STA2101: Methods of Applied Statistics I
and
STA442: Methods of Applied Statistics
University of Toronto, Fall
2012
Lecture Friday 2:10-5:00 p.m.
Sidney Smith 2117
Office Hours Wednesday 11-1 and Friday 10-11 in SS6025
 
Instructor:
Jerry Brunner
Note: This page is under construction, and will be updated frequently
throughout the term.
Formula sheet is posted below. This will be used on the final exam.
Random/nested effects slide show is posted below.
- Course Outline
- Formula Sheet: This will
be provided with the final exam, and also with Quiz 11 if necessary.
- About the Final Exam
- Computing Resources: Information and Links.
- Assignments
- Assignment
1 (Last updated Sept. 4th): Quiz on Friday Sept. 21st
- Assignment
2: Quiz on Friday Sept. 28th
- Assignment
3: Quiz on Friday Oct. 5th
- Assignment
4: Quiz on Friday Oct. 12th
- Assignment
5: Quiz on Friday Oct. 19th
- Assignment
6: Quiz on Friday Oct. 26th
- Assignment
7: Quiz on Friday Nov. 2
- Assignment
8: Quiz on Friday Nov. 9th
- Assignment
9: Quiz on Friday Nov. 16th
- Assignment
10: Quiz on Friday Nov. 23d
- Assignment
11: Quiz on Friday Nov. 30th
- Lecture Overheads You might want to print these and bring
them to class so you can write notes on them during lecture. Some of the
lectures are available in a handout version that has the same
content but perhaps uses less paper.
-
Brief Introduction to R
- Statistical Introduction
- Large Sample Tools
-
Random Vectors Part One
-
Random Vectors Part Two
-
Bootstrap
-
Bootstrap with R
-
Likelihood Part One
-
Likelihood Part Two: Wald and score tests
-
Wald Tests with R
-
Regression Part One
-
Regression With R Part One: The cars data
- Some unix
and emacs commands. You might as well print this
handout and keep it with you while you work, at first.
-
Brief Introduction to SAS
-
Missing values in R
-
Little Tubes data with SAS: We will only look at
the first 4 pages of this handout for now.
-
Logistic Regression Part One
-
Logistic Regression With R Part One:
Revised Nov. 1st
-
Poisson Regression
-
Poisson Regression With R Revised Nov. 9th
before class.
-
Generalized linear models
-
Regression Part 2 Revised Nov. 9th before class
-
SENIC data with SAS: Read from Excel
spreadsheet, do data transformations and basic tests.
-
Residuals: A brief discussion
-
Regression on the Cars data with SAS: Testing
parallel planes, lsmeans, Studentized deleted residuals
-
Factorial ANOVA
-
Factorial ANOVA with SAS
-
Power Part 1 for regression and analysis of
variance
-
Matrix Power calculations with R
-
The sample variation method
-
Power estimation: A disaster
-
Random effects and nested models
-
Random effects and nested models with SAS
-
Permutation and randomization tests
- Data sets from homework and lectures.
- Readings: All available free online
- Statistical
models by A. C. Davison. Get access using your
UTorID. This is the place to look if you want the real truth
about almost any applied statistical topic.
- The White
Whale: A comprehensive undergraduate textbook on
regression and experimental design. If you want a simple,
clear explanation of almost any standard topic in regression
or experimental design (with a numerical example), this is
the place to look. This is a 15MB zip file. It's well worth
downloading.
-
Introduction to R by Venables, Smith and
others. This free 100 page document is very helpful if you
plan to do any serious work with R.
- Data analysis with SAS: A free, open source
undergraduate text emphasizing verbal rather than mathematical
reasoning, with lots of SAS examples. It's a draft, still in
preparation but possibly useful. The goal of the book is to
supply plain, commom-sense explanations of certain applied
statistical tools, along with explanation of how to do it with
SAS and how to interpret the output.
- Chapter
1: Vocabulary and basic concepts useful for
thinking about data anaysis and communication with
clients in consulting situations.
-
- Source Code for lecture overheads,
homework and other class materials. It's mostly in LaTeX and
Openoffice.org format.
All course materials prepared by Jerry (lecture overheads, homework
problems, etc.) are licensed under a
Creative
Commons Attribution-ShareAlike 3.0 Unported License. Source code is
available. See the Source Code link above for more information.