基于文档邻接矩阵的无监督学习关键字提取

Eirini Papagiannopoulou, Grigorios Tsoumakas, A. Papadopoulos
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引用次数: 6

摘要

这项工作重新审视了词图给出的信息,并通过基于图的排名方法在关键字提取的背景下对其进行了典型的利用。最近,众所周知的基于图的方法通常在通过流行的中心性度量(例如PageRank)在排名过程中使用来自词向量表示的知识,而不给予向量分布的主要作用。我们考虑与目标文本文档的词图对应的邻接矩阵作为其词汇表的向量表示。我们提出使用无监督(学习)算法对邻接矩阵进行基于分布的建模。与最先进的基于图的建模方法相比,基于分布的建模方法的有效性得到了根据F1分数进行的广泛实验研究的证实。我们的代码可以在GitHub上找到。
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Keyword Extraction Using Unsupervised Learning on the Document’s Adjacency Matrix
This work revisits the information given by the graph-of-words and its typical utilization through graph-based ranking approaches in the context of keyword extraction. Recent, well-known graph-based approaches typically employ the knowledge from word vector representations during the ranking process via popular centrality measures (e.g., PageRank) without giving the primary role to vectors’ distribution. We consider the adjacency matrix that corresponds to the graph-of-words of a target text document as the vector representation of its vocabulary. We propose the distribution-based modeling of this adjacency matrix using unsupervised (learning) algorithms. The efficacy of the distribution-based modeling approaches compared to state-of-the-art graph-based methods is confirmed by an extensive experimental study according to the F1 score. Our code is available on GitHub.
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