Instructor:
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Prof. J. Taylor
Sequoia Hall #137
Email
723-9230
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Schedule:
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TTh 1:15-2:30
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Location:
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540-108
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Office Hours:
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TTh 2:30-3:30
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Textbooks:
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- Introduction to Linear Regression
Analysis. D. Montgomery, E. Peck. (optional)
- Modern Applied Statistics with S. D. Venables,
B. Ripley. (optional)
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TAs & Office Hours:
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Tentative
schedule:
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Schedule
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General
Outline:
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The course is intended to be a (non-exhaustive) survey of regression techniques from both a theoretical and applied perspective. Time permitting, the types of models we will study include:
- Simple Linear Regression
- Multiple Linear Regression
- Polynomial Regression
- Model Selection for Mupltiple Linear Models
- Multiple Linear Regression -- Diagnostics
- Analysis of Variance: Fixed Effects
- Experimental Design
- Penalized Regression
- Robust Regression
- Nonlinear Regression
- Generalized Linear Models
- Mixed Effects Models
- Time Series Regression: Correlated Errors
- Functional Linear Models
- Additive Models
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| Pre(co)requisites: |
STATS 200. Familiarity with matrix algebra will also be helpful.
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Evaluation:
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- 4 assignments: 60%
- 1 take home final project 40%
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Assignments:
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Notes:
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- Course Introduction, R
- Diagnostics, R
- Multiple Linear Regression, R
- Polynomial Regression, R
- Diagnostics, R
- Model Selection, R
- Analysis of Variance, R
- Experimental Design
- Penalized Regression, R
- Robust Regression, R
- Nonlinear Regression, R
- Generalized Linear Models I
- Generalized Linear Models II
- Fixed vs. Random Effects, R
- Mixed Effects Models, R
- Time Series, R
- Time Series Regression, R
- Functional Data
- Review
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