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Characterising Emergent Semantics in Twitter Lists

机译:在Twitter列表中表征新兴语义

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Twitter lists organise Twitter users into multiple, often overlapping, sets. We believe that these lists capture some form of emergent semantics, which may be useful to characterise. In this paper we describe an approach for such characterisation, which consists of deriving semantic relations between lists and users by analyzing the cooccurrence of keywords in list names. We use the vector space model and Latent Dirichlet Allocation to obtain similar keywords according to co-occurrence patterns. These results are then compared to similarity measures relying on WordNet and to existing Linked Data sets. Results show that co-occurrence of keywords based on members of the lists produce more synonyms and more correlated results to that of WordNet similarity measures.
机译:Twitter列表将Twitter用户组织成多个(通常是重叠的)集合。我们认为,这些列表捕获了某种形式的紧急语义,这可能有助于表征。在本文中,我们描述了一种用于表征的方法,该方法包括通过分析列表名称中关键字的同时出现来推导列表与用户之间的语义关系。我们使用向量空间模型和Latent Dirichlet分配来根据共现模式获得相似的关键字。然后将这些结果与依赖WordNet的相似性度量以及现有的链接数据集进行比较。结果表明,基于列表成员的关键字同时出现会产生更多的同义词,并且与WordNet相似性度量的结果相关性更高。

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