CommunityData:StatsGaps

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DRAFT -- IN PROGRESS -- IGNORE

Welcome to the StatsGaps StudyGroup page -- a set of suggested learning pathways making use of course resources produced by community data faculty, meant to be used by folks who have a mixture of familiarity and non-familiarity with R, statistics, and research processes. The primary text is: [Open Intro to Statistics]

We borrow heavily from the course most recently taught by Aaron: [[1]]

Follow the strand(s) that apply to you:

  • Learn R -- you don't know R
  • Learn Stats -- you haven't taken much if any statistics, or otherwise feel you're mostly starting from scratch
  • Refresh -- overview and shore up your stats knowledge if it feels rusty
  • Stronger -- your stats knowledge is strong but your class stopped before you got to good stuff you see used in lots of the papers in this group, like regression)

Week 1

All:

  • Kramer, Adam D. I., Jamie E. Guillory, and Jeffrey T. Hancock. 2014. Experimental Evidence of Massive-Scale Emotional Contagion through Social Networks. Proceedings of the National Academy of Sciences 111(24):8788–90. [Open Access] If you haven't read this, you should--also, check the 'Editorial expression of concern' at the top and toss "kramer guillory hancock 2014" if you want to see the firestorm that this article created.-khc

Learn R:

Learn Stats:

  • Diez, Barr, and Çetinkaya-Rundel: §1 (Introduction to data)
  • [Do Problem Set 1]

Refresh:

Stronger:

  • [Skim Problem Set 1] -- since we may discuss it f2f. Take a look at the text's Chapter 1 if you find any of the questions to be confusing or the answer you came up with is different than the key.


Extra Resources:

Week 2: Probability and Visualization

All:

  • Shaw, Aaron and Yochai Benkler. 2012. A tale of two blogospheres: Discursive practices on the left and right. American Behavioral Scientist. 56(4): 459-487. [[2]]

Learn R:

Learn Stats:

Refresh:

Stronger:


Extra Resources:

  • Seeing Theory §1 (Basic Probability) and §2 (Compound Probability). (Note: this site provides a beautiful visual introduction to core concepts in probability and statistics).
  • Buechley, Leah and Benjamin Mako Hill. 2010. “LilyPad in the Wild: How Hardware’s Long Tail Is Supporting New Engineering and Design Communities.” Pp. 199–207 in Proceedings of the 8th ACM Conference on Designing Interactive Systems. Aarhus, Denmark: ACM. [PDF]
  • Mine Çetinkaya-Rundel's OpenIntro §2 Lecture Notes
  • Video Lectures including 2 short videos for §2