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MAT 549E
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Course Information
Course Name
Turkish
İstatistiksel Modelleme ve Regresyon Analizi
English
Statistical Modeling and Regression Analysis
Course Code
MAT 549E
Credit
Lecture
(hour/week)
Recitation
(hour/week)
Laboratory
(hour/week)
Semester
-
3
3
-
-
Course Language
English
Course Coordinator
Mustafa Nadar
Course Objectives
1. To teach the theory of simple and multiple regression analysis and how to do a model selection.
2. To teach how to do diagnostics methods and perform residual analysis.
3. To teach Logistic and Poisson regression analysis.
4. To teach the generalized linear regression models
5. To teach how to estimate parameters, interpret and validate the results obtained for multiple regression analysis.
Course Description
The theory of simple and multiple linear regression analysis and modeling. Regression model selection. Residual analysis. Autocorrelation, multicolinearity. Logistic regression, Poisson regression. Generalized linear models. Applications of these models to data.
Course Outcomes
At the end of the course students will have the knowledge on the following concepts and their applications
1. Construction of different types of regression.
2. Checking the assumptions of the regression model.
3. Inference and prediction of regression model.
4. Diagnostic analysis and residual analysis.
5. An understanding of appropriate and relevant, fundamental and applied mathematical and statistical
knowledge, methodologies and modern computational tools.
6. The ability to bring together and flexibly apply knowledge to characterize, analyze and solve a wide range of problems,
Pre-requisite(s)
None
Required Facilities
Other
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