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Statistics

Within the mathematics program exists sequence of pure and applied statistics courses. They provide a sound basis for advanced study in the discipline and can lead to a number of interesting and rewarding career options.

Statistics Courses
125 Fundamentals of Statistics 3 cr.
Exploratory data analysis and statistical inference including graphical summaries of data, sampling distributions, confidence intervals, and hypothesis testing. Credit not allowed for both 125/225. Example syllabus.
225 Introduction to Biostatistics 3 cr.
Descriptive statistics, sampling distributions, confidence intervals, hypothesis testing, non-parametric methods, chi-square tests, regression and correlation methods, and analysis of variance. Credit is not allowed for both 125/225. Prerequisite: Evidence of college level algebra skills. Example syllabus.
301 Introduction to Probability and Statistics I 3 cr.
Univariate and multivariate probability distributions of discrete and continuous random variables, mathematical expectation, limit theorems. Prerequisite: 116. Example syllabus.
302W Introduction to Probability and Statistics II 3 cr.
A continuation of 301 including probability and sampling distributions of random variables, confidence intervals, and hypothesis testing. Prerequisite: 301.
325W Applied Statistics with Regression 3 cr.
One-way, two-way analysis of variance, Latin squares, methods of multiple comparisons, analysis of covariance, balanced and unbalanced designs, linear and multiple regression. Prerequisite: 225, or 301, or permission of instructor.
335 Biostatistics II 3 cr.
This course is a continuation of Math 225 (Introduction to Biostatistics). Topics include statistical issues in diagnostic tests, contingency table analyses, multiple two-by-two table analyses, linear and multiple regression, logistic regression, survival analysis, and nonparametric statistical procedures. Example syllabus.
425W Experimental Design 3 cr.
Factorial designs, fixed and random effects models, nested and nested-factorial designs, split-plot designs, response surface designs. Prerequisite: 325W or permission of instructor.

The Statistics Professors

Dr. Frank D'Amico Dr. John Kern Dr. Douglas Landsittel

The Statistics Curriculum
Questions and Answers

  • Q: Is there a major or minor in statistics at Duquense University?

A: No. Currently, students may not major or minor in statistics. However, there are a wide variety of statistics courses offered in the department. Many recent graduates with degrees in mathematics have entered graduate school in statistics. Mathematics majors who wish to attend graduate school in statistics are not the only students who should consider taking multiple upper division courses in statistics. Students whose future job will involve data analysis, students interested in research in a scientific discipline, students who are required to take research methods courses in their own disciplines, and students who prefer applied mathematics over theory may find the department's statistics courses to be especially beneficial.

  • Q: Are the introductory statistics courses different from one another?

A: The three introductory statistics courses are quite different from one another. Fundamentals of statistics, Math 125, is the least demanding introductory statistics course and is aimed at students in a variety of disciplines. Introductory Biostatistics, Math 225, covers the material in Math 125 and several other topics as well. Most examples are from the health sciences and biology. In addition to the regular lecture, Math 225 contains a computer lab component in which students use statistical software to augment learning. Each of these two introductory courses has no prerequisites beyond high school algebra.

The third introductory statistics course, Introduction to Probability and Statistics I, is a calculus-based introduction to probability and statistics, focusing primarily on probability and random variables. Students majoring in mathematics, secondary mathematics education, and computer science are the primary target audience, but students in the physical sciences may benefit. A year of calculus is a prerequisite for the course.

  • Q: What upper division courses are available, and how should I choose which one is right for me?

A: The table below summarizes the three regular upper division statistics courses offered by the department.


Course

Topic

Prerequisites

Math 302W - Introduction to Probability and Statistics II

Mathematical statistics

Math 301

Math 325W - Applied Statistics with Regression

Linear models including ANOVA and regression

Math 225 or Math 301 (or permission of instructor)

Math 425W - Experimental Design

Design of experiments

Math 325W (or permission of instructor)


Students primarily interested in data analysis, especially students from disciplines other than mathematics, will likely be most interested in the Math 325W-425W sequence. Students who are interesterd in graduate school in the mathematical sciences may prefer Math 302W. A student interested in graduate school in statistics is encouraged to take all three courses.

Furthermore, the department occasionally offers special topics courses in statistics. Within the recent past, courses on Statistical Computing and the SAS programming language have been offered.

  • Q: What is the Data Analysis Institute and how does it involve undergraduate students?

A: The Data Analysis Institute is directed by Dr. Frank D'Amico. The Institute accepts projects from both university and outside sources. Advanced undergraduate students who have completed one or more upper division course in statistics are often hired by the Institute to assist in the data analysis projects.

  • Q: If I decide to attend graduate school in statistics, will it be expensive?

A: Typically, graduate students in statistics (and in all of the mathematical sciences) earn stipends for working as teaching assistants (nominally 20 hours per week) that cover the cost of tuition, fees, and books, with remaining money sufficient to cover modest living expenses. The teaching experience gained is invaluable for students who desire careers in education, and is beneficial for most others. A Master's program in statistics typically requires two years of study, while a doctoral program will likely require more than four years of study and research.

 

   
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