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Course Catalog

140.607.11 Multilevel Models

Department:
Biostatistics
Term:
Summer Inst. term
Credits:
2 credits
Academic Year:
2017 - 2018
Location:
East Baltimore
Dates:
Mon 06/26/2017 - Fri 06/30/2017
Class Times:
  • M Tu W Th F,  1:30 - 5:00pm
Auditors Allowed:
No
Grading Restriction:
Letter Grade or Pass/Fail
Contact:
Ayesha Khan
Course Instructor:
  • Sandrah Eckel
Resources:
Prerequisite:

Previous experience with regression analysis is required.

Description:

Gives an overview of "multilevel models" and their application in public health and biomedical research. Multilevel models are statistical regression models for data that are clustered in some way, violating the usual independence assumption. Typically, the predictor and outcome variables occur at multiple levels of aggregation (e.g., at the personal, family, neighborhood, community and/or regional levels). Multilevel models account for the clustering of the outcomes and are used to ask questions about the influence of factors at different levels and about their interactions. Students focus on the main ideas and on examples of multilevel models from public health research. Students learn to formulate their substantive questions in terms of a multilevel model, to fit multilevel models using Stata during laboratory sessions and to interpret the results.

Learning Objectives:

Upon successfully completing this course, students will be able to:

  1. Prepare graphical and tabular displays of multilevel data that effectively communicate the patterns of scientific interests
  2. Formulate their substantive questions in terms of a multilevel models
  3. Interpret parameters of multilevel statistical models
  4. Fit multilevel models using the Stata statistical software packages
Methods of Assessment:

Take Home Final exam

Instructor Consent:

No consent required