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PSY769:  Intermediate Statistics in the Social Sciences

Syllabus

Fall 2024
Section 03: Registration Number 36662
Section 04: Registration Number 36256
Professor Keith A. Markus


Time:
 Section 03: Tuesdays 6:00-8:00 PM
 Section 04: Thursdays 6:00-8:00 PM

Room:
  Section 03 & 4: L2.72.05NB, 524 W59 Street, New York, NY 10019 USA. 

Course Description

"The primary purpose of the course is to educate students about basic [statistical] theories and techniques used in the behavioral sciences. The instructor will briefly review information typically covered in undergraduate statistics, and then introduce more advanced statistical techniques. Upon completion, the student is expected to understand the theoretical underpinnings for the various statistical techniques and the assumptions that data must meet to validly use these statistics. The student will also gain an introduction to computer-based statistical analysis.  30 hours.  3 credits."  (from Graduate Bulletin)

Many students enter the course several years after having taken an undergraduate statistics course.  Moreover, new material for one topic often precedes review material for another topic in order of logical development.  As a consequence, we will "briefly review" introductory material as if it were new material and do so for most of the semester.  Nonetheless, from the start, we will cover most of the material in more depth than a typical undergraduate course.  We will cover a number of topics not included in a typical introductory course.

Computer based statistical analysis will largely be limited to the use of spreadsheets.  This is because we offer another course entirely devoted to the topic of computer based statistical analysis (PSY 737).  I highly recommend that course to both thesis and non-thesis students.  Other advantages to spreadsheets include the fact that you can easily look at the formulas to know exactly what they are doing, spreadsheets can be tailored to the course, kept simple and focused, and thanks to open source office suites like Libre Office, you can take them wherever you go without any need for licenses to use commercial software.  (In contrast, statistical software is typically designed for users who already have a firm understanding of the statistics that they are using.)

Course Objectives
1. Students will learn to view psychological phenomena from the perspective of quantitative stochastic processes.
2. Students will develop linguistic competence in interpreting, describing, and critically evaluating basic statistical data.
3. Students will gain experience reasoning from and about numerical data.

Note:  It is not possible for this course to cover all of the statistics that you might need for a thesis.  If you plan on doing a thesis, prepare yourself for the fact that your data analysis will likely involve at least some statistics not covered in this course.  See Blackboard for a document comparing what it covered in this course to other benchmarks.

Diversity and Inclusion
Modern statistics are a cultural artifact tracing back to 19th century Europe but the field has grown to embrace scholarly contributions from around the world.  Statistics has some ugly episodes in its history, including historical figures involved in eugenics who also made lasting contributions to the development of statistics.  Nonetheless, progress in statistics is driven in large part by responding to existing needs and unsolved problems.  As such, the field benefits from contributions from people who bring diverse perspectives and experiences to statistics.  Most of you are psychology students seeking careers in psychology that will not involve becoming professional statisticians.  Nonetheless, much large scale research in psychology involves collaboration between researchers with expertise in statistics and methodology one the one hand and researchers with expertise in a particular topic in psychology on the other hand.  The better you understand statistics, the better you can contribute to such teams and communicate with others in your field.  My intention is for this course to speak to you and empower you in your career no matter your background or milieu.  Moreover, statistical methods play a central role documenting injustice or discrimination and in crafting legislation intended to combat them.  Looking beyond your profession and career, I hope that a richer understanding of statistical methods will be valuable to you as an informed citizen and participant in democratic governance seeking to leave the world better than you found it.

Required Background Knowledge
This course assumes familiarity with basic math and algebra.  Please take the Basic Math and Algebra Screening Test on Blackboard.  Let me know if the questions are unfamiliar to you or if you find the test difficult.  If so, it may be wise to talk to your program head about taking an undergraduate math course this term and registering for this course in a later term.

Required Reading
Bachman, R, Paternoster, R. & Wilson, T. H. (2022). Statistical methods for criminology and criminal justice (5th ed.).  Thousand Oaks, CA: Sage Publications(Caution: If you rent, make sure that the rental term reaches through finals week.)  Please make sure that you get the 5th edition.  A number of typographical errors have been corrected and some material has been changed.Text
        book cover

Substantial additional materials will be posted on the learning management system.  Some course content is covered only in the additional materials.

Suggested Reading
If you would find it helpful to have an additional perspective on the material, I recommend Gonnick, L. & Smith, W. (1993).  The cartoon guide to statistics.  New York:  Harpercollins.  I have put a copy on reserve at the Lloyd Sealy Library.  This is a supplement, not a substitute for assigned readings.  I have not pre-ordered this book at the book store.  However, I am happy to answer questions drawn from it in course Q&A forums.Gonick and Smith 1993 Front Cover

Software
I strongly recommend that students install the free office suite Libre Office and use the Calc spreadsheet program (https://www.libreoffice.org/).  I will also post Microsoft Excel versions of the spreadsheets but Microsoft is breaking backward compatibility and some of the features used in the course no longer work in Excel (although they did when I created them).  The programs are very similar, but there are some important differences.  Such spreadsheet software remains a popular choice for data entry even among researchers who use more specialized statistical software for data analysis (the topic of PSY 737).  However, research shows that specialized statistical software can be more confusing than enlightening when learning fundamental statistical concepts.  Excel/Calc offer a simple computing environment for working with data ideal for learning and gaining confidence with fundamental statistical concepts.  Mac users:  You can open both Excel and Calc files using the Mac version of LibreOffice.  However the spreadsheets will not work in Numbers.  Please post only ods or xls/xlsx files.  Do bot submit either Numbers files (because I cannot open them) or pdf files (because I cannot see inside cells.

Make sure your spreadsheet software is set to display zeros, and does not round the scores in the last tab.  Additional optional software will be explained on Blackboard.  (You will need a computer that is capable of running locally installed software to complete the assignments.  A digital device that relies entirely on web applications will not suffice.)

Internet Connection and Learning Management System
Students will need to be able to download files from the learning management system onto a computer with spreadsheet software installed.  The learning management system is accessible through the CUNY portal:  www.cuny.edu (see direct link at top right of this document) and works best with the Mozilla Firefox browser.

The learning management system for this course will be Brightspace.  For more information about the transition to Brightspace, see the following web page: https://new.jjay.cuny.edu/academics/online-education/learning-management-system/learning-management-system-transition.  Please allow yourself time to get familiar with the new system.  Please also remember that this is my first time using this system, as a result, there may be a few bumps along the way.

Note: Some of you may have become accustomed to relying on the learning management system to alert you to all deadlines and due dates.  This approach is not recommended for this course.  Please keep a copy (digital or paper) of the syllabus close at hand throughout the semester.  The schedule on the syllabus is the definitive guide to deadlines and due dates for the course.  I will try to reinforce these on the learning management system but that is only a secondary convenience and should not be relied on exclusively.

Class Time

The course design is a partially flipped classroom.  I will not lecture.  Instead, I will post instructional materials associated with each week on Blackboard for you to use outside of class.  We will use class time to (a) answer your questions, (b) work on practice problems, (c) review the quizzes and T&F questions from the presentation slides, and (d) other activities to help reinforce learning.  (However, you will still need to devote time outside of class to completing assignments.)  The course is designed to help you actively engage with the material so that you will understand it better and remember it longer.

Do the reading before the corresponding class.  If you have questions about the reading, bring them to class and I will try to answer them there (ideally by posting them to a discussion board on the learning management system).  I want to leave some flexibility to use the class time in the manner you will find most useful.  Note, most students find it helpful to read some materials more than once.  Only the first time through the reading need precede the corresponding class.  (If you find it hard to absorb the material from the chapters, you may find it helpful to use the Active Reader Worksheets available in the course materials.)

Asking effective questions:  Try to formulate questions in an effective manner.  If you ask me to explain some topic, especially a fairly general one, I will probably give a brief overview and refer you to the appropriate passages from the textbook or instructional materials.  This is not an effective question (unless that is what you are after) because you are not giving me clear information about what you do not understand, leaving me to guess or just duplicate what you can find elsewhere.  If something was unclear to you there, it is likely to be equally unclear in my answer.  Instead, try to be as specific as you can about what you do not understand.  If you do not understand a particular term, tell me what you find confusing about it.  If you do not understand a particular sentence or paragraph, cite the passage and explain why it does not make sense to you.  If you are confused about a particular statistical analysis, explain the step that you find unclear and what you think that the possible options are.  If something does not seem right to you, try to give a concrete counter-example.  The more context and detail that you can give me, the better the chances that I can give an answer that is helpful and informative to you and to other students in the class with similar questions.

If your question is related to an assignment, phrase your question in a way that does not involve any spoilers for other students working on the same assignment.  If in doubt, email me privately rather than directly posting on a discussion board.  I will then paste an anonymized and, if necessary, edited version of the question and answer to the discussion board.

Feel free to search for answers to your questions on the Web.  However, please do not attempt to post questions related to the course using online fora like Cross Validated or Stack Overflow.  These are precious resources maintained by busy people donating their time and expertise.  It is not appropriate to lean on them for questions related to a course when you have ready access to an instructor (and a tutor).  Save that for later in your career when you are no longer a student.  (Also, you will probably get a terse answer that either refers you to introductory material or assumes more background knowledge than you currently have.)  You should be able to complete assignments based on the provided course materials but if you make use of additional resources be sure to credit them in what you turn in, including generative AI (see Academic Integrity).

Everyone from me to your class mates are depending on you to ask questions when you have them.  If you have a question, you can be fairly certain that others have the same question.  Your question is not a "dumb question" but asking the question is the smartest thing that you can do.  Everyone else will appreciate your having asked the question.

Non-Class Time
I recommend that you begin each week by reading the chapter once through for the first time.  From there, move to the online instructional materials.  These are organized into subtopics which you can often explore in an order of your choosing.  (My videos often provide an overview of the week's material.)  In many ways, learning statistics is like learning to skateboard, ride a bike, or bake a cake: You can read about it from a book but you really need to practice to develop any skill and understanding.  So, I strongly recommend taking time to play around with the spreadsheet calculators provided each week, plugging in different numbers and trying things out for yourself.  Instructional materials primarily include: (a) pdf handouts, (b) spreadsheet workbooks and (c) videos.  As supplementary materials, I will also provide links each week to StatQuest videos on related topics.  Finish the first reading of the chapter and the instructional materials before class meets.  Use what you learn to complete the Application Assignment and to formulate questions to ask in class.  After class, I recommend completing the weekly quiz before the start of the next week, to get it out of the way.  I recommend completing at least one or two Quests prior to taking the quiz because these are an excellent way to check your understanding of the material and to gain a deeper understanding of it.  Also, Quests take time and you do not want them to pile up until the week before the deadline.

Academic Integrity Attestation
This is a non-graded course requirement.  No other assignments will be accepted for credit unless this form is completed, signed and submitted.  The form is available on the learning management system course page and attests that you understand the principles of academic integrity and will abide by them in completing all course work involved in this course.  (See further information near the end of the syllabus.)

Application Assignments
Weekly application assignments will appear on the learning management system in the module for each week.  See Schedule for due dates.  These will be relatively short assignments applying the material for that week.  You can complete them in a word processing program (or simple text editor) and upload the file to the learning management system using the assignment tool in the same location.  PDF (portable document format) files are great because special characters are stored internally.  I can probably also open RTF (rich text format), ODT (open document text), DOC (old Microsoft Office format) and DOCX (new Microsoft Office format) but these are riskier (e.g., if you use a font I do not have).  If I cannot open a file, or it appears jumbled, I will accept it as on time but send an email request for a PDF file.  Try to keep up with these and not fall behind but I will accept late Application Assignments up until the Quest deadline for each section of the course.

Note: Students sometimes become overconfident and try to complete Application Assignments before they do the reading.  This is a bad idea.  We will cover things you did not learn in your undergraduate statistics course.  If you attempt the Application Assignments without doing the reading, you will invariably do a face plant.  That will mean that I have to expend a lot of time and effort giving you written feedback about what you did wrong, even though by the time I grade the assignment, you will probably have done the reading and figured out what you did wrong on your own.  This will delay me returning grades and deny you the opportunity to test your understanding of the reading when you complete the assignment.  Many of the assignments include extensive cautions against the kinds of mistakes people make when they have not done the reading.  Always go back and check your answer against these cautions before you submit your answer.  (In particular, note that we will not talk about testing hypotheses involving more than one variable until Week 9 of the course!  That means that if you give me an example involving an independent variable and dependent variable before Week 9, it is going to be a wrong answer.  Keep that in mind.  Many of you have been brainwashed to think that testing associations between independent and dependent variables is all there is to statistics and you will need to make an effort to unlearn that.)  On the other hand, if you do not understand what something in an assignment means, post a question in time for me to answer it before the deadline.

Quizzes
Weekly quizzes will comprise six questions. When there are two chapters, there will be three questions from each chapter.  The quizzes will be available on the learning management system in the module for the week that they test (not the week that they are due!).  See Schedule for due dates.  Your total quiz grade is equal to the mean proportion correct across all quizzes after dropping the two lowest quiz grades.  See the learning management system for a document providing a more detailed description of quiz items.  You only get one try at a quiz.  So, I strongly recommend completing all other assignments and mastering the material through further study before taking the quiz.  You are allowed to use your notes, textbook, and other instructional a materials while taking a quiz, but they are not necessary to complete the quiz.

Note: We will go over quizzes in class after they are due (in the second section to reach them).  As a result, there can be no late quizzes.  This will be a hard and fast deadline because delays in going over the quizzes are very disruptive to other students.  If you miss a quiz for some reason, it will be counted toward the two lowest grades that you can drop (see grading).  If you miss three or more quizzes, the zero grade will count toward your course grade.  So, stay on top of the deadlines and be sure to complete quizzes before the deadline (see schedule for specific times of day and dates).  Caution: I discourage waiting until the last minute because if you have not submitted the quiz by the deadline according to the learning management system's internal clock, you will be prevented from ever submitting it even if you have answered all the questions.  Leave yourself time for technical difficulties with the learning management system or your internet connection (also the learning management system can sometimes go down unexpectedly).  I recommend turning things in a day before they are due, but at the very least try to get them in several hours before the deadline.

Quests
There are four quests available for each chapter of the book.  They are available as separate worksheets in a workbook containing all quests for that chapter.  Each quest workbook also contains an overview worksheet listing the quests and also a Statisticians' Guild worksheet which contains hints, resources, and your scores on each quest.

You are required to complete an average of 3 quests for each chapter within each of the three sections of the course.  Any grade better than "incomplete" counts as completing a quest (but I encourage you to go for "perfect!").  You will not receive credit for an incomplete quest even if you have completed a portion of it.  You may complete additional quests prior to the deadline for that chapter for extra credit (see Power Up in grading section).  The course is divided roughly into thirds.  You can continue turning in quests up until the deadline for that part of the course.  Once the deadline passes, no more quests for that third of the course can receive credit.  See Schedule for due dates.

To turn in quests for a given chapter, upload your entire workbook using the assignment tool for quests for that week.  This will be found in the module for the week corresponding to the quests.  When a week contains two chapters, there will be two separate places to turn in each quest workbook.  Please do not convert quest worksheets to PDF files, turn them in in their original format (ods or xls).  Please also check your grades before you turn in your quest workbook using the Statistician's Guild tab.  Just because you filled in answers to all the questions that does not mean that you successfully completed the quest!  You can resubmit the same quest workbook multiple times before the deadline.

In-class Practice Problems
We will work on practice problems in class that are also part of the same continuous Chifferton universe as are the quests.  These will also be distributed as spreadsheets.  You can download these from the learning management system at the start of class or bring them on an external storage device.  These are not the same as quests and they are not graded assignments.  They are strictly for learning purposes.  I will post solutions from class to the learning management system at the end of each class.

Attendance
The students who get the most out of the course recognize that attending class is its own reward and helpful in mastering the material.  However, some students have, in the past, taken advantage of my lenient attendance policy to the extent that their lack of participation impacted other students.  I would like to avoid penalizing absences if at all possible, you are all adults after all and it creates extra work for everyone.  So, I will take attendance at the start of class.  I will sum the number of weeks you attend class from Week 3 (after drop-add) to Week 14 and divide by 12.  I will then add this proportion to your Power-Up score when I compute your final grade.  I hope that will be sufficient incentive for everyone to attend class regularly.  At the same time, if you have Covid, the flu, or another infectious illness, please remain home until you are healthy.  Likewise, if you need to miss a class for other legitimate reasons, that is perfectly okay.  An email in advance of missing class is always appreciated.

Grading
Your final grade comprises your Application Assignment grade, your Quiz grade, your Quest grade for each of the three parts of the course, and your Power Up.  The Application grade counts each of the 12 application assignments as 1 point and equals the sum of these divided by 12.  The Quiz grade counts each quiz as 1 point, drops the 2 lowest, and divides the sum by 10.  The Quest grade for each part is the number of quests that you (successfully) completed (again, not just turned in with answers).  You are required to complete 15 quests for Part 1 and for Part 2, and 12 quests for Part 3.  Your final grade is based on the proportion of the required quests completed in each part.  Specifically, I calculate min(N, F) / N where N is the minimum required quests (15 or 12) and F the number of completed quests for that part of the course.  The Power Up is calculated based on extra quests beyond those required.  Here, I calculate max(0, F - N) for each part of the course, add them together, and divide by 14.  As such, you can never loose points with a negative Power Up, it will never fall below zero.  The Power Up reflects the extra quests you complete beyond those required for each part of the course (not by individual chapter).  As described above, you can earn the equivalent of one extra quest by maintaining good attendance.  This will be added into your Power-Up score prior to computing your grade.

Caution: All of this is contingent on your submitting the required Academic Integrity Attestation form.  I will not accept assignments or quizzes for a grade without a signed form.

Your Numeric Course Grade is calculated from the above scores as follows:  (.25 * Application Assignments) + (.25 * Quizzes) + (.17 * Part 1 Quests) + (.17 * Part 2 Quests) + (.16 * Part 3 Quests) + (.05 * Power Up).  In words, Applications and Quizzes both count 25% of your grade, required Quests count for 50%, and you can earn up to 5% extra credit by completing extra quests.  There will be no other extra credit options beyond Power Ups.

I will use the following chart to convert Numeric Course Grades to Letter Course Grades.  On the proportion (not percent) scale, I will round .xx5 and above up and anything below .xx5 down.

Letter Grade  Numeric Course Grade
A .95-1.00
A- .90-.94
B+ .85-.89
B .80-.84
B- .75-.79
C+ .70-.74
C .65-.69
C- .60-.64
F .00-.59

 
You can use the below grade calculator to estimate your course grade.  This requires a web browser that supports JavaScript.  For ease of use, I have expressed Applications Grade and Quizzes Grade as a percentage, so you need to multiply by 100.  The Quest scores are counts of completed quests.  So, for example, if you enter 100, 100, 15, 15 and 12, you get a grade of 100% with no Power Up.

Grade Calculator
Applications Grade 
Quizzes Grade 
Days Attended   
Part I Quests    
Part II Quests    
Part III Quests    
Base Grade 
Power Up 
Numeric Course Grade 
Letter Grade    

Inappropriate Helping
Many of you have chosen the course of study you have because you wish to join what is commonly known as "the helping profession."  To become a valued member of this profession, it is crucial that you learn to distinguish appropriate from inappropriate helping.  Success in this field of work requires the trust of your colleagues and coworkers.  Whether you are doing counseling or intake assessments or something in between, the work you do on a daily basis impacts people's lives, and your coworkers need to know that you will do that work with integrity.  It may seem harmless to share answers but in doing so you are engaging in inappropriate helping.  You are harming the person who receives the answers by denying them the opportunity to learn from the course assignments.  You are harming yourself by forming dysfunctional work habits that could damage your career down the line.  You are also doing harm to other students and the College by damaging the reputation of the college and reducing the value of the degrees that it grants.  Finally, you are harming your prospective employers by undermining their trust that a degree from the College represents the knowledge, skills and abilities that they expect when they hire one of our graduates.  So, what seems like a harmless act of "helping" can actually end up doing a lot of harm. 

The expectation in this course is that you will do your own work.  It is allowed and encouraged that you form study groups, discuss the material, work together on unassigned problems from the book, even practice testing one another on the material.  However, all assignments must be completed individually with no collaboration or sharing of work.  If you cannot respect the boundary between appropriate and inappropriate helping, then I encourage you to drop the course to avoid ruining it for others.

College Plagiarism Policy
Plagiarism is the act of presenting another person’s ideas, research or writings as your own. The following are some examples of plagiarism, but by no means is it an exhaustive list:

•    Copying another person’s actual words without the use of quotation marks and footnotes attributing the words to their source

•    Presenting another person’s ideas or theories in your own words without acknowledging the source

•    Using information that is not common knowledge without acknowledging the source

•    Failing to acknowledge collaborators on homework and laboratory assignments

Internet plagiarism includes submitting downloaded term papers or part of term papers, paraphrasing or copying information from the Internet without citing the source, and “cutting and pasting” from various sources without proper attribution.

(From the John Jay College of Criminal Justice Graduate Bulletin, p. 89)

Students who are unsure how and when to provide documentation are advised to consult with their instructors. The Library has free guides designed to help students with problems of documentation.

Note:  In the past some students have bumbled into plagiarism by relying on Internet searches to complete application assignments instead of relying on the assigned materials.  If two students use the same Internet resource, then the result is assignments that look like they collaborated.  As such, avoid copying examples from other sources and make up your own examples for assignments.  If you do rely on the Internet, then always cite the Internet sources that you use in your assignment.  Also be aware that the assignments are tailored to the assigned learning materials whereas Internet resources are typically aimed at a more advanced audience, assume more background and cover material that is beyond the scope of the course.

Note: Submitting work generated by a generative artificial intelligence program has been interpreted as both plagiarism and cheating under existing CUNY policy.  It constitutes submitting work from another source as your own work.  That is, you should not consider generative artificial intelligence to be a tool that you use to write, like a grammar checker or spell checker.  You should consider it a source like a book or article and apply the same rules for citation and quotation.

Contact Information:(It usually works best to email me.)

  Office Hours:  By appointment.  I will dedicate a Blackboard Discussion Board to questions and check it several times a week.  For anything that you do not want to share with other students, contact me by email.  I can answer many questions quickly by email (I will post an anonymous version to Blackboard for course-related questions.)

  Office:  Room 10.65.04, 524 W59 Street.

  Phone:  212-237-8784 Please do not leave messages at this number.  (I do not check voice mail when off campus and I no longer receive voicemail as email for some reason.)

  Email:  KMarkus@aol.com

(Email sent to kmarkus@jjay.cuny.edu will generally forward to me, sometimes with a delay.  However, college email does not always comply with the DMARC email standards which sometimes results my my receiving an error message about rejected email instead.)

Schedule

Week
Section 03 Tuesday
Meeting Dates
Section 04 Thursdays
Meeting Dates
Assignments
All assignments due by 5:PM on the date listed in this column.
Reading
Topics
1
9/3
8/29

Ch 1 (Recommended, Appendix A)
Why am I here?  What is this class about?  Syllabus.
Statistical inference and Sampling.
2
9/10
9/5
Due 9/10
Week 1 Quiz
Week 1 Application
Week 2 Application
(see above note regarding time)
Ch2-3

Levels of measurement, Distributions
3
9/17
9/12
Due 9/17
Week 2 Quiz
Week 3 Application
Ch 4-5

Central tendency, Dispersion
4
9/24
9/19
Due 9/24
Week 3 Quiz
Chapters 1-5 Quests Deadline (Late Application Assignments for Part I)


5
10/1
9/26
Due 10/1
Week 5 Application
Ch 6

Probability, Hypothesis Testing
6
10/8
10/10
(No classes 10/3)
Due 10/10
Week 5 Quiz
Week 6 Application
Ch 7

Point estimation, Confidence Intervals
7
10/22
(10/15 Monday Schedule)
10/17
Due 10/22
Week 6 Quiz
Week 7 Application
Ch 8

Single group mean and proportion
8
10/29
10/24
Due 10/29
Week 7 Quiz
Week 8 Application
Ch 9

Hypotheses and measures of association with categorical data
9
11/5
10/31
Due 11/5
Week 8 Quiz
Week 9 Application
Ch 10

Two group mean and proportion
10
11/12
11/7
Due 11/12
Week 9 Quiz
Chapters 6-10 Quests Deadline (Late Application Assignments for Part II)


11
11/19
11/14
Due 11/19
Week 11 Application
Ch 11
One-way ANOVA
12
11/26
11/21
Due 11/26
Week 11 Quiz
Week 12 Application
Ch 12
Bivariate correlation and regression.
13
12/3
12/5
(11/28 College Closed)
Due 12/5
Week 12 Quiz
Week 13 Application
Ch 13
Multiple regression
14
12/10
12/12
Due 12/12
Week 13 Quiz
Week 14 Application
Ch 14 (http://statpages.org/logistic.html)
Logistic regression
15 (Finals week)
12/17
No class meeting
12/19
No class meeting
Due 12/19
Week 14 Quiz
Chapters 11-14 Quests Deadline
(Late Application Assignments for Part III)


 
Source:
https://www.jjay.cuny.edu/academics/academic-resources-services/registrar/academic-calendar
http://www.cuny.edu/academics/academic-calendars/

Americans with Disabilities Act (ADA) CUNY Accommodations Policy
Students who believe that they may need an accommodation due to a disability are encouraged to immediately contact the Office of Accessibility Services (OAS) in room L.66 NB (212-237-8031 or accessibilityservices@jjay.cuny.edu).  Students are welcome but not required to speak with the instructor privately to discuss specific needs for the class. Students with disabilities are entitled to confidentiality over disability-related status or details. Students are not required to disclose their specific disability to their instructors or anyone else.

Wellness and Student Resources
Students experiencing any personal, medical, financial or familial distress, which may impede their ability to fulfill the requirements of this course, are encouraged to visit the Wellness Center (L.65 NB). Available resources include Counseling Services, Health Services, Food Bank, and emergency funding support. See http://www.jjay.cuny.edu/wellness-resources and https://new.jjay.cuny.edu/academics/academic-resources-services.

Resources for Reporting Sexual Harassment, Sexual Assault, Stalking, or Domestic and Dating/Intimate Partner Violence
The individuals below are available to discuss your rights and the resources available to you as well as help you explore your options for reporting sexual misconduct, harassment or discrimination of any kind:
1. Gabriela Leal, Title IX Coordinator, 646-557-4674, gleal@jjay.cuny.edu 
2. Diego Redondo, Director of Public Safety & Risk Management, 212-237-8524, dredondo@jjay.cuny.edu
3. Michael Martinez-Sachs, Dean of Students, 212-237-8211, msachs@jjay.cuny.edu
To speak confidentially, you may contact Women's Center Counselor and Gender-Based Violence Prevention and Response Advocate, Jessica Greenfield, jgreenfield@jjay.cuny.edu. For more information, please see CUNY’s Policy on Sexual Misconduct (PSM), or refer to this Q &A document.

Religious Accommodation
Students requesting religious accommodations should contact the Office of the Dean of Students at deanofstudents@jjay.cuny.edu. The Dean’s office will work with you and the instructor to find an acceptable accommodation. Reasonable accommodations may include, but are not limited to, permission to make up a test or lecture, time and/or space to pray, or an accommodation relating to appearance or dress. See the CUNY Policy on Religious Accommodations.

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Created 13 March 2013
Updated 19 August 2024
Created and tested using SeaMonkey 2.53.18.2

Syllabus is subject to change until the day of the first class meeting.