Unsupervised Keyword Extraction Method Based on Chinese Patent Clustering

Yuxin Xie, Xuegang Hu, Yuhong Zhang, Shi Li
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引用次数: 2

Abstract

Recently, patent data analysis has attracted a lot of attention, and patent keyword extraction is a hot problem. Most existing methods for patent keyword extraction are based on the frequency of words without semantic information. In this paper, we propose an Unsupervised Keyword Extraction Method (UKEM) based on Chinese patent clustering. More specifically, we use a Skip-gram model to train word embeddings based on a Chinese patent corpus. Then each patent is represented as a vector called patent vector. These patent vectors are clustered to obtain several cluster centroids. Next, the distance between each word vector in patent abstract and cluster centroid is computed to indicate the semantic importance of this word. The experimental results on several Chinese patent datasets show that the performance of our proposed method is better than several competitive methods.
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基于中文专利聚类的无监督关键字提取方法
近年来,专利数据分析备受关注,其中专利关键词提取是一个热点问题。现有的专利关键词提取方法大多是基于没有语义信息的词的频率。本文提出了一种基于中文专利聚类的无监督关键字提取方法。更具体地说,我们使用Skip-gram模型来训练基于中文专利语料库的词嵌入。然后将每个专利表示为称为专利矢量的矢量。对这些专利向量进行聚类,得到多个聚类质心。其次,计算专利摘要中每个词向量与聚类质心之间的距离,以表示该词的语义重要性。在多个中国专利数据集上的实验结果表明,该方法的性能优于几种竞争方法。
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