Course Syllabus

Math 219 Syllabus-Spring 2019-1.docx

Meet Your Instructor:

Picture of Dr. Sweeney

 Hi, my name is Dr. George Sweeney. I am a full-time professor here at Santa Ana College.  I have a PhD in Math Education from the joint doctoral program at San Diego State and UC San Diego.  I also have a master's degree in Math from Cal Poly Pomona and a bachelor's from UCLA.  My fields of specialty are in research methodologies, Statistics, Linear Algebra, and Data Science.  I am Bronze, Silver, and Gold certified in Canvas in-person and online teaching. My dissertation was on teaching and learning in Linear Algebra, and I have done research and been published in research in trigonometry, differential equations, physical chemistry and calculus.  I love to teach and do mathematics.  I am currently learning some new computer programming languages.  I also enjoy meditating, making music, reading, playing with my kids, and hanging out with my wife.  I have been married for 14 years and I have two children, 4 and 6.

Office Hours:

Monday: 10-1:30pm in the Academic Computing Center (ACC)

Tuesday: 11:30-12:30 online

Wednesday: 10-11:30 (ACC), 12:00-1:30 and 4:15-5:30 (H107A)

Thursday: 11-1- Online

The following is an excerpt of the course syllabus, make sure that you read the complete syllabus above.

Important note about the workload for this course:  Although this course is online and allows for maximal flexibility, the course maintains the same expectations as any other in person college course.  This means that the hours expected of students to work on the course are equivalent to those in person.  

During a sixteen week course, it normally takes between 8-12 hours of work for a student to be successful in Math 219 (meaning passing). The work gets progressively more difficult as the course wears on.  Make sure to schedule yourself the 8-12 hours a week in case you may need it.  For chapters 7, 8, 9, 10 and 12 you will need it.  

Course Description: 

This is an introductory course in statistical reasoning.  I use the term statistical reasoning because the focus of the course is how do we make decisions based upon data.  Statistical reasoning is a process of making decisions and as such is much more than simply mathematics.  The mathematics is important certainly, but the process that is used to make these decisions requires logic and a set of practices that extend beyond the use of numbers.  In this class you will learn to make decisions based upon comparing probabilities, developing descriptive statistics, examining data, making inferences, and comparing data from different groups using statistical methods.  The goal of this class is to make you better purveyors of information and expand your reasoning skills to include data-driven activities.

I fully understand that many students have had difficulties with mathematics in the past.  But I would say that statistics is a totally different discipline than anything you have done in the past.  So, maybe we can start fresh.  You forget for a bit that this is a math class and I will work on teaching you statistics from a fresh place.  You can do this and together we can learn statistics. With that said, there is some math that will be handy for you to know:

1. What is a proportion?  How do you find a proportion?

Example: If 15 people in a group of 34 own an iphone, what proportion of the group own an iphone?

2. How do you solve an equation for a particular variable?

Example: Suppose that the equation for distance is distance=speed*time, find the equation for speed in terms of distance and time.

3. How do you find the equation for a straight line? (y=mx+b)

Example: Suppose that the equation for the relationship between weight and risk of heart attack is risk=weight*.003+5, what is the slope and y-intercept for the line.

4. How do you plug in the value for a variable to solve for the value of another variable?

Example: Suppose that the equation for the relationship between weight and risk of heart attack is risk=weight*.003+5, what is the risk for a 340 pound person?

Textbook Information:  We will be using Open Educational Resources, OpenStax textbook and LumenOhm learning management system.  Access to Lumenohm is provided to you with entering the course.  The remaining resources are free and available in this course.

Additional Course Information: 

Materials Needed: You will be required to purchase Statcrunch at Statcrunch.com for $13.  Statcrunch can be used to do almost all of the computations in the class, including conducting hypothesis tests, finding confidence intervals, finding summary statistics, and work with distributions.  A scientific calculator is also required.  You will be allowed to use the scientific calculator and Statcrunch on all exams. 


Course Learning Objectives: 

  1. Distinguish between and discuss the implications of scales of measurement and types of data.
  2. Interpret data displayed in tables and graphs.
  3. Identify and critique (advantages and disadvantages) sampling techniques and study designs.
  4. Calculate measures of central tendency (mean, median, mode, and midrange) and measures of spread (standard deviation, variance, interquartile range, and range) for data sets and distributions.
  5. Apply the concepts of sample space and the principles of probability.
  6. Calculate expected value (mean) and standard deviation (or variance) for discrete probability distributions.
  7. Calculate probabilities, mean, and standard deviation for binomial random variables.
  8. Use the Standard-Normal distribution to find probabilities or values for normal random variables.
  9. Distinguish between population and sampling distributions noting their similarities, differences, and the role of the Central Limit Theorem.
  10. Construct and interpret confidence intervals.
  11. Determine and interpret levels of statistical significance using p-values.
  12. Use the Standard-Normal and Student-t distributions to find critical values for confidence intervals and to calculate probabilities (p-values).
  13. Identify the fundamental components of hypothesis testing, including Type I and II errors, and interpret technology-based output for statistical analyses.
  14. Conduct and interpret the results from hypothesis tests for one and two populations (using z, t, and Chi-Square distributions), linear regression, and ANOVA.
  15. Select the appropriate type of hypothesis test for a given situation.
  16. Select the appropriate statistical technique to answer statistical questions involving estimation or inference using data from disciplines including business, social sciences, psychology, life science, health science, and education.


Student Learning Objectives:  

The Student Learning Outcomes for the course are as follows:

  1. By the end of the semester students will correctly interpret a graphical display of data.
  2. By the end of the semester students will take a statistical claim about a data set, perform an appropriate procedure and write a conclusion that addresses the claim.

Drop Policy:

First day of class is February 11.  In order to not be dropped for no show attendance, you must complete the Classroom Icebreaker Discussion Board on time, the MyOpenMath Assignment on time, and the Syllabus Search on time.  In addition, you must complete at least 70% of the first week’s assignments.  If you fail to do any of these things, then I will drop you from the course.

Failure to  complete a minimum of 90% of the course’s assignments allows me the right to drop you from the course for non-participation, this includes discussion boards.  In addition, if you fail to complete the totality of any week’s assignments, I reserve the right to drop you for non-participation. 

Make-ups:  I give a minimum of 1 week for every assignment.  Almost all assignments are posted at the beginning of the course.  You are given 10 late passes for prep and Lumen Ohm assignments.  Any written assignment or discussion board will be given a 10% decrease in points for every day that it is late.  Written assignments and discussion boards will not be accepted after the unit exam. 

Exams: The exam dates will be as follows:

Exam 1: Sampling and Introduction to Probability March 11, 2019
Exam 2: Discrete and Continuous Probability April 15, 2019
Exam 3- Univariate Data (Confidence Intervals and Hypothesis Tests) May 13, 2019
Final Exam June 7, 2019

My intention is for the first three exams to be done using Proctorio and can be done either in our Assessment Center or at your own location.  However, if the results of the exams do not prove to be acceptable then I will move the exams to assessment centers. This would be a last resort. The final exam will be at 6:00pm on June 7 in  H-109. Makeup exams will not be permitted.

If you  live out of the area, accommodations can be made to take the test at your local testing center. 

Grading Breakdown

 

Assignment Percentage of Grade
Homework 20%
Exam Reviews and Written Assignment 5%
Discussion Board 10%
Exams 45%
Final Exam 25%

Course Summary:

Course Summary
Date Details Due