用语义图检测文本主题

A. Romanova
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引用次数: 1

摘要

在单词嵌入过程和图形连接点和表示实体之间复杂相关性的能力之间建立桥梁,对文档主题分析是有益的。在本研究中,我们考察了构建语义图模型、查找文档主题和验证主题发现的过程。我们介绍了一个新的Word2Vec2Graph模型,它建立在Word2Vec单词嵌入模型的基础上。我们演示了如何使用此模型来分析长文档,并将文档主题作为图簇来揭示。为了验证主题发现方法,我们将单词转换为向量,将向量转换为图像,并使用深度学习图像分类。
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Detect Text Topics by Semantics Graphs
It is beneficial for document topic analysis to build a bridge between word embedding process and graph capacity to connect the dots and represent complex correlations between entities. In this study we examine processes of building a semantic graph model, finding document topics and validating topic discovery. We introduce a novel Word2Vec2Graph model that is built on top of Word2Vec word embedding model. We demonstrate how this model can be used to analyze long documents and uncover document topics as graph clusters. To validate topic discovery method we transfer words to vectors and vectors to images and use deep learning image classification.
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