TY - GEN
T1 - Research on the development of a personalized learning assessment model
T2 - 27th International Conference on Computers in Education, ICCE 2019
AU - Peng, Xiaoling
AU - Wu, Bian
N1 - Publisher Copyright:
© 2019 International Conference on Computers in Education, Proceedings.All right reserved.
PY - 2019/11/19
Y1 - 2019/11/19
N2 - Assignment and examination are typical formative and summative assessment strategies in K-12 education. A large number of assessment data generated by learners offers an opportunity for personalized assessment. The research on assessment data has centered on large-scale reporting on aggregate level results, fewer studies have focused on student-level features. In this study, we tried to align Bloom’s taxonomy of educational objectives with learning assessment, and construct a personalized assessment model using the assignment and examination data based on the cognitive diagnostic assessment approach. The model includes three assessment dimensions including the achievement of educational objectives, the mastery level of knowledge components and risk detection. The model was validated using 2,600 online learning data from 50 senior high school students. The testing content includes one topic from algebra and another one from trigonometry. The results indicate that the model can help students make timely and targeted remedies of their learning gaps. There is a positive correlation between students' cognitive level and their mastery of knowledge components, and students with the same scores have different cognitive structures and knowledge structures, although they are at the same level in the traditional sense, they can find out the complementary intervals and increase the effective interaction. Assessment data is an explicit form of students' internal cognitive level, compared with a total score, teachers are more concerned about students' cognitive level and their mastery of specific knowledge, especially knowledge components with risks.
AB - Assignment and examination are typical formative and summative assessment strategies in K-12 education. A large number of assessment data generated by learners offers an opportunity for personalized assessment. The research on assessment data has centered on large-scale reporting on aggregate level results, fewer studies have focused on student-level features. In this study, we tried to align Bloom’s taxonomy of educational objectives with learning assessment, and construct a personalized assessment model using the assignment and examination data based on the cognitive diagnostic assessment approach. The model includes three assessment dimensions including the achievement of educational objectives, the mastery level of knowledge components and risk detection. The model was validated using 2,600 online learning data from 50 senior high school students. The testing content includes one topic from algebra and another one from trigonometry. The results indicate that the model can help students make timely and targeted remedies of their learning gaps. There is a positive correlation between students' cognitive level and their mastery of knowledge components, and students with the same scores have different cognitive structures and knowledge structures, although they are at the same level in the traditional sense, they can find out the complementary intervals and increase the effective interaction. Assessment data is an explicit form of students' internal cognitive level, compared with a total score, teachers are more concerned about students' cognitive level and their mastery of specific knowledge, especially knowledge components with risks.
KW - Assessment data
KW - Knowledge components
KW - Personalized assessment
KW - Taxonomy of educational objectives
UR - https://www.scopus.com/pages/publications/85077681587
M3 - 会议稿件
AN - SCOPUS:85077681587
T3 - ICCE 2019 - 27th International Conference on Computers in Education, Proceedings
SP - 294
EP - 299
BT - ICCE 2019 - 27th International Conference on Computers in Education, Proceedings
A2 - Chang, Maiga
A2 - So, Hyo-Jeong
A2 - Wong, Lung-Hsiang
A2 - Yu, Fu-Yun
A2 - Shih, Ju-Ling
A2 - Boticki, Ivica
A2 - Chen, Ming-Puu
A2 - Dewan, Ali
A2 - Haklev, Stian
A2 - Koh, Elizabeth
A2 - Kojiri, Tomoko
A2 - Li, Kuo-Chen
A2 - Sun, Daner
A2 - Wen, Yun
PB - Asia-Pacific Society for Computers in Education
Y2 - 2 December 2019 through 6 December 2019
ER -