Semester.ly

Johns Hopkins University | EN.625.661

Statistical Models and Regression

3.0

credits

Average Course Rating

(-1)

Introduction to regression and linear models including least squares estimation, maximum likelihood estimation, the Gauss-Markov Theorem, and the Fundamental Theorem of Least Squares. Topics include estimation, hypothesis testing, simultaneous inference, model diagnostics, transformations, multicollinearity, influence, model building, and variable selection. Advanced topics include nonlinear regression, robust regression, and generalized linear models including logistic and Poisson regression.

No Course Evaluations found

Lecture Sections

(81)

No location info
J. Hung
No class times info

(82)

No location info
J. Hung
No class times info

(83)

No location info
S. Wang
No class times info