A N-gram based approach to auto-extracting topics from research articles
A lot of manual work goes into identifying a topic for an article. With a large volume of articles, the manual process can be exhausting. Our approach aims to address this issue by automatically extracting topics from the text of large numbers of articles. This approach takes into account the effici...
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my.um.eprints.410232023-08-30T03:09:48Z http://eprints.um.edu.my/41023/ A N-gram based approach to auto-extracting topics from research articles Zhu, Linkai Wang, Wennan Huang, Maoyi Chen, Maomao Wang, Yiyun Cai, Zhiming QA75 Electronic computers. Computer science A lot of manual work goes into identifying a topic for an article. With a large volume of articles, the manual process can be exhausting. Our approach aims to address this issue by automatically extracting topics from the text of large numbers of articles. This approach takes into account the efficiency of the process. Based on existing N-gram analysis, our research examines how often certain words appear in documents in order to support automatic topic extraction. In order to improve efficiency, we apply custom filtering standards to our research. Additionally, delete as many noncritical or irrelevant phrases as possible. In this way, we can ensure we are selecting unique keyphrases for each article, which capture its core idea1. For our research, we chose to center on the autonomous vehicle domain, since the research is relevant to our daily lives. We have to convert the PDF versions of most of the research papers into editable types of files such as TXT. This is because most of the research papers are only in PDF format. To test our proposed idea of automating, numerous articles on robotics have been selected. Next, we evaluate our approach by comparing the result with other models. IOS Press 2022 Article PeerReviewed Zhu, Linkai and Wang, Wennan and Huang, Maoyi and Chen, Maomao and Wang, Yiyun and Cai, Zhiming (2022) A N-gram based approach to auto-extracting topics from research articles. Journal of Intelligent & Fuzzy Systems, 43 (5). pp. 6137-6146. ISSN 1064-1246, DOI https://doi.org/10.3233/JIFS-220115 <https://doi.org/10.3233/JIFS-220115>. 10.3233/JIFS-220115 |
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QA75 Electronic computers. Computer science Zhu, Linkai Wang, Wennan Huang, Maoyi Chen, Maomao Wang, Yiyun Cai, Zhiming A N-gram based approach to auto-extracting topics from research articles |
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A lot of manual work goes into identifying a topic for an article. With a large volume of articles, the manual process can be exhausting. Our approach aims to address this issue by automatically extracting topics from the text of large numbers of articles. This approach takes into account the efficiency of the process. Based on existing N-gram analysis, our research examines how often certain words appear in documents in order to support automatic topic extraction. In order to improve efficiency, we apply custom filtering standards to our research. Additionally, delete as many noncritical or irrelevant phrases as possible. In this way, we can ensure we are selecting unique keyphrases for each article, which capture its core idea1. For our research, we chose to center on the autonomous vehicle domain, since the research is relevant to our daily lives. We have to convert the PDF versions of most of the research papers into editable types of files such as TXT. This is because most of the research papers are only in PDF format. To test our proposed idea of automating, numerous articles on robotics have been selected. Next, we evaluate our approach by comparing the result with other models. |
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Article |
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Zhu, Linkai Wang, Wennan Huang, Maoyi Chen, Maomao Wang, Yiyun Cai, Zhiming |
author_facet |
Zhu, Linkai Wang, Wennan Huang, Maoyi Chen, Maomao Wang, Yiyun Cai, Zhiming |
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Zhu, Linkai |
title |
A N-gram based approach to auto-extracting topics from research articles |
title_short |
A N-gram based approach to auto-extracting topics from research articles |
title_full |
A N-gram based approach to auto-extracting topics from research articles |
title_fullStr |
A N-gram based approach to auto-extracting topics from research articles |
title_full_unstemmed |
A N-gram based approach to auto-extracting topics from research articles |
title_sort |
n-gram based approach to auto-extracting topics from research articles |
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IOS Press |
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2022 |
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http://eprints.um.edu.my/41023/ |
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13.211869 |