Here’s your roadmap for the semester! Every day:
- read the assigned items
- post one question to the Sakai wiki
- complete your task if you are contextualizing, discussing, or
summarizing
- pay attention to due dates for written assignments
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
Tversky, A. and Kahneman, D. (1974). “Judgment under uncertainty:
heuristics and biases.” Science, vol 185, pgs 1124-1131. (https://library.claremont.edu/ – log in &
search!)
Tversky, A., & Kahneman, D. (1971). “Belief in the law of
small numbers.” Psychological Bulletin, 76(2), 105–110. (https://library.claremont.edu/ – log in &
search!)
The Decision Lab,
Why
do we think a random event is more or less likely to occur if it
happened several times in the past?“
[optional] Utts, J. (2005/2015) “Psychological Influences on
Personal Probabilities,” chp 17 & “When Intuition Differs from
Relative Frequency,” chp 18. (on Sakai).
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
- Berry, S. (2006) “Statistical fallacies in sports.” Chance,
vol 19, pgs 50-56. (on Sakai)
- James, B., Albert, J., and Stern, H. (2005) “Answering questions
about baseball using statistics.” Anthology of Statistics in
Sports. Chp 15, pgs 111-117. (on Sakai)
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
- Borges, J.L. (1941) “The Babylon lottery.” Ficciones. (on
Sakai)
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
- Bryson, M. (1976). “The Literary Digest poll: making of a
statistical myth.” The American Statistician, vol 30 (no 4),
pages 184-185. (on Sakai)
- Radwin, D. (October 5, 2009). “High response rates don’t ensure
survey accuracy.” The Chronicle of Higher Education. (on
Sakai)
- Ranganathan, M. (November 4, 2014),
Where
are the real errors in political polls?“, Scientific
American.
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
- FiveThirtyEight is a poll aggregator https://projects.fivethirtyeight.com/polls/
- Alexander, J. (2010) “Appendix on the poll of polls.” The
Performance of Politics. (on Sakai)
- Silver, N. (2014) “How FiveThirtyEight Calculates Pollster Ratings”
FiveThirtyEight https://fivethirtyeight.com/features/how-fivethirtyeight-calculates-pollster-ratings/
and https://projects.fivethirtyeight.com/pollster-ratings/
- Final FiveThirtyEight prediction in 2020: https://projects.fivethirtyeight.com/2020-election-forecast/
- Cohn, N. (September 20, 2016), “We gave four good pollsters the same
raw data. They had four different results.” The New York Times.
https://www.nytimes.com/interactive/2016/09/20/upshot/the-error-the-polling-world-rarely-talks-about.html
- Keeter, S, Hatley, N, Lau, A, and Kennedy, C. (March 2, 2021) “What
2020’s Election Poll Errors Tell Us About the Accuracy of Issue Polling”
Pew Research Center. https://www.pewresearch.org/methods/2021/03/02/what-2020s-election-poll-errors-tell-us-about-the-accuracy-of-issue-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
- Castelvecchi, D. (November 18, 2020) “Is facial recognition too
biased to be let loose?” Nature https://www.nature.com/articles/d41586-020-03186-4
- Simonite, T (2021) “What really happened when Google ousted Timnit
Gebru.” Wired https://www.wired.com/story/google-timnit-gebru-ai-what-really-happened/
- Weinberger, S. (September 28, 2020) “Techie Software Soldier Spy
Palantir, Big Data’s scariest, most secretive unicorn, is going public.
But is its crystal ball just smoke and mirrors?”, New York
Magazine https://nymag.com/intelligencer/2020/09/inside-palantir-technologies-peter-thiel-alex-karp.html
- MacCarthy (May 26, 2021) “Mandating fairness and accuracy
assessments for law enforcement facial recognitionsystems.”
Brookings https://www.brookings.edu/blog/techtank/2021/05/26/mandating-fairness-and-accuracy-assessments-for-law-enforcement-facial-recognition-systems/
10/14
10/15 Due (Friday, 11:59pm to Sakai):
Micro-essay on Essay 2
algorithmic bias
Coded Bias (2020). Shalini Kantayya,
producer. 90 min. [will watch in class]
[optional] O’Neil, C. (2016) Weapons of Math
Destruction, pages 1-31, 84-104. (on Sakai)
[optional] Angwin, J., Larson, J., Mattu, S., and Kirchner, L.
(May 23, 2016), “Machine bias.” ProPublica. https://www.propublica.org/article/machine-bias-risk-assessments-in-criminal-sentencing
[optional] Hardesty, L. (February
11, 2018) “Study finds gender and skin-type bias in commercial
artificial-intelligence systems” MIT News https://news.mit.edu/2018/study-finds-gender-skin-type-bias-artificial-intelligence-systems-0212
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
- Lupi, G. and Posavec, S. (2016) In particular, weeks: 1, 14, 17, 18,
22, 24, 39, & 52. Dear Data. http://www.dear-data.com/by-week/
- Mansky, J. (2018) “W.E.B. Du Bois’ Visionary Infographics Come
Together for the First Time in Full Color” Smithsonian
Mazagine, https://www.smithsonianmag.com/history/first-time-together-and-color-book-displays-web-du-bois-visionary-infographics-180970826/
- Weber, J. (2019) “How W.E.B. Du Bois meticulous visualized
20th-century black america.” Hyperallergic https://hyperallergic.com/476334/how-w-e-b-du-bois-meticulously-visualized-20th-century-black-america/
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
- Adichie, N. (2009) “The danger of a
single story.” TED https://www.ted.com/talks/chimamanda_ngozi_adichie_the_danger_of_a_single_story
- Dollar Street https://www.gapminder.org/dollar-street consider a few
families - what similarities and difference do you notice?; choose one
variable and see how it varies across the “street”.
- Jones, C.P. (2001) “Invited Commentary: ‘Race,’ Racism, and the
Practice of Epidemiology.” American Journal of Epidemiolgoy,
Vol 154, pgs 299-304. https://academic.oup.com/aje/article/154/4/299/61900
- Krause, H. (August 27, 2021) “We need to fill in the blanks in our
social identity data.” We All Count https://weallcount.com/2021/08/27/we-need-to-fill-in-the-blanks-in-our-social-identity-data/
- Gupta, S. (March 8, 2020)
To
fight discrimination, the U.S. census needs a different race
question. ScienceNews
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
- Boyd, R., Lindo, E., Weeks, L., and McLemore, M. (2020) “On Racism:
a new standard for publishing on racial health inequalities.” Health
Affairs Blog https://www.healthaffairs.org/do/10.1377/hblog20200630.939347/full/
- Vyas, D., Eisenstein, L., and Jones, D. (2020) “Hidden in plain
sight — reconsidering the use of race correction in clinical
algorithms.” The New England Journal of Medicine, vol 383, pgs
874-882. https://www.nejm.org/doi/full/10.1056/NEJMms2004740
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
- (polio) Meier P. (1989) The biggest public health experiment ever:
the 1954 field trial of the Salk poliomyelitis vaccine. Statistics: A
Guide to the Unknown, 3rd edition. The Joint Committee on the Curriculum
in Statistics and Probability of the American Statistical Association
and the National council of Teachers of Mathematics. Duxbury Press:
Belmont, California. (on Sakai)
- (polio) Meldrum, M. (1998) “‘A calculated risk’: the Salk polio
vaccine field trials of 1954.” British Medical Journal, vol
317, pgs 1233-1236. https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1114166/
- (MMR) Sathyanarayana R., Andrade C. (2011) “The MMR vaccine and
autism: Sensation, refutation, retraction, and fraud.” Indian J
Psychiatry, vol 53, pgs 95-96. https://www.indianjpsychiatry.org/text.asp?2011/53/2/95/82529
- Carroll, A. (2014) “Vaccines Don’t
Cause Autism” Healthcare Triage https://www.youtube.com/watch?v=o65l1YAVaYc
- Carroll, A. (2015) “Studies Confirm,
Vaccines Still Don’t Cause Autism. But Are These Studies Helping?”
Healthcare Triage https://www.youtube.com/watch?v=j_zqBPuPx8w
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
- Markel, H., Lipman, H., and Navarro, J.A. et al. (2007)
“Nonpharmaceutical interventions implemented by US cities during the
1918-1919 influenza pandemic” Journal of the American Medical
Association, vol 298, pgs 644-654. https://jamanetwork.com/journals/jama/fullarticle/208354
- MacIntyre C. et al. (2015) “A cluster randomised trial of cloth
masks compared with medical masks in healthcare workers.” Infection
diseases, 5:e006577. https://bmjopen.bmj.com/content/5/4/e006577.short
- Doung-ngern, P. et al. (2020) “Case-Control Study of Use of Personal
Protective Measures and Risk for SARS-CoV 2 Infection, Thailand.”
Emerging Infectious Diseases, vol 26. https://wwwnc.cdc.gov/eid/article/26/11/20-3003_article
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:
- 12 Angry Men
- Cobb, G. and Gehlbach, S. (2006). Statistics in the courtroom.
Statistics: a Guide to the Unknown, 3rd edition. The Joint Committee on
the Curriculum in Statistics and Probability of the American Statistical
Association and the National council of Teachers of Mathematics. Duxbury
Press: Belmont, California. (on Sakai)
- Gannon, M. (July 12, 2017) Amazing DNA Tool Gives Cops a New Way to
Crack Cold Cases, nbcnews.com. https://www.nbcnews.com/mach/science/amazing-dna-tool-gives-cops-new-way-crack-cold-cases-ncna781946
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