4.6 Article

Comparing Manually Added Research Labels and Automatically Extracted Research Keywords to Identify Specialist Researchers in Learning Analytics: A Case Study Using Google Scholar Researcher Profiles

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APPLIED SCIENCES-BASEL
卷 13, 期 12, 页码 -

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MDPI
DOI: 10.3390/app13127172

关键词

learning analytics; NLP; text analytics

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This paper aims to explore the difference between manually assigned research labels and automatically extracted keywords for identifying specialist Learning Analytics researchers. Through text mining analysis of 4732 publications and 1236 authors, it was found that 446 authors were specialists, 643 were occasional researchers, and 90 were interested researchers in the field. The most interesting finding was the identification of 10 early career researchers independent of their Google Scholar citation count using the proposed methodology.
Google Scholar (GS) has an interesting feature that allows researchers to manually assign certain research keywords to their profiles, referred to as research labels. These research labels may be used to find out and filter relevant resources, such as publications and authors. However, using manually appended research labels for identification may have limitations in terms of consistency, timeliness, objectivity, and mischaracterization. This paper aims to explore the difference between manually assigned research labels and automatically extracted keywords for identifying specialist Learning Analytics (LA) researchers. For this study, data were collected on 4732 publications from 1236 authors displaying Learning Analytics in their public GS profile labels, using their most cited publications since 2011. Our analysis methodology involved various text-mining techniques such as cosine similarity and text matching. The results showed that 446 of the 1236 authors were specialist researchers, 643 were occasional researchers, and 90 were interested researchers. The most interesting finding, using our methodology, was identifying 10 early career researchers independent of their GS citation count. Overall, while manually added research labels may provide some useful information about an author's research interests, they should be used with caution and in conjunction with another source of information such as automatically extracted keywords to identify accurately specialist learning analytics researchers.

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