JASPER: Journal Article Selection Program for Non-native English Readers

Journal article


Authors/Editors


Strategic Research Themes


Publication Details

Author listNantapong Keandoungchun, Jitimon Angskun, and Thara Angskun

PublisherEngineering and Technology Publishing

Publication year2024

Journal acronymJAIT

Volume number15

Issue number1

Start page79

End page86

Number of pages8

ISSN1798-2340

URLhttps://www.jait.us/show-235-1473-1.html

LanguagesEnglish-United States (EN-US)


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Abstract

Typically, reading a journal article can be timeconsuming, mainly for non-native English readers, because academic writing usually uses complicated vocabulary and sentences. Therefore, this paper proposes a Journal Article Selection Program for Non-native English Readers (JASPER) for selecting journal articles from abstracts using scanning and skimming techniques. JASPER employs linear searching as a scanning technique and a novel multi-layer Latent Dirichlet Allocation (LDA) as a skimming technique. It automatically classifies journal articles into multi-layer topics and selects only articles with related topics to reduce the number of articles readers must read. JASPER is evaluated in terms of accuracy and efficiency using journal articles on Computer Science topics. It achieved an average of 82.62% of the F-measure. It can also reduce the number of journal articles by an average of 98.68%. Therefore, JASPER can practically reduce the number of journal articles for non-native English readers.


Keywords

Article ReductionJournal Article SelectionJournal Article Selection Program for Non-native English Readers (JASPER)multi-layer Latent Dirichlet Allocation (LDA)Multi-Layer Topic Modeling


Last updated on 2024-19-02 at 23:05