基于活动的主题发现

Dandan Zhu, Yusuke Fukazawa, Eleftherios Karapetsas, J. Ota
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引用次数: 3

摘要

开发了一个能够将词对分配给相关主题的主题模型,以探索人们的活动。考虑到以动词为主导的词对形式比单独的词更能有效地表达人们的活动,我们将词连接模型纳入平滑的Latent Dirichlet Allocation LDA中,以确保词能很好地配对并分配到相关的主题上。为了定量和定性地评估所提出的模型,以Twitter帖子为数据源构建了两个数据集:愿望相关数据集和地理信息相关数据集。使用愿望相关数据集的实验结果表明,词的相关性在形成合理的词对中起着关键作用,所提出的词对生成潜狄利克雷分配wpLDA模型具有良好的聚类性能。使用地理信息相关数据集获得的结果表明,所提出的模型可以很好地用于发现人们的活动,其中活动可以理解地以直观的特征表示。
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Activity-based topic discovery
A topic model capable of assigning word pairs to associated topics is developed to explore people's activities. Considering that the form of word pairs led by verbs is a more effective way to express people's activities than separate words, we incorporate the word-connection model into the smoothed Latent Dirichlet Allocation LDA to ensure that the words are well paired and assigned to the associated topics. To quantitatively and qualitatively evaluate the proposed model, two datasets were built using Twitter posts as data sources: the wish-related and the geographical information-related datasets. The experiment results using the wish-related dataset indicate that the relatedness of words plays a key role in forming reasonable pairs, and the proposed model, word-pair generative Latent Dirichlet Allocation wpLDA, performs well in clustering. Results obtained using the geographical information-related dataset demonstrate that the proposed model works well for discovering people's activities, in which the activities are understandably represented with an intuitive character.
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