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Missouri Valley College in Old English Text MS
Marilyn F. Belwood, Ph.D. — Missouri Valley College — Science Center 107 — (660) 831-4085

Math 200—Introduction to Statistics
Syllabus—Spring 2008

Catalog Description

This course is an introduction to the basic principles of statistics. Major topics include graphic, numeric, and algebraic summaries of data (graphs, measures of central tendency and spread, correlation and regression); elementary principles of sampling and experimental design; elementary probability; normal distributions and the central limit theorem; confidence intervals; and tests of significance. Focus on analysis of data using appropriate statistical techniques.
Prerequisites: MA 145 or placement

Rationale

This course is intended to provide the student with the basic tools of statistical analysis so that they can apply statistics in other courses or pursuits, satisfy admissions criteria for graduate programs, and become better-informed citizens. Since statistics are a central feature of our quest for understanding in the physical, biological, and social sciences, an introductory experience of this nature greatly enhances the student's potential for life-long learning.

Goals

At the conclusion of this course, the student will be able to:

  1. Comprehend the basic principles and techniques of exploratory data analysis.
  2. Comprehend and apply basic principles of probability.
  3. Apply the normal distribution as a model for the distribution of random variables.
  4. Apply common estimation and testing procedures.
  5. Critically assess the design of sampling procedures and experiments.

Competencies

At the conclusion of this course the student will be able to:

  1. Select and interpret graphic and numeric summaries for a single numeric variable. (Math SSC 1.01, 1.02, 1.10, 1.11, 4.1, 5.1, 7.2, 7.3)
    Performance indicators: Students will:
    • Choose appropriate graphic and numeric methods for summarizing data from a single variable and interpret the results accurately.
  2. Use appropriate graphic and numeric summaries to compare the distribution of a measure across different groups. (Math SSC 1.01, 1.02, 1.10, 1.11, 4.1, 5.1, 7.2, 7.3)
    Performance indicators: Students will:
    • Choose appropriate graphic and numeric methods for comparing the distribution of a measure among different groups and summarize results and make valid conclusions.
  3. Use scatterplots, correlation, and regression to explore and describe the relationship between two numeric variables. (Math SSC 1.01, 1.02, 1.10, 1.11, 4.1, 5.1, 7.3)
    Performance indicators: Students will:
    • Comprehend and appropriately use and interpret scatterplots, correlation, and regression in examining the relationship between two numeric variables.
  4. Determine the probability of events using counting techniques, rules of probability, conditional probability, and the multiplication rule. (Math SSC 1.01, 1.02, 4.2)
    Performance indicators: Students will:
    • Utilize rules of probability and related techniques to accurately determine the probability of specific events.
  5. Determine the mean and variance of a discrete random variable. (Math SSC 1.01, 1.02, 1.11, 4.1)
    Performance indicators: Students will:
    • Comprehend the concepts of mean and variance and correctly derive their respective values using calculators and/or software applications.
  6. Assess the use of the normal distribution to model a numeric variable. Use normal distributions to calculate probabilities. (Math SSC 1.01, 1.02, 1.11, 4.1)
    Performance indicators: Students will:
    • Comprehend properties of the normal distribution and correctly determine probabilities from this distribution.
  7. Assess the strengths and weaknesses of sampling procedures and experimental designs. (Math SSC 1.01, 1.02, 4.4)
    Performance indicators: Students will:
    • Given a specific example, choose appropriate sampling procedures and experimental designs for the production of "trustworthy" data.
    • Demonstrate knowledge of the advantages and disadvantages of various sampling procedures and experimental designs.
  8. Use common estimation procedures. Interpret computer output. Discuss limitations of procedures and the meaning of confidence level. (Math SSC 1.01, 1.02, 1.11, 4.3)
    Performance indicators: Students will:
    • Choose and utilize appropriate estimation procedures and draw valid conclusions.
    • Comprehend the reasoning of inference and the limitations of confidence intervals and tests of significance.
  9. Use common hypothesis tests. Interpret computer output, especially the meaning and significance of the p-value. Discuss limitations of procedures. (Math SSC 1.01, 1.02, 1.11, 4.3)
    Performance indicators: Students will:
    • In common hypothesis tests, assess the evidence against the null hypothesis in terms of probability.
    • Correctly interpret computer output and demonstrate understanding of p-value.
    • Delineate limitations of statistical tests used.

Course Information

MVC Student Code of Conduct

It shall be the responsibility of every student enrolled at Missouri Valley College to support the academic integrity of the institution. This applies to personal honesty in all aspects of collegiate work, all student records and all contacts with faculty and staff. Academic dishonesty will not be tolerated.

It shall also be the responsibility of every student enrolled at Missouri Valley College to be respectful of the right of other students, staff and instructors to ensure a safe, peaceful atmosphere conducive to the educational goals of an institution of higher learning. Rude or disruptive behavior will not be tolerated.

Student actions that do not adhere to the MVC Student Code of Conduct will be addressed according to College policies regarding academic dishonesty and disruptive behavior. Students who exhibit dishonest, disruptive, or disrespectful behavior risk suspension or expulsion from the institution.

MVC ADA Statement

Special Needs: If you have special needs as addressed by the Americans with Disabilities Act, please contact the MVC ADA coordinator, Jamie Gold (4170), or your instructor immediately. After proper documentation, reasonable efforts will be made to accommodate your special needs.

Required Textbook

Moore, D. S. & McCabe, G. P. (2003). Introduction to the Practice of Statistics, (5th ed.), New York: W. H. Freeman and Company.

Each textbook includes a Student CD-ROM.

Bibliography

Bordens, K. S. & Abbott, B. B. (1991). Research Design and Methods: A Process Approach, (2nd ed.), Mountain View, California: Mayfield Publishing Company.

Berk, K. N. & Carey, P. (2004). Data Analysis with Microsoft Excel: Updated for Windows XP, (Belmont, California: Brooks/Cole.

Isaac, S. & William, M. B. (1995). Handbook in Research and Evaluation for Education and the Behavioral Sciences, (3rd ed.), San Diego: Robert R. Knapp, Publisher.

McIntyre, L. J. (2005). Need to Know: Social Science Research Methods, (New York: McGraw-Hill.

Calculators and Computers

This course emphasizes statistical ideas and conceptual understanding, not rigorous mathematical computations. The student is required to read and use equations, but is not expected to carry out statistical analyses step by step. You need a basic calculator during this course for simple calculations. More complex statistical calculations and graphics can be produced through software and is done so in practice. Therefore, this course will require time on the computer using the statistical capabilities of Microsoft Excel at various times during the semester.

Course Requirements and Evaluation

Points
Total 2100
Homework/Quizzes 400 (approx.)
Labs/writing assignments 100 (approx.)
Exams 1200 (4 @ 300 points each)
Final 400

Final grades will be determined by the percentage of possible points earned from Homework/Quizzes, Labs/writing assignments, Exams and Final according to the following scale:

90% or above A
80-89% B
70-79% C
60-69% D
Below 60% F

The instructor reserves the right to make modifications to this grading policy as needed.

Homework and Quizzes

Homework will be assigned on a regular basis. A homework assignment is worth 20-30 points (depending on length) if it is complete, accurate and turned in on time. Late homework is not accepted. If you will be missing class on the date that an assignment is due, you must turn it in prior to the date or you must make arrangements with the professor. Not every homework assignment will be collected. Each quiz is worth 30 points. Questions on the quizzes will be based on the homework assignments. You cannot make up a missed quiz. At the end of the semester, each student’s lowest two quiz scores will be dropped.

Laboratory exercises and writing assignments

Laboratory exercises will generally involve time on the computer. Instructions for laboratory exercises and topics for writing assignments will be given in class. Writing assignments are intended to help you organize your thoughts and clearly verbalize your understanding of statistical concepts. Points for exercises and labs vary.

Exams

The exact dates for exams will be announced in class. Make-up exams are only allowed for validated illnesses, emergencies, and college-related activities such as field trips or sporting events, where your name is on the list of excused students. It is your responsibility to contact me before the exam if you know you will miss the exam and arrange with me to take the make-up exam before the next class session. A longer delay in taking the make-up exam will result in up to a 30% discount in your grade. Failure to contact me before a missed exam will result in a zero for the exam. Also, if you miss an exam and do not take the exam before the tests are handed back in class you will receive a zero for the exam. Extenuating circumstances will be treated on a case-by-case basis.

Attendance

Attendance is expected and required at each class meeting.

Any student who misses two consecutive weeks of class will be administratively withdrawn from class. If the withdrawal takes place within the first 6 weeks of class, the student will receive a grade of “W”. If the withdraw takes place after the 6th week of class, the student will receive a “WF” or “WP”. The student will be notified of the action by the Registrar’s Office. Readmission will be considered only for extenuating circumstances as approved by the Vice President of Academic Affairs and Registrar. In such cases, where readmission is approved, a readmit fee of $350 will be charged. If a student drops below full-time status of 12 hours, financial aid may be adversely affected. Resident students dropping below 12 hours will be asked to move out of campus housing.

Note: If you know that you want to drop or withdraw from a class, please see your advisor. Do not count on this policy to automatically withdraw you.

Tentative Schedule

WeekWeek ofTopics
 
1 January 7 Chapter 1—Looking at Data: Distributions
2 January 14 Chapter 1
Monday, January 14 Last day to drop/add
3 January 21 Exam 1: Chapter 1
Chapter 2—Looking at Data: Relationships
4 January 28 Chapter 2
5 February 4 Exam 2: Chapter 2
6 February 11 Chapter 3—Producing Data
Friday, February 15 Last day to withdraw "W" or declare P/F
7 February 18 Chapter 3
8 February 25 Exam 3: Chapter 3
Chapter 4—Probability: The Study of Randomness
9 March 3 Chapter 4
10 March 10
March 10-14 Spring break
11 March 17 Exam 4: Chapter 4
Friday, March 21 Good Friday—no classes
12 March 24 Chapter 5—Sampling Distributions
13 March 31 Chapter 5
Friday, April 4 Last day to WP/WF
14 April 7 Chapter 6—Introduction to Inference
15 April 14 Chapter 6
16 April 21 Chapter 6
17 April 28 Review
Monday, April 28 Last day of spring semester classes
April 29-May 2 Final exams

Final Exam: 10 a.m., Wednesday, April 30

You must take the final exam at the time designated for your class. The final exam is mandatory. Make your travel arrangements accordingly.