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Mathematical Statistics (MTH-362)


Semester: Spring 2024
Number: 0144-362-001
Instructor: Alemtsehai Turasie
Days: Tuesday Thursday 1:40 pm - 2:55 pm
Note: Traditional In-Person Class
Location: Garden City - Swirbul Library 101
Credits: 3
Notes:

Grade Of C- Or Better In Mth 361 Required

Course Materials: View Text Books
Description:

Discover the Central Limit Theorem, and its many applications. Learn how to determine a confidence interval for means, proportions, and standard deviations, and to execute hypothesis tests for the same parameters. Perform chi-squared tests of goodness of fit, regression analyses, both linear and curvilinear, and Analysis of Variance tests.

Learning Goals:   Students will explore different types of statistical data through the examination of real-life data sets. Students will learn the theory behind Parametric Tests and apply the theory to the analysis of real-life data sets. Students will learn the theory behind Qualitative Tests and Non-Parametric Tests, and apply this theory to the analysis of real-life data sets. Students will explore and apply the theory of correlation and regression to real-life data sets. Students will investigate and appreciate the importance of the concepts of reliability and validity through the comparison of successfully designed tools and poorly designed tools. Students will explore regression theory through Structural Equation Modeling (SEM) and analyze SEM models. The students will utilize statistical computer software in the analysis of data: SPSS 22.0 in Lab.

*The learning goals displayed here are those for one section of this course as offered in a recent semester, and are provided for the purpose of information only. The exact learning goals for each course section in a specific semester will be stated on the syllabus distributed at the start of the semester, and may differ in wording and emphasis from those shown here.

Prerequisites:

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