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chris wiggins edited this page Feb 10, 2019
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(see Syllabus for overview of course)
- Lecture 1, Jan 17: Course introduction Slides
- Lecture 2, Jan 22: boyd, Wallach (setting the stakes)
- Lecture 3, Jan 29: data: it's made of people (Wallach 2014; boyd+Crawford 2012; Tufecki "Engineering" (2014))
- Lecture 4, Feb 5: societal risk, social physics (Desrosières Ch 3, Quetelet (19th c), Porter Ch 2, Gigerenzer 1.6)
- Lecture 5, Feb 12: "vulgar statistics" and "'scientific' racism" (Desrosières Ch 4, Galton, Gould Ch 3)
- Lecture 6, Feb 19: IQ, regression-v-causation (Gould on Spearman; Spearman; Freedman on Yule (19th /20th c))
- Lecture 7, Feb 26: high church mathematical statistics/hypothesis testing (Fisher, Neyman, Pearson; Gerd (20th c))
- Lecture 8, Mar 5: WWII as birth of computing w/data: Bayes, Bletchley, "Women at the Dawn"... (WWII)
- Lecture 9, Mar 19: birth+death of AI: Turing '50, Dartmouth '55, Lighthill '73 (post-war)
- Lecture 10, Mar 26: Data at "The Labs": Tukey and EDA; Chambers
- Lecture 11, April 2: Machine Learning as a Trading Zone, Breiman's "two cultures", AI2.0
- Lecture 12, April 9: 50 years of Data Science (and data engineering)
- Lecture 13, April 16: Ethics: defining & enforcing; research & industry
- Lecture 14, April 23: Persuasion architectures; surveillance capitalism; you are the product
- Lecture 15, April 30: what did we learn? (Last day of class)
- Lab 1: introduction to the notebook, data provenance
- Lab 2: Exploratory Data Analysis; Slides
- Lab 3
- Lab 3, Part 1: Quetelet
- Lab 3, Part 2: EDA continued
- Lab 4
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Lab 4, Part 1: Life expectancy
- Life expectancy data
- Lab 4, Part 2: Simulating Galton
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Lab 4, Part 1: Life expectancy
- Lab 5
- Lab 5, Part 1: Yule, multiple regression and social thought
- Lab 5, Part 2: PCA
- Lab 6: Gould + IQ, T-tests, p-value hacking
- Lab 7: Bayesian Cryptography
- Lab 8
- Lab 8, part 1: Eliza and Expert Systems
- Lab 8, part 2: The birth, death, and rebirth of the Perceptron
- Lab 9 not in 2018: MCMC vs models, perceptron and supervised-v-unsupervised learning
- Lab 10
- Lab 10, part 1 Machine learning: predictive/supervised, prescriptive/reinforcement, descriptive/unsupervised (notebook authored by Su Hang)
- Slides on "interpretability" and the history of forests and trees
- Lab 10, part 2: forests and trees
- Lab 11 Databases and recommendation engines
- Lab 12
- Lab 12, part 1: Privacy
- Lab 12, part 2: Fairness, accountability, and transparency
- Lab 13 readings on autonomy and identity