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== Week 2: Logistic regression ==
=== Session 3: ===
|| Reading || ||
|| Assignments || ||
=== Session 4: ===
== Session 3: Multilevel (a.k.a. Hierarchical, a.k.a. Mixed ) Linear Models ==
=== Reading ===
=== Assignments ===

== Session 4: Logistic regression, Generalized Linear Multilevel Models ==
=== Reading ===
=== Assignments ===

== Session 5: Mixed logit models ===
Line 60: Line 64:
== Week 3: Multilevel regression ==
=== Session 5: ===
|| Reading || ||
|| Assignments || ||
=== Session 6: ===
|| Reading || ||
|| Assignments || ||

== Week 4: Implementations (optional) ==
=== Session 7: lme4 implementation details ===
|| Reading || attachment:Implementation.pdf attachment:Theory.pdf attachment:Notes.pdf||
|| Assignments || ||
== Session 6: Computational methods for model fitting ==
=== Reading ===
|| lme4 || implementation vignettes || attachment:Implementation.pdf attachment:Theory.pdf attachment:Notes.pdf ||

HLP Lab Mini Course on Regression Methods

May 27 2008 - June 9 2008

Texts

R packages

Session 0: Basics

Understanding of this material will be assumed throughout the course. Please read these introductory materials and make sure you understand them before beginning the readings for the first session.

Reading

Baa08

Chapter 1 (pp. 1-20)

Intro to R.

G&H07

Chapter 2 (pp. 13-26)

Intro to probability theory.

Dal04

???

???

Session 1: Linear regression

Reading

G&H07

Chapter 3 (pp. 29-49)

Linear regression: the basics

Baa08

Section 4.3.2 (pp. 91 - 105)

Functional relations: linear regression

Sections 6 - 6.2.1 (pp. 181-198)

Regression Modeling (Introduction and Ordinary Least Squares Regression)

Section 6.6 (pp. 258-259)

General considerations

Assignments

G&H07

Section 3.9 (pp. 50-51)

Exercises 3 and 5

Baa08

Section 4.7 (p. 126)

Exercises 3 and 7*

* (for Exercise 7, Baayen treats linear regression using lm or ols as the same as analysis of covariance (see section 4.4.1 (pp. 117-119))).

Session 2: Issues in linear regression

Reading

G&H07

Chapter 4 (pp. 53-74)

Linear regression: before and after fitting the model

Baa08

Sections 6.2.2-6.2.4 (pp. 198-212)

Collinearity, Model criticism, and Validation

Section 6.4 (pp. 234-239)

Regression with breakpoints

Assignments

G&H07

Section 4.9 (p.76)

Exercise 4

Baa08

Section 6.7 (p. 260)

Exercise 1

In addition to the book problems, we will distribute a data set from the ongoing ngrams project.

Session 3: Multilevel (a.k.a. Hierarchical, a.k.a. Mixed ) Linear Models

Reading

Assignments

Session 4: Logistic regression, Generalized Linear Multilevel Models

Reading

Assignments

== Session 5: Mixed logit models ===

Reading

Assignments

Session 6: Computational methods for model fitting

Reading

lme4

implementation vignettes

attachment:Implementation.pdf attachment:Theory.pdf attachment:Notes.pdf

HLPMiniCourse (last edited 2011-08-09 18:01:46 by echidna)

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