和近时性。然而,由于微博中共享的大量非结构化数据流,自动挖掘信息或用户共享某些信息是非常具有挑战性的。这项工作提出了一个排序和分类模型,用于识别在指定事件中共享有用信息的用户。该模型基于一组新颖的特征,可以实时计算。这些功能的设计使它们考虑到用户的主题活动和非主题活动。一旦用户被特征向量表征,监督机器学习工具就会被训练成将用户分类为突出或不突出。我们的模型已经在洪水灾害事件中共享的数据上进行了测试,并且表现非常好。所取得的结果表明,所提出的模型对于此类事件中突出用户的分类和排名是有效的,同时也表明了在描述用户活动时,非主题特征对主题特征的调整的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prominent users detection during specific events by learning On- and Off-topic features of user activities
Microblogs such as Twitter are characterized by the richness and recency of information shared by their users during major events. However, it is very challenging to automatically mine for information or for users sharing certain information due to the huge variety of unstructured stream of data shared in such microblogs. This work proposes a ranking and classification model for identifying users sharing useful information during a specified event. The model is based on a novel set of features that can be computed in real time. These features are designed such that they take into account both the on and off-topic activities of a user. Once users are characterized by a feature vector, supervised machine learning tool is trained to classify users as either prominent or not. Our model has been tested on data shared during a flooding disaster event and performed very well. The achieved results show the effectiveness of the proposed model for both the classification and ranking of prominent users in such events, and also the importance of the adjustment of the on-topic features by the off-topic ones when describing users' activities.
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