TY - JOUR
T1 - EW-KNN
T2 - evaluating information technology courses in high school with a non-parametric cognitive diagnosis method
AU - Zhang, Wanxue
AU - Meng, Lingling
AU - Liang, Bilan
N1 - Publisher Copyright:
© 2022 Informa UK Limited, trading as Taylor & Francis Group.
PY - 2023
Y1 - 2023
N2 - With the continuous development of education, personalized learning has attracted great attention. How to evaluate students’ learning effects has become increasingly important. In information technology courses, the traditional academic evaluation focuses on the student’s learning outcomes, such as “scores” or “right/wrong,” which seldom reflects the development of students’ cognitive level and lacks effective diagnostic information. This article proposes a non-parametric multi-level scoring cognitive diagnosis method based on the KNN and the characteristics of information technology courses named the EW-KNN (E-weight K-Nearest Neighbor). Compared with the KNN, the EW-KNN improved two key points. One is that it takes the number of IRP (Ideal Response Pattern) as the K value to adapt to different types of tests. The other is that the nearest neighbor distance is introduced to solve the problem of misjudgment of the categories. The Monte Carlo simulation method is used to test its performance. The results indicate that the EW-KNN has a higher accuracy rate and is suitable for information technology courses. Furthermore, the method is applied in information technology course to make a cognitive diagnosis of 120 students of high school in Shanghai. Results demonstrate that the EW-KNN can accurately diagnose each student’s cognition levels and knowledge structure accurately.
AB - With the continuous development of education, personalized learning has attracted great attention. How to evaluate students’ learning effects has become increasingly important. In information technology courses, the traditional academic evaluation focuses on the student’s learning outcomes, such as “scores” or “right/wrong,” which seldom reflects the development of students’ cognitive level and lacks effective diagnostic information. This article proposes a non-parametric multi-level scoring cognitive diagnosis method based on the KNN and the characteristics of information technology courses named the EW-KNN (E-weight K-Nearest Neighbor). Compared with the KNN, the EW-KNN improved two key points. One is that it takes the number of IRP (Ideal Response Pattern) as the K value to adapt to different types of tests. The other is that the nearest neighbor distance is introduced to solve the problem of misjudgment of the categories. The Monte Carlo simulation method is used to test its performance. The results indicate that the EW-KNN has a higher accuracy rate and is suitable for information technology courses. Furthermore, the method is applied in information technology course to make a cognitive diagnosis of 120 students of high school in Shanghai. Results demonstrate that the EW-KNN can accurately diagnose each student’s cognition levels and knowledge structure accurately.
KW - Cognitive diagnosis
KW - EW-KNN
KW - Information technology course
KW - Multi-level scoring
KW - Non-parametric diagnostic methods
UR - https://www.scopus.com/pages/publications/85126000386
U2 - 10.1080/10494820.2022.2043912
DO - 10.1080/10494820.2022.2043912
M3 - 文章
AN - SCOPUS:85126000386
SN - 1049-4820
VL - 31
SP - 6783
EP - 6798
JO - Interactive Learning Environments
JF - Interactive Learning Environments
IS - 10
ER -