This course is designed for 1st year graduate students and is taught in English.
The course aims to present and illustrate the theory and techniques of modern econometric analysis.
Least square regression, Large sample asymptotics, Endogeneity, Panel data
✔ 専門力 | ✔ 教養力 | コミュニケーション力 | 展開力(探究力又は設定力) | ✔ 展開力(実践力又は解決力) |
The first part begins with reviews of the conditional expectation and least square regression. The second part introduces the large sample asymptotics. The third part applies the large sample asymptotics to the least squares. The final part introduces concepts of endogeneity.
授業計画 | 課題 | |
---|---|---|
第1回 | Orientation and introduction | Orientation and introduction |
第2回 | Review I: CEF, Best predictor, Linear projection model | |
第3回 | Review II: OLSE, Unbiasedness | |
第4回 | Large sample asymptotics I | |
第5回 | Large sample asymptotics II | |
第6回 | Large sample asymptotics III | |
第7回 | Asymptotic theory for least squares I | |
第8回 | Asymptotic theory for least squares II | |
第9回 | Asymptotic theory for least squares III | |
第10回 | Asymptotic theory for least squares IV | |
第11回 | Endogeneity I | |
第12回 | Endogeneity II | |
第13回 | Panel data | |
第14回 | Review | |
第15回 | Final |
Textbook: Bruce E. Hansen, Econometrics, University of Wisconsin, 2018.
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Problem solving or midterm 30%, Final exam 70%.
The course prerequisites are Econometrics I (level: IEE 200) and Econometrics II (level: IEE 300). I strongly recommended both Introductory Courses in Statistics and Probability (level: IEE 200) by Professor Masami Miyakawa and Cliometrics (level: IEE 300) by Professor Daisuke Kurisu as the prerequisites. Students should be familiar with basic concepts in probability and statistical inference. Familiarity with matrix algebra is preferred.
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