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2025 (Current Year) Faculty Courses School of Environment and Society Department of Social and Human Sciences Graduate major in Social and Human Sciences

Analyses and Modeling Techniques of Educational Data

Academic unit or major
Graduate major in Social and Human Sciences
Instructor(s)
Naoko Kuriyama
Class Format
Exercise (Face-to-face)
Media-enhanced courses
-
Day of week/Period
(Classrooms)
1-4 Thu (W9-706)
Class
-
Course Code
SHS.D463
Number of credits
020
Course offered
2025
Offered quarter
2Q
Syllabus updated
Apr 4, 2025
Language
Japanese

Syllabus

Course overview and goals

This course covers standard statistical analysis technology dealing with educational data. We concentrate on the conduct of experimental and survey data collection, and statistical analysis and modeling afterwards. Prerequisites include familiarity with computerized statistical analysis. Courses labeled "Practices for Psychological and Educational Measurement A &B" are good examples. This course makes use of the "active learning" teaching technique, and hence sets a "minimum passenger count" of nine on the very first day of instruction.

Course description and aims

This course covers standard statistical analysis technology dealing with educational data. We concentrate on the conduct of experimental and survey data collection, and statistical analysis and modeling afterwards. We emphasize active learning method in the classroom.

Keywords

Statistical Modeling, Survey data analysis, collaborative group learning, active learning

Competencies

  • Specialist skills
  • Intercultural skills
  • Communication skills
  • Critical thinking skills
  • Practical and/or problem-solving skills

Class flow

Basically, the instructors adopt both conventional lecture-style teaching as well as the "active learning", accompanied by occasional in-class demonstrations using statistical programs.

Course schedule/Objectives

Course schedule Objectives
Class 1

Orientation

Mastery of Preparation for PC environment

Class 2

Planning of surveys and experimentation

Can plan research objectives . Each group establishes their goal of research through the active learning.

Class 3

Ethical considerations in empirical research1

Grasp and understand necessary ethical considerations. The group discusses applicable ethical issues through the active learning.

Class 4

Ethical considerations in empirical research2

Grasp and understand necessary ethical considerations. The group discusses applicable ethical issues through the active learning.

Class 5

Survey Method ,Observation studies

Master survey method &observational data collection

Class 6

Experimental design

Master factorial experimental design. Each group prepare for data collection through the active learning.

Class 7

Student presentations

Carry out data collection

Class 8

Description of data

Can characterize the obtained data through active learning.

Class 9

Analyses of educational data

Select the most applicable method of analysis through the active learning.

Class 10

Basics of the causal modeling

Can explain the basics of the causal model construction through the active learning.

Class 11

Constriction of causal models (1)

Can explain causal model selection and construction

Class 12

Constriction of causal models (2)

Can explain data analyses generated by causal models through the active learning.

Class 13

Students' presentation of model construction

Prepare for the in-class presentation through the active learning.

Class 14

Wrap-up and Q & A

Each active learning group prepares the term paper.

Study advice (preparation and review)

To enhance effective learning, students are encouraged to spend approximately 100 minutes preparing for class and another 100 minutes reviewing class content afterwards (including assignments) for each class.
They should do so by referring to textbooks and other course material.

Textbook(s)

In-class handouts

Reference books, course materials, etc.

Will be introduced in class as necessary. The class makes use of publicly available data for analysis practices.

Evaluation methods and criteria

Contributions to the group and the active learning.: 10% In-class presentations: 90%

Related courses

  • LAT.A403 : Practices for Psychological and Educational Measurement A
  • LAT.A404 : Practices for Psychological and Educational Measurement B

Prerequisites

Desiderata: Concurrent registration to the following:
LAT.A403 : Practices for Psychological and Educational Measurement A
LAT.A404 : Practices for Psychological and Educational Measurement B

Contact information (e-mail and phone) Notice : Please replace from ”[at]” to ”@”(half-width character).

kuriyama&ila.isct.ac.jp
(please replade the ampersand with "@")