Topic Recognition and Correlation Analysis of Articles in Computer Science

Hitha K C, Kiran V K
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引用次数: 4

Abstract

Topic identification and similarity detection are two related essential task in data mining, information retrieval, and bibliometric data analysis, which aims to identify significant topics and to find similarity between text collections.It is an essential activity to identify research papers according to their research topics to enhance their retrievability, help create smart analytics, and promote a range of approaches to evaluating the research environment and making sense of it.The proposed frame work deals with three main steps: text extraction, topic identification, and similarity detection.The PyPDF2 module is used to extract text from pdf file. CSO classifier is used for topic identification and similarity between documents is calculated using different models, such as Tf-Idf, Bert, Glove, Word2vec, and Doc2vec.and compared these models with respect to cosine similarity and Eucleadian distance obtained from these models.
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计算机科学论文的主题识别与相关性分析
主题识别和相似度检测是数据挖掘、信息检索和文献计量数据分析中的两项重要任务,其目的是识别重要的主题和发现文本集合之间的相似度。根据研究主题识别研究论文是一项必要的活动,以增强其可检索性,帮助创建智能分析,并促进一系列评估研究环境和理解研究环境的方法。提出的框架处理三个主要步骤:文本提取、主题识别和相似度检测。PyPDF2模块用于从pdf文件中提取文本。CSO分类器用于主题识别,并使用不同的模型(如Tf-Idf、Bert、Glove、Word2vec和Doc2vec)计算文档之间的相似度。并将这些模型与余弦相似度和欧几里得距离进行比较。
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