Editing Statistics and Statistical Programming (Winter 2017)

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;Paper Due Date: March 19
;Paper Due Date: March 19
;Maximum length: 6000 words (~20 pages)
;Maximum outline length: 6000 words (~20 pages)
;Presentation Date: March 14
;Presentation Date: March 7
;All Deliverables: Turn in in Canvas
;All Deliverables: Turn in in Canvas


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I have a strong preference for you to write this paper individually but I'm open to the idea that you may want to work with others in the class.
I have a strong preference for you to write this paper individually but I'm open to the idea that you may want to work with others in the class.


In terms of content:
'''''Details Forthcoming:''''' ''Although this material is still somewhat thin, I'll be posting many additional details about the expectations for the final paper as we move forward through the quarter.''
 
* In terms of the structure of the paper, please see the page that I've written on the [[structure of a quantitative empirical research paper]].
* In terms of the structure of your presentation, you've got some latitude but this document on [https://canvas.uw.edu/files/40848246/download?download_frd=1 Creating a Successful Scholarly Presentation] (link is in Canvas) will likely be useful.


=== Grading ===
=== Grading ===
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'''Lectures:'''
'''Lectures:'''


* [https://communitydata.cc/~mako/2017-COM521/com521-week_01-r_programming_intro-20170103.ogv Week 1 R lecture screencast (Part I): Introduction to R and univariate statistics] (~1 hour 47 minutes)
* [https://communitydata.cc/~mako/com521-week_01-r_programming_intro-20170103.ogv Week 1 R lecture screencast (Part I): Introduction to R and univariate statistics] (~1 hour 47 minutes)
* [https://communitydata.cc/~mako/2017-COM521/com521-week_01-github_rscripts-20170104.ogv Week 1 R lecture screencast (Part II): Setting up git/GitHub and saving files in RStudio] (~40 minutes)
* [https://communitydata.cc/~mako/com521-week_01-github_rscripts-20170104.ogv Week 1 R lecture screencast (Part II): Setting up git/GitHub and saving files in RStudio] (~40 minutes)
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 1]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 1]]


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* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 2]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 2]]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_02-lists_dataframes_graphing-20170111.ogv Week 2 R lecture screencast: lists, matrixes, data frames, and beginning graphing] (~1 hour 8 minutes)
* [https://communitydata.cc/~mako/com521-week_02-lists_dataframes_graphing-20170111.ogv Week 2 R lecture screencast: lists, matrixes, data frames, and beginning graphing] (~1 hour 8 minutes)


'''Resources:'''
'''Resources:'''
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* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 3]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 3]]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_03-loading_data_functions_apply_misc.ogv Week 3 R lecture screencast: Loading data, functions; apply(), lapply(), sapply(); several miscellaneous functions] (~34 minutes) — This is the same material I covered in class. If you followed it, there's no reason you need to go back to this.
* [https://communitydata.cc/~mako/com521-week_03-loading_data_functions_apply_misc.ogv Week 3 R lecture screencast: Loading data, functions; apply(), lapply(), sapply(); several miscellaneous functions] (~34 minutes) — This is the same material I covered in class. If you followed it, there's no reason you need to go back to this.
* [https://communitydata.cc/~mako/2017-COM521/com521-week_03-dates_tapply_merge.ogv Week 3 R lecture screencast: Dates; tapply(); and merge()] (~38 minutes) [The audio seems to be broken for the last 10 minutes. Sorry about that! I've rerecorded that below.]
* [https://communitydata.cc/~mako/com521-week_03-dates_tapply_merge.ogv Week 3 R lecture screencast: Dates; tapply(); and merge()] (~38 minutes) [The audio seems to be broken for the last 10 minutes. Sorry about that! I've rerecorded that below.]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_03-merge.ogv Week 3 R lecture screencast: merge()] (~13 minutes) [Rerecording of the last few minutes of the previous video.]
* [https://communitydata.cc/~mako/com521-week_03-merge.ogv Week 3 R lecture screencast: merge()] (~13 minutes) [Rerecording of the last few minutes of the previous video.]


'''Resources:'''
'''Resources:'''
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* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 4]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 4]]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_04-misc_confint_simulation-20170125.ogv Week 4 R lecture screencast: order(); confidence intervals; simulations drawn from repeated random samples] (~27 minutes)
* [https://communitydata.cc/~mako/com521-week_04-misc_confint_simulation-20170125.ogv Week 4 R lecture screencast: order(); confidence intervals; simulations drawn from repeated random samples] (~27 minutes)


'''Resources:'''
'''Resources:'''
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* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 5]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 5]]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_05-ttests_and_anova.ogv Week 5 R lecture screencast: t-tests] (~22 minutes)
* [https://communitydata.cc/~mako/com521-week_05-ttests_and_anova.ogv Week 5 lecture screencast: t-tests] (~22 minutes)
* [https://communitydata.cc/~mako/2017-COM521/com521-week_05-for_if.ogv Week 5 R lecture screencast: for loops and if statements] (~12 minutes)
* [https://communitydata.cc/~mako/com521-week_05-for_if.ogv Week 5 R lecture screencast: for loops and if statements] (~12 minutes)


'''Resources:'''
'''Resources:'''
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* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 6]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 6]]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_06-tables_chisq_debugging.ogv Week 6 R lecture screencast: Tables, <math>\chi^2</math>-tests, and debugging.] (~40 minutes)
* [https://communitydata.cc/~mako/com521-week_06-tables_chisq_debugging.ogv Week 6 R lecture screencast: Tables, <math>\chi^2</math>-tests, and debugging.] (~40 minutes)


'''Resources:'''
'''Resources:'''
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* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 7]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 7]]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_07-linear_regression.ogv Week 7 R lecture screencast: linear regression] (~42 minutes)
* [https://communitydata.cc/~mako/com521-week_07-linear_regression.ogv Week 7 R lecture screencast: linear regression] (~42 minutes)


'''Resources:'''
'''Resources:'''
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* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 8]]
* [[Statistics and Statistical Programming (Winter 2017)/R lecture outline: Week 8]]
* [https://communitydata.cc/~mako/2017-COM521/com521-week_08-more_regression_anova_redux.ogv Week 8 R lecture screencast: more on linear regression, including interactions, polynomials, log transformations; anova] (~28 minutes)
<!-- * [https://communitydata.cc/~mako/com521-week_06-tables_chisq_debugging.ogv Week 6 R lecture screencast: Tables, <math>\chi^2</math>-tests, and debugging.] (~40 minutes) -->


'''Resources:'''
'''Resources:'''
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* [https://www.openintro.org/download.php?file=os3_slides_08&referrer=/stat/slides/slides_0x.php Mine Çetinkaya-Rundel's OpenIntro §8 Lecture Notes]
* [https://www.openintro.org/download.php?file=os3_slides_08&referrer=/stat/slides/slides_0x.php Mine Çetinkaya-Rundel's OpenIntro §8 Lecture Notes]
* [https://www.openintro.org/stat/videos.php OpenIntro Video Lectures] including a video on §8.4
* [https://www.openintro.org/stat/videos.php OpenIntro Video Lectures] including a video on §8.4
* I've written this document which will likely be useful for many of you: [https://communitydata.cc/~mako/2017-COM521/logistic_regression_interpretation.html Interpreting Logistic Regression Coefficients with Examples in R]


=== Week 9: Tuesday February 28: Consulting Meetings ===
=== Week 9: Tuesday February 28: Consulting Meetings ===
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We won't meet as a group. Instead, you will each meet on-on-one with me to work through challenges and issues with your analysis.
We won't meet as a group. Instead, you will each meet on-on-one with me to work through challenges and issues with your analysis.


=== Week 11: March 14: Final Presentations ===
=== Week 11: Date/Time TBD (Tentatively March 14): Final Presentations ===


== Administrative Notes ==
== Administrative Notes ==
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