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STATISTICS 2
Subtitle | Regression Analysis, Application of Statistical Analysis in Social Science, and Mathematical Basis of Statistics |
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Lecturer(s) | AKABAYASHI, YOSHIO |
Credit(s) | 2 |
Academic Year/Semester | 2019 Fall |
Day/Period | Tue.5 |
Campus | Hiyoshi |
Registration Number | 19881 |
Faculty/Graduate School | ECONOMICS |
Department/Major | ECONOMICS Type A, B |
Year Level | 1 |
Class Specification | 12, 13, 14, 15, 23, 24, 25, 26, 35, 36, 37 |
Field | BASIC EDUCATION FOR MAJOR(13) FOUNDATION MANDATORY (1ST YEAR)(16) |
Course Description/Objectives/Teaching Method/Intended Learning Outcome
(1) By learning the regression analysis (analysis on causality between multiple variables), students will learn about the basics of empirical analysis of economic theory.
(2) By learning the applied statistical analysis (statistical analysis about various economic and social phenomena), students will develop the ability to apply statistics to a wide range in the real world.
(3) By learning the mathematical basis of statistics, students will be able to prepare for more advanced statistical analysis.
Not only lectures but also exercises will be emphasized, and also statistical processing using computers will be instructed.
(2) By learning the applied statistical analysis (statistical analysis about various economic and social phenomena), students will develop the ability to apply statistics to a wide range in the real world.
(3) By learning the mathematical basis of statistics, students will be able to prepare for more advanced statistical analysis.
Not only lectures but also exercises will be emphasized, and also statistical processing using computers will be instructed.
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Textbooks
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