Statistics 505 - Regress&Anl Variance

Fall
2013
01
3.00
Daeyoung Kim

TU TH 11:15AM 12:30PM

UMass Amherst
36488
Regression analysis is the most popularly used statistical technique with application in almost every imaginable field. The focus of this course is on a careful understanding and of regression models and associated methods of statistical inference, data analysis, interpretation of results, statistical computation and model building. Topics covered include simple and multiple linear regression; correlation; the use of dummy variables; residuals and diagnostics; model building/variable selection; expressing regression models and methods in matrix form; an introduction to weighted least squares, regression with correlated errors and nonlinear regression. Extensive data analysis using R or SAS (no previous computer experience assumed). Requires prior coursework in Statistics, preferably ST516, and basic matrix algebra. Satisfies the Integrative Experience requirement for BA-Math and BS-Math majors.
Undergraduate Math and Statistics majors only. Must have prior knowledge of hypothesis tests including t-tests, z-tests, F-tests, confidence intervals and p-values.
Permission is required for interchange registration during the add/drop period only.