Univariate data analysis

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Learning outcomes

  • The study of variability important to help answer: "what happened?"
  • Univariate tools such as the histogram, median, MAD, standard deviation, quartiles will be reviewed from prior courses (as a refresher)
  • The normal and t-distribution will be important in our work: what are they, how to interpret them, and use tables of these distributions
  • The central limit theorem will be explained conceptually: you cannot finish a course on stats without knowing the key result from this theorem.
  • Using and interpreting confidence intervals will be crucial in all the modules that follow.

Extended readings

  • New Boeing planes will generate 0.5 TB of data per flight. Read about this, and other sources of data: "every piece of that plane has an internet connection, from the engines to the flaps to the landing gear".
  • All students, but especially the 600-level students should read the article by Peter J. Rousseeuw, Tutorial to Robust Statistics it is easy to read, and contains so much useful content.

Resources

Class videos from prior years

Videos from 2015

07:31 | Download video | Download captions | Script

Videos from 2014

See the webpage from 2014


Videos from 2013

See the webpage from 2013