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schedule.Rmd
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---
title: "Syllabus"
output:
html_document:
toc: TRUE
toc_depth: 2
toc_float: TRUE
theme: cosmo
---
# Weekly schedule
LSR readings can be found in the free, online textbook, [_Learning Statistics with R_](https://learningstatisticswithr-bookdown.netlify.com/index.html) by Danielle Navarro. For those interested in taking notes, I recommend the use of the [Hypothes.is](http://Hypothes.is) app to annotate webpages. I will note that the formatting of the book online is wonky in a few places. If this bothers you, or you prefer to work offline, you can download a [PDF version](https://learningstatisticswithr.com/lsr-0.6.pdf) of the book.
| Week | Date | Topic |Readings | Quiz | Homework |
-------|------|-----------------------------------|--------------------|------------|-------------|
| 1 | 1/07 | Correlation (statistical test, power) | [Revelle Chapter 4](readings/Correlation chapter4 Revelle.pdf) | | |
| - | 1/09 | Correlation II (correlation matrix, reliability) | | | |
| - | 1/10 | _Lab: Correlations_ | | | |
| 2 | 1/14 | Univariate regression (equation, $\hat{Y}$, $e$) | LSR Chapter 15 | Quiz 1 | |
| - | 1/16 | Univariate regression II (inferential tests) | | | |
| - | 1/17 | _Lab: Univariate regression_ | | | |
| 3 | 1/21 | Univariate regression III (precision, matrices) | | Quiz 2 | |
| - | 1/23 | General linear model | | | |
| - | 1/24 | _Lab: General linear model _ | | | |
| 4 | 1/28 | Partial correlations | | Quiz 3 | |
| - | 1/30 | Multiple regression (interpretation, model fit) | | | |
| - | 1/31 | _Lab: Two continuous predictors_ | | | |
| 5 | 2/04 | Multiple regression (tolerance, model comparison, categorical IVs) | | Quiz 4 | |
| - | 2/06 | Multiple regression (one-way ANOVA) | LSR Chapter 14 | | |
| - | 2/07 | _Lab: Categorical predictors_ | | | HW 1 Due |
| 6 | 2/11 | Assumptions and diagnostics | [Lynam et al (2006)](readings/Lynam-2006-Assessment.pdf) | Quiz 5 | |
| - | 2/13 | Assumptions and diagnostics (outliers and multicollinearity) | | | |
| - | 2/14 | _Lab: Diagnostics_ | | | |
| 7 | 2/18 | Causal models | [Rohrer (2018)](https://journals.sagepub.com/doi/pdf/10.1177/2515245917745629), [Rohrer (2017)](http://www.the100.ci/2017/03/14/that-one-weird-third-variable-problem-nobody-ever-mentions-conditioning-on-a-collider/) | Quiz 6 | |
| - | 2/20 | Interactions (Continuous predictors) | [McCabe et al (2018)](readings/AMPPS.pdf) | | |
| - | 2/21 | _Lab: Interactions_ | | | |
| 8 | 2/25 | Interactions (Continuous x categorical predictors) | LSR Chapter 16 | Quiz 7 | |
| - | 2/27 | Interactions (Factorial ANOVA) | | | |
| - | 2/28 | _Lab: ANOVA_ | | | |
| 9 | 3/03 | Interactions (Factorial ANOVA) | [McClelland & Judd (1993)](readings/McClelland-1993-Psychol Bull.pdf) | Quiz 8 | |
| - | 3/05 | Interactions (Power and polynomials) | | | |
| - | 3/06 | _Lab: papaja_ | | | HW 2 Due Monday (March 9) |
| 10 | 3/10 | Interactions (polynomials and 3-way) | [Yarkoni & Westfall (2017)](readings/Yarkoni Westfall PPS.pdf) | | |
| - | 3/12 | WLS and Bootstrapping | | Quiz 9 | |
| - | 3/13 | _Lab: Bootstrapping_ | | | |
|Finals| 3/16 | | | | |
**Final:** The final project is due at 9am on March 20th.
# Graded materials
Your final grade is comprised of three components:
- Quizzes: 40\%
- Homework: 40\%
- Project: 20\%
## Quizzes
Quizzes are intended to assess your understanding of the theoretical principles underlying statistics. There will be a quiz every Tuesday, with the exception of the first week, when there will be no quiz, and the final week, when the quiz will be on Thursday.
Quizzes may be resubmitted with corrections and receive full credit. To resubmit a quiz, attach a separate piece of paper to your quiz; for each question that was answered incorrectly, identify the correct answer and explain why this is the correct answer. Only if the explaination sufficiently conveys understanding of the theoretical principles will credit be given. There are no limits to the number of times a quiz may be resubmitted.
## Homework assignments
Homework assignments are intended to gauge your ability to apply the topics covered in class to the practice of data analysis. Homework assignments are to be done using R and RMarkdown; completed assignments should be emailed to Dr. Weston and students must attach both the .Rmd file and the compiled HTML file.
Homework assignments are due at the time the first lab starts on the day the assignment is listed. Homework assignments may be resubmitted with corrections and receive full credit. Please note, however, that corrections can only be made to problems that were answered at initial submission. There is no limit to the number of times a homework assignment may be resubmitted.
Late assignments will receive 50\% of the points earned. For example, if you correctly answer questions totalling 28 points, the assignment will receive 14 points. If you resubmit this assignment with corrected answers (a total of 30 points), the assignment will receive 15 points.
You may discuss homework assignments with your classmates; however, it is important that you complete each assignment on your own and do not simply copy someone else's code. If we believe one student has copied another's work, both students will receive a 0 on the homework assignment and will not be allowed to resubmit the assignment for points.
## Final project
The final project is due at 9am on the last day of finals week (March 20). Please note that, unlike quizzes and homeworks, there will not be an opportunity to re-attempt this assignment. Instructions for the final project can be [found here](https://uopsych.github.io/psy612/final.html).
# Materials needed
We will be using R for all data wrangling, visulaization, and analysis. You may not use another statistical program in this course.
Students must have the latest version of R, which can be downloaded [here](https://ftp.osuosl.org/pub/cran/). It is strongly recommended that students also download the RStudio GUI, available [here](https://www.rstudio.com/products/rstudio/download/#download). Both softwares are free.
All reading assignments will be posted online.
# Times and locations
**Lecture:** Tuesdays and Thursdays, 10 - 11:20am, McKenzie Hall Rm 122
**Lab:** Friday, 9-10:20am or 10:30-11:50am, Straub Hall Rm 008
# Policies
**Cheating and plagarism.** Any student caught cheating on an assignment, quiz, or exam will receive a 0 on that assignment. Frankly, you're in graduate school, and the purpose of work is to create opportunities to learn and improve. Even if cheating helps you in the short term, you'll quickly find yourself ill-prepared for the career you have chosen. If you find yourself tempted to cheat, please come speak to Dr. Weston about an extension and developing tools to improve your success.
**Students with special needs.** The UO works to create inclusive learning environments. If there are aspects of the instruction or design of this course that result in disability-related barriers to your participation, please notify me as soon as possible. You may also wish to contact Disability Services in 164 Oregon Hall at 541-346-1155 or [[email protected]](mailto:[email protected]).
[^1]: Final grades are due the following Tuesday, so there are limited opportunties to redo this particular assignment for points. I will do my best to grade these within 24 hours of receipt so you have a chance to retry any missed points. Consider Monday 12/16 at 9am that last possible moment to turn in this assignment.