STAT 3110 Course Outline
STAT 3110: Applied Regression
Course Outline
Prerequisites:
STAT1220/STAT1221/STAT1222 and MATH 1242/MATH 2120 Course Description: This course offers an introduction into linear regression analysis and emphasizes data analysis by using statistical software, such as R and SAS, and results interpretation. Course topics include fundamental context for linear regression; parameter estimation and inference for linear regression model; model diagnostic; prediction; strategies for building regression models; linear regression model with categorical predictors; and logistic linear regression models (optional). Reference books:
- Linear Models with R (2nd edition) by Julian J. Faraway, CRC Press, Taylor & Francis Group
- Introduction to Linear Regression Analysis (4th edition) by Douglas C. Montgomery, Elizabeth A. Peck, and G. Geoffrey Vining, Wiley.
Week | Topic |
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1 | Syllabus Preliminary data analysis (review concepts about summary statistics and initiate the calculation using a statistical software) |
2 | Simple Linear Regression Model:
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3 | Simple Linear Regression Model:
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4 | Simple Linear Regression Model:
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5 | A review on matrix algebra and quadratic forms Multiple linear regression model:
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6 | Multiple linear regression model:
Midterm Exam |
7 | Multiple linear regression model:
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8 | Multiple linear regression model:
Model diagnostics: residual plots |
Model diagnostics: QQ plot Unusual points identification: leverage, outlier and influential | |
9 | Model adequacy checking: partial regression plot, collinearity |
10 | Data transformation and weighted least square |
11 | Weighted least square |
12 | Polynomial regression models and categorical predictors |
13 | Model selection procedures |
14 | A case study |
15 | Logistic regression model and review |