STAT545 Longitudinal Data Analysis

Course Code:2460545
METU Credit (Theoretical-Laboratory hours/week):3 (3.00 - 0.00)
ECTS Credit:8.0
Department:Statistics
Language of Instruction:English
Level of Study:Graduate
Course Coordinator:
Offered Semester:Fall and Spring Semesters.

Course Objectives

After completion of this course, the students should be able to understand the complex structure of such data and analyze it. They will learn both visualizing and modeling longitudinal data, as well as dealing with missing data. Theoretical information and applications in R are provided together. 


Course Content

Introduction to longitudinal data. Exploratory longitudinal data analysis. Missing cases in longitudinal data. Marginal models, transition models, random effects models, multilevel (hierarchical) models. Estimation methods for this type of data. Machine learning techniques for longitudinal data.


Course Learning Outcomes

Student, who pass the course satisfactorily will be able to:

  • recognize this type of data, and offer appropriate analysis
  • both visualize and model longitudinal data
  • deal with missing data in such datasets
  • understand some basic theoretical background in this field and 
  • apply some main methods in R for such datasets. 

Program Outcomes Matrix

Level of Contribution
#Program Outcomes0123
1Ability for converting theoretical, methodological, and computational statistical knowledge into analytical solutions in researches requiring statistical analyses.
2Ability for specifiying problems in real life situations bearing uncertainty, forming hypotheses, modeling, application, and interpreting the results.
3Ability for using current technology, computer softwares for statistical applications, computer programming for specific problems when necessary, writing computer codes for speeding up statistical calculations, organizing and cleaning databases, and preparing them for statistical analyses, and data mining.
4Ability for taking part in intra/inter disciplinary team work, efficient use of time, taking responsibility as a team leader, and entrepreneurship.
5Ability for taking responsibility in solitary work and producing creative solutions.
6Ability for keeping up-to-date with current advancements in statistical sciences, doing research, being open-minded, and adopting critical thinking.
7Ability for effective communication both in Turkish and English in specification of statistical problems, analyes, and interpretation of findings.
8Ability for using the knowledge in the field of expertise for the welfare of the society.
9Ability for suggesting the researchers in a comprehensible way the appropriate statistical methods for problems in fields that use statistics such as economics, finance, industrial engineering, genetics, and medicine and apply if needed.
10Ability for catalyzing discussions and presentations, public speaking, making presentations, communicating topics of expertise to the audiance in a comprehensible way.

0: No Contribution 1: Little Contribution 2: Partial Contribution 3: Full Contribution