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Mining Latent Associations of Objects Using a Typed Mixture Model--A case study on expert/expertise mining

机译:使用键入的混合模型挖掘物体的潜在关联 - 以专家/专业挖掘为例

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This paper studies the problem of discovering latent associations among objects in text documents. Specifically, given two sets of objects and various types of co-occurrence data concerning the objects existing in texts, we aim to discover the hidden or latent associative relationships between the two sets of objects. Existing methods are not directly applicable as they are unable to consider all this information. For example, the probabilistic mixture model called Separable Mixture Model (SMM) proposed by Hofmann can use only one type of co-occurrences to mine latent associations. This paper proposes a more general probabilistic mixture model called the Typed Separable Mixture Model (TSMM), which is able to use all types of co-occurrences within a single framework. Experimental results based on the expert/expertise mining task show that TSMM outperforms SMM significantly.
机译:本文研究了在文本文件中发现对象之间的潜在关联的问题。具体地,给定两组对象和各种类型的关于文本中存在的对象的共同发生数据,我们的目标是发现两组对象之间的隐藏或潜在关联关系。现有方法不直接适用,因为它们无法考虑所有这些信息。例如,Hofmann提出的称为可分离混合物模型(SMM)的概率混合模型可以仅使用一种类型的级潜在关联的共同发生。本文提出了一种称为型号可分离混合物模型(TSMM)的更一般的概率混合模型,其能够在单个框架内使用所有类型的共同发生。基于专家/专业挖掘任务的实验结果表明,TSMM显着优于SMM。

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