Schedule

Most of the readings are available either via Sakai or hyperlinks. If you can’t find a reading, just ask!

Here’s your roadmap for the semester! Every day:

Some general thoughts on discussions

Readings / Discussions / Due dates

Week 1 (perception)

8/31 Introductions, syllabus, logistics, webpage info

9/2 Context Discussion Summary: Professor Hardin

human perception

9/5 Due (Sunday by 11:59pm to Sakai): Micro-essay on chance

Week 2 (sports)

9/7 Context: Alan Discussion: Brendan Summary: JC

chance & variability in sports

9/9 Context: Skylar Discussion: Fiona Summary: Kyle

algorithms in sports

9/12 Due (Sunday, 11:59pm to Sakai): Micro-essay on believing/doubting game (based on next Tuesday’s reading!)

Week 3 (fiction)

9/14 Context: Andrea Discussion: Nick Summary: Fiona

an interesting metaphor

9/16 [optional - but fun old movie with Jimmy Stewart] Magic Town (1947), directed by William A. Wellman, RKO Studios. (on Video47 via Sakai – choose any browser except Chrome)

9/16 Library Day - meet in th Digital Tool Shed in Honnold-Mudd library, see Sakai resources for map
Due (bring with you on paper): library notes (see Essay 1 link on Assignments tab)

9/17 Due (Friday, 11:59pm to Sakai): Micro-essay for Essay 1 (see Essay 1 link on Assignments tab)

Week 4 (sampling)

9/21 Context: Claire Discussion: Ty Summary: Nico

ideas of fate vs. chance

9/23 Context: Aja Discussion: Jacqueline Summary: Ty

Sampling applet

random samples are key

Week 5 (elections)

9/27 Due (Monday at 11:59pm on Sakai): Essay 1

9/28 Context:Nico Discussion:Skylar Summary:Jacqueline

2020 election polling

9/30 Peer review of Essay 1
9/30 Due (printed in class): completed peer reviews

Week 6 (decolonizing statistics)

10/5 Context: Jacqueline Discussion: Andrea Summary: Nick

meaning of “mathematics”

10/7 Context: Ty Discussion: Aja Summary: Mel

data and power

10/8 Due (Friday, by 11:59pm to Sakai): Essay 1, after peer review

Week 7 (machine bias)

10/12 Context: Nick Discussion: Claire Summary: Andrea

consequences

10/14

10/15 Due (Friday, 11:59pm to Sakai): Micro-essay on Essay 2

algorithmic bias

Week 8

10/19 Fall Break

10/21 Context: Mel Discussion: Arsh Summary: Claire

10/21 Due (Thursday, by 11:59pm, to Sakai): Essay 2

truth finding

Week 9 (data viz)

10/26 Peer review Essay 2

10/26 Due (printed in class): completed peer review

10/28 Context: Arsh Discussion: JC Summary: Aja

story telling

Week 10 (variables)

11/2 Due (Tuesday by 11:59pm, to Sakai): Essay 2, after peer review

11/2 Context: JC Discussion: Mel Summary: Arsh

other variable choices

11/4 Due: Dear Data presentations

your variable choices

Dear Data postcard (due by Wednesday 11/3 11:59pm to Sakai).
Some tips are here: https://fivethirtyeight.com/features/dear-data-and-fivethirtyeight-want-you-to-visualize-your-podcast-habits/

Week 11 (causation in medicine)

11/9 Context: Brendan Discussion: Kyle Summary: Alan

wellness programs

11/11 Context: Kyle Discussion: Alan Summary: Brendan

race vs. racism

11/11 Due (Thursday, 11:59pm to Sakai): Micro-essay on Essay 3

Week 12 (vaccines)

11/16 Context: Fiona Discussion: Nico Summary: Skylar

polio & MMR

11/18 Context: Discussion: Summary:

efficacy

11/21 Due (Sunday by 11:59pm to Sakai): Annotated Bibliography for Essay 3

Week 13 (pandemics)

11/23 Context: Professor Hardin Discussion: Professor Hardin Summary: Professor Hardin

masks

11/25 Thanksgiving

11/28 Due (Sunday by 11:59pm to Sakai): Essay 3

Week 14 (Statistics & Law)

11/30

12/2 Context: Discussion: Summary:

Week 15 (fin)

12/7 Class presentations (OR posters: Wednesday 12/8 noon-2pm ????)

12/9 No class - reading days

12/10 Due (Friday by 11:59pm to Sakai): Essay 3, after peer review

Corrections

If you see mistakes or want to suggest changes, please create an issue on the source repository.

Reuse

Text and figures are licensed under Creative Commons Attribution CC BY 4.0. Source code is available at https://github.com/hardin47/id1-stats-world, unless otherwise noted. The figures that have been reused from other sources don't fall under this license and can be recognized by a note in their caption: "Figure from ...".