学部・大学院区分
Undergraduate / Graduate
経・博前
時間割コード
Registration Code
2491106
科目名 【日本語】
Course Title
エコノメトリックス Ⅱ (E)
科目名 【英語】
Course Title
Econometrics II (E)
コースナンバリングコード
Course Numbering Code
EGLET5312E
担当教員 【日本語】
Instracter's belongs
岡島 広子 ○
担当教員 【英語】
Instracter's belongs
OKAJIMA Hiroko ○
担当教員配属【日本語】
Instracter's belongs
大学院経済学研究科
担当教員配属【英語】
Instracter's belongs
Graduate School of Economics
単位数
Credits
2
開講期・開講時間帯
Term / Day / Period
春 火曜日 2時限
Spring Tue 2
授業形態
Course style
講義
Lecture


授業の目的 【日本語】
Goals of the Course(JPN)
授業の目的 【英語】
Goals of the Course
Students will learn various regression methods using cross-sectional data. Topics include multiple regression model, nonlinear regression model, and regression with a binary dependent variable.
到達目標 【日本語】
Objectives of the Course(JPN)
At the end of the course, all students will be able to:
1. Demonstrate an understanding of basic regression models.
2. Determine and run appropriate regression model for a given data set and research question and interpret the regression results.
授業の内容や構成
Course Content / Plan
1. (04/11) Introduction & Simple linear regression: Part 1 (ch.4)
2. (04/18) Simple linear regression: Part 2 (ch.4)
3. (04/22, Saturday) Simple linear regression: Part 3 (ch.4)
4. (04/25) Hypothesis tests and CI in simple linar regression: Part 1 (ch.5)
5. (05/09) Hypothesis tests and CI in simple linar regression: Part 2 (ch.5)
6. (05/16) Multiple regression: Part 1 (ch.6)
7. (05/23) Multiple regression: Part 2 (ch.6)
8. (05/30) Hypothesis tests and CI in multiple regression: Part 1 (ch.7)
9. (06/13) Hypothesis tests and CI in multiple regression: Part 2 (ch.7)
10. (06/20) Term project instruction
11. (06/27) Nonlinear regression: Part 1 (ch.8)
12. (07/04) Nonlinear regression: Part 1 (ch.8)
13. (07/11) Regression with a binary dependent variable: Part 1 (ch.11)
14. (07/18) Regression with a binary dependent variable: Part 2 (ch.11)
15. (07/25) Term project discussion
16. (08/01) Closing session
履修条件・関連する科目
Course Prerequisites and Related Courses
Students are expected to know basic statistics and basic operations of RStudio.
成績評価の方法と基準
Course Evaluation Method and Criteria
1. Term paper (70%): Detailed instructions will be distributed around the 10th week. Late submission will be accepted with a 10% penalty per day (24-hour period).
2. In-class activities (30%): There will be multiple in-class activities throughout the semester. There will be no announcement on the dates of in-class acitivities, and there will be no makeups for missed in-class activities. Therefore, it is the studen's responsibility to attend class regularly.

The following is the grading schema. Students must score at least 60 (C-) to pass this course.

Score Grade
95~100 A+
80~94.99 A
70 – 79.99 B
65 – 69.99 C
60 – 64.99 C-
0 – 59.99 F
教科書・参考書
Textbook/Reference Book
This course requires the following free online textbook:
Hanck et al. "Introduction to Econometrics with R." 2021. Link: https://www.econometrics-with-r.org/index.html
課外学習等(授業時間外学習の指示)
Study Load(Self-directed Learning Outside Course Hours)
Students are expected to review course materials taught in each class.
注意事項
Notice for Students
Students must bring their computers to every class to use RStudio. Smartphones and tablets cannot be used for this purpose. Instructions for the installment of R will be provided during the first class meeting.
授業開講形態等
Lecture format, etc.
In principle, face-to-face lessons only.
遠隔授業(オンデマンド型)で行う場合の追加措置
Additional measures for remote class (on-demand class)
質問への対応方法
Office hour