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Autor/inn/enKhamparia, Aditya; Pandey, Babita
TitelSVM and PCA Based Learning Feature Classification Approaches for E-Learning System
QuelleIn: International Journal of Web-Based Learning and Teaching Technologies, 13 (2018) 2, S.32-45, Artikel 3 (14 Seiten)Infoseite zur Zeitschrift
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Spracheenglisch
Dokumenttypgedruckt; online; Zeitschriftenaufsatz
ISSN1548-1093
DOI10.4018/IJWLTT.2018040103
SchlagwörterClassification; Electronic Learning; Online Courses; Anxiety; Personality; Cognitive Style; Learning Motivation; Prior Learning; Factor Analysis; Least Squares Statistics; Reliability; Accuracy; Preferences; Academic Ability; Student Needs; Foreign Countries; Computer Attitudes; Attitude Measures; Statistical Analysis; Japan; Computer Anxiety Scale
AbstractE-learning and online education has made great improvements in the recent past. It has shifted the teaching paradigm from conventional classroom learning to dynamic web based learning. Due to this, a dynamic learning material has been delivered to learners, instead ofstatic content, according to their skills, needs and preferences. In this article, the authors have classified eight different types of student learning attributes based on National Centre for Biotechnical Information (NCBI) e-learning database. The eight types of attributes are Anxiety (A), Personality (P), Learning style (L), Cognitive style (C), Grades from previous sem (GP), Motivation (M), Study level (SL) and Student prior knowledge (SPK). In this article the authors have proposed an approach which uses principal components of student learning attributes and have later independently classified these attributes using feed forward neural network (NN) and Least Square-Support Vector Machine (LS-SVM). (As Provided).
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Erfasst vonERIC (Education Resources Information Center), Washington, DC
Update2020/1/01
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