基于关键词相关性的文章检索与图像标注

Shu-Chen Cheng, Chun Lu
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引用次数: 0

摘要

当用户在搜索引擎中输入关键字时,会检索到大量的搜索结果。然而,由于结果过多,用户很难学习,因为它难以阅读。本研究建立一个计算机科学相关文章的资讯检索系统。首先通过运行网络爬虫收集文章,然后使用TF-IDF (Term Frequency- inverse Document Frequency)方法提取关键词,获取文章的重点。利用关联规则和余弦相似度,根据文章的相关性进行分类。最后,根据用户的反馈,系统提供适当的资源,以提高学习的动机和意愿。此外,文章中的图片也是分析文章的依据。本研究采用图像语义分析对图片进行标注,以提高文章分析的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Retrieving Articles and Image Labeling Based on Relevance of Keywords
When users input keywords into the search engine, a massive search results will be retrieved. However, it becomes difficult for the users to learn as it is unreadable with the excessive amount of results. This study establishes an information retrieval system for computer science related articles. It firstly collects articles by running a web crawler, and uses TF-IDF (Term Frequency-Inverse Document Frequency) method to extract keywords to acquire the focus of the article. And with the use of association rules and cosine similarity, the articles are classified by their relevance. Finally, according to users' feedbacks, the system provides appropriate resources to improve the motivation and willingness to learn. In addition, the pictures in the articles are also a basis for analyzing the articles. This study uses image semantic analysis to label the pictures so as to improve the accuracy in analyzing the articles.
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