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MACS 30100 - Perspectives on Computational Modeling (Winter 2017)

Dr. Richard Evans Dr. Benjamin Soltoff Ms. Ging Cee Ng (TA)
Email [email protected] [email protected] [email protected]
Office 250 Saieh Hall 249 Saieh Hall 251 Saieh Hall
Office Hours W 2:30-4:30pm Th 2-4pm Th 3-5pm
GitHub rickecon bensoltoff gingcee
  • Meeting day/time: MW 11:30-12:50pm, Saieh Hall, Room 247
  • Lab session: W 5-5:50pm, Saieh Hall, Room 021
  • Office hours also available by appointment
  • Grader: Reuben Bauer ([email protected])

Course description

Students are often well trained in the details of specific models relevant to their respective fields. This course presents a generic definition of a model in the social sciences as well as a taxonomy of the wide range of different types of models used. We then cover principles of model building, including static versus dynamic models, linear versus nonlinear, simple versus complicated, and identification versus overfitting. Major types of models implemented in this course include systems of nonlinear equations, linear and nonlinear regression, supervised learning (decision trees, random forests, support vector machines, etc.), and unsupervised learning. We will also explore the wide range of computational strategies used to estimate models from data and make statistical and causal inference. Students will study both good examples and bad examples of modeling and estimation.

Grades

Assignment Quantity Points Total Points Percent
Problem Sets 9 10 90 90%
Midterm exam 1 10 10 10%
Total Points -- -- 100 100%

Disability services

If you need any special accommodations, please provide us with a copy of your Accommodation Determination Letter (provided to you by the Student Disability Services office) as soon as possible so that you may discuss with me how your accommodations may be implemented in this course.

Course schedule (lite)

Date Day Topic Readings Assignment
Jan. 4 W Model/theory building V1997
Jan. 9 M Data generating process PS1
Jan. 11 W Maximum likelihood estimation Notes
Jan. 16 M No class (Martin Luther King, Jr. Day)
Jan. 18 W
Jan. 23 M Generalized method of moments Notes PS2
Jan. 25 W
Jan. 30 M Simulated method of moments Notes PS3
Feb. 1 W
Feb. 6 M Evans Midterm PS4
Feb. 8 W Statistical learning and linear regression ISL Ch 2-3
Feb. 13 M Logistic regression ISL Ch 4.1-3 Linear regression PS due
Feb. 15 W Generalized linear models Notes
Feb. 20 M Resampling methods (cross-validation and bootstrapping) ISL Ch 5 GLM PS due
Feb. 22 W Non-linear modeling ISL Ch 7
Feb. 27 M Tree-based methods ISL Ch 8 Resampling/non-linear PS due
Mar. 1 W Support vector machines ISL Ch 9
Mar. 6 M Non-parametric methods TBD Trees & SVM PS due
Mar. 8 W Unsupervised learning ISL Ch 10
Mar. 15 W Nonparametric/unsupervised PS due

References and Readings

All readings are required unless otherwise noted. Adjustments can be made throughout the quarter; be sure to check this repository frequently to make sure you know all the assigned readings.

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