Course title |
Computational Methods for Econometrics |
Semester |
110-2 |
Designated for |
COLLEGE OF SOCIAL SCIENCES GRADUATE INSTITUTE OF ECONOMICS |
Instructor |
CHIH-SHENG HSIEH |
Curriculum Number |
ECON7218 |
Curriculum Identity Number |
323EM3770 |
Class |
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Credits |
3.0 |
Full/Half Yr. |
Half |
Required/ Elective |
Elective |
Time |
Monday 2,3,4(9:10~12:10) |
Remarks |
Restriction: MA students and beyond OR Restriction: Ph. D students The upper limit of the number of students: 25. |
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Course introduction video |
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Table of Core Capabilities and Curriculum Planning |
Table of Core Capabilities and Curriculum Planning |
Course Syllabus
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Please respect the intellectual property rights of others and do not copy any of the course information without permission
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Course Description |
In modern economic research, computers enhance our capacity of analyzing complex problems with data support. Computation is particularly important in fields involving dynamic modeling, structural equations, and massive data, such as macro, labor, and industrial organization. However, computational methods have not been part of the core curriculum of postgraduate-level economics education, whereas programming skills are critical for a postgraduate’s success in academia and industry. The objective of this course is to introduce graduate students to commonly applied computational approaches for solving econometric models, with an emphasis on numerical optimization, Bayesian MCMC, simulation-based methods, and dynamic programming.
We expect that at the end of the course a student would proficiently use at least one programming language (Stata, Matlab, R, etc). Moreover, we aim to equip the students with the computational ability to tackle problems of their own research areas. |
Course Objective |
This course intends to introduce students with computational methods for solving econometric problems, and expose students to extensive programming exercises. After completing this course, students should
1. have intermediate skills on using STATA, R, and MATLAB.
2. be familiar with well-known computational methods used in the current literature
3. be able to explore and potentially solve computational challenges faced by their own research. |
Course Requirement |
待補 |
Student Workload (expected study time outside of class per week) |
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Office Hours |
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References |
1. Cameron, A. C., & Trivedi, P. K. (2005). Microeconometrics: Methods and Applications. Cambridge university press.
2. Cameron, A. C., & Trivedi, P. K. (2009). Microeconometrics Using Stata (Vol. 5, p. 706). College Station, TX: Stata press.
3. Koop, G., Poirier, D. J., & Tobias, J. L. (2007). Bayesian Econometric Methods. Cambridge University Press.
4. Judd, Kenneth (1998): Numerical Methods in Economics, the MIT Press
5. Miranda, M. and Fackler, P. (2002) Applied Computational Economics and Finance. MIT
6. Wickham, H., & Grolemund, G. (2016). R for data science: import, tidy, transform, visualize, and model data. O'Reilly Media, Inc. |
Designated reading |
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Grading |
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