作者
Naseer Ahmed Sajid, Munir Ahmad, Atta-ur Rahman, Gohar Zaman, Mohammed Salih Ahmed, Nehad Ibrahim, Mohammed Imran B Ahmed, Gomathi Krishnasamy, Reem Alzaher, Mariam Alkharraa, Dania AlKhulaifi, Maryam AlQahtani, Asiya A Salam, Linah Saraireh, Mohammed Gollapalli, Rashad Ahmed
发表日期
2023/8/1
期刊
Computer Systems Science & Engineering
卷号
46
期号
2
简介
From the beginning, the process of research and its publication is an ever-growing phenomenon and with the emergence of web technologies, its growth rate is overwhelming. On a rough estimate, more than thirty thousand research journals have been issuing around four million papers annually on average. Search engines, indexing services, and digital libraries have been searching for such publications over the web. Nevertheless, getting the most relevant articles against the user requests is yet a fantasy. It is mainly because the articles are not appropriately indexed based on the hierarchies of granular subject classification. To overcome this issue, researchers are striving to investigate new techniques for the classification of the research articles especially, when the complete article text is not available (a case of nonopen access articles). The proposed study aims to investigate the multilabel classification over the available metadata in the best possible way and to assess,“to what extent metadata-based features can perform in contrast to content-based approaches.” In this regard, novel techniques for investigating multilabel classification have been proposed, developed, and evaluated on metadata such as the Title and Keywords of the articles. The proposed technique has been assessed for two diverse datasets, namely, from the Journal of universal computer science (J. UCS) and the benchmark dataset comprises of the articles published by the Association for computing machinery (ACM). The proposed technique yields encouraging results in contrast to the state-ofthe-art techniques in the literature.
引用总数
学术搜索中的文章
NA Sajid, M Ahmad, A Rahman, G Zaman, MS Ahmed… - Computer Systems Science & Engineering, 2023