基于自然语言处理的学术文本聚类

Salimkan Fatma Taşkiran, Ersin Kaya
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引用次数: 0

摘要

现在访问数据非常容易。然而,为了有效地使用这些数据,有必要从中获取正确的信息。对这些数据进行分类,以便在短时间内获得所需的信息,提供了极大的便利。此外,在进行学术领域的研究时,通常会使用基于文本的数据,如文章、论文或论文研究。使用自然语言处理和机器学习方法从这些基于文本的数据中获得我们需要的正确信息。在本研究中,学术论文的摘要被聚类。使用自然语言处理技术对学术论文摘要中的文本数据进行预处理。利用Word2Vec和BERT词嵌入和词表示对预处理数据进行矢量化,并采用四种聚类算法进行聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ACADEMIC TEXT CLUSTERING USING NATURAL LANGUAGE PROCESSING
Accessing data is very easy nowadays. However, to use these data in an efficient way, it is necessary to get the right information from them. Categorizing these data in order to reach the needed information in a short time provides great convenience. All the more, while doing research in the academic field, text-based data such as articles, papers, or thesis studies are generally used. Natural language processing and machine learning methods are used to get the right information we need from these text-based data. In this study, abstracts of academic papers are clustered. Text data from academic paper abstracts are preprocessed using natural language processing techniques. A vectorized word representation extracted from preprocessed data with Word2Vec and BERT word embeddings and representations are clustered with four clustering algorithms.
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