DESIGN OF PERSONALIZED EXAM MATERIALS TOOLS ACCORDING TO MULTIPLE INTELLIGENCE TYPE BASED ON SUPERVISED LEARNING
Currently, personalized learning has become a necessity in the learning process. Research and implementation of personalization in the planning phases and implementation phases of learning have been extensively studied. However, that research has not yet reached the application stage in the learn...
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/52190 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Currently, personalized learning has become a necessity in the learning process.
Research and implementation of personalization in the planning phases and
implementation phases of learning have been extensively studied. However, that
research has not yet reached the application stage in the learning assessment
phase. Providing homogeneous examination material to each student has not
considered the characteristics of learners. Even though the achievements from the
assessment phase will provide a measure of the quality of the learning process as
a whole. Personalization in this phase aims to giving opportunities students for
expressing themselves and provide a sense of fairness to all learners according to
their dominant advantages.
This research has analyzed the individual characteristics model, which is derived
as a benchmark for identification of the information and characteristics of the test
material, which is then formulated into a classification model based on supervised
learning. Also conducted an analysis of the needs in the implementation of test
personalization. Research in thisi contribution is personalization method to
classification test material. Evaluation and testing of the output is measuring the
impact of the personalized test simulation results, cross-validation testing on the
classification model, and expert justification of the system design.
Simulation of assessment has an impact on the reactions of students with the
conclusion that interest and learning motivation are very high (86% and 89%).
Meanwhile, the impact on knowledge increased by an average value of 3.06%.
The number of students on the KKM scale category is quite reduced by 4 students,
increasing to the good category (2 students) and very good (2 students). Cross
validation test on the multi-label classification model gives accuracy results for
the logic type 0.85, the verbal type 0.87, the visual type 0.93, and the natural type
0.96. The expert's justification for the system design gave a very good average
response (90%).
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