Lesson 1: Intro to Statistical Research Methods

Lesson 1: Intro to Statistical Research Methods

  • To have some level of confidence in survey results, you would need to know, at least:
    • how many people were surveryed
    • who was surveyed
    • how the survey was conducted
  • Constructs
    • Things that are generally difficult to measure precisely eg:
      • Happiness
      • Hunger
      • Health
  • Operational Definition
    • Systems to measure constructs
  • Samples & population

    • Average across population is called "population parameter". Denoted by 'mu'
    • Within population there's a "sample" of people.
    • Average for the sample is called "sample statistics". Denoted by 'x-bar'
    • Difference between mu and x-bar is called "sampling error"

    • Obviously, the bigger the sample, the closer the mu is to x-bar population
    • Visualize relationship
    • Helps to find correlations between data
    • Correlation does not imply causation
    • "No two countries with a McDonald's have ever gone to war since opening the McDonald's" -- Thomas Friedman
    • Casual inference
    • To observe pattern between two variables, have to consider "lurking variables"
    • To show relationships, you can do observational studies or surveys
    • To show causation, you'd need to do a "controlled experiment"
    • Downsides to surveys
    • Untruthful responses
    • Biased responses
    • People not understanding the questions or refusing to answer
    • Controlled Experiments
    • Placebo
      • Allows for a comparison 'control group' to the 'experimental group'
    • Blind
      • Ensures everyone thinks they're the 'experimental group'
    • Double blind
      • Researchers observing results shouldn't know who's in control or experimental to prevent judgement bias
    • Independant variable = variable that is changed to test effect on dependant variables
    • Dependant variable = variable being tested