Multiple linear regression model, parameter estimation, simultaneous confidence intervals and general linear hypothesis testing. Residual analysis and outliers. Model selection: best regression, stepwise regression algorithms. Transformation of variables and non-linear regression. Applications to forecasting. Variable selection in high-dimensional data using linear regression. Computer analysis of practical real world data.
This course may not be repeated for credit.
Prerequisite(s)
- Statistics 323 or Data Science 305; and Mathematics 211 or 213.
Sections