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Improving Text Models with Latent Feature Vector Representations

机译:用潜在特征向量表示改进文本模型

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Probabilistic topic models are widely used to discover potential topics in a collection of documents, while latent feature vector representations have been used to achieve high performance in many NLP tasks. In this paper, we first make document topic vector representations by combining LDA and Topic2Vec, and then we perform document representations based on the topic vectors and the document vectors obtained through Doc2Vec training. Experimental results show that our new model has produced significant improvements in topic consistency and document classification tasks.
机译:概率主题模型被广泛用于发现文档集中的潜在主题,而潜在特征矢量表示已被用于在许多NLP任务中实现高性能。在本文中,我们首先通过结合LDA和Topic2Vec来制作文档主题向量表示,然后基于主题向量和通过Doc2Vec训练获得的文档向量来执行文档表示。实验结果表明,我们的新模型在主题一致性和文档分类任务方面取得了显着改善。

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