Statistics%20270%20Lecture%201 - PowerPoint PPT Presentation

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Statistics%20270%20Lecture%201

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Title: Statistics%20270%20Lecture%201


1
Statistics 270 Lecture 1
2
Today
  • Course outline
  • Introductory to statistics
  • Some Definitions
  • Descriptive statistics

3
Introduction
  • What is statistics?
  • Discipline which deals with the collection,
    organization and interpretation of data.
  • Done to answer questions of interest.

4
Example (Pain Reduction and Reiki)
  • Is Reiki an effective pain management tool?
  • Reiki treatment is touch therapy used as an
    alternative to pain medication.
  • A pilot study involving 20 volunteers
    experiencing pain was conducted.
  • All treatments were provided by a certified Reiki
    therapist.
  • Pain was measured using before and after the
    Reiki treatment.
  • If study was repeated, would we see the same
    results?

5
Example (Saving for Retirement)
  • What are the attitudes of low wage earners about
    saving for retirement?
  • Americans earning 35,000 or less were asked how
    they are likely to accumulate enough money to
    retire.
  • What are the data?

6
Some Definitions
  • Interested in something about a population.
  • Population is a collection of individuals.
  • Describe individuals with data.
  • Data sets contain information/facts relating to
    individuals.
  • A variables are attributes of an individual
    (e.g., hair color, pain severity, ...).
  • Distribution of a variable gives the values the
    variable can take and how often it takes on each
    value

7
Some Definitions
  • Can measure individuals a single time (e.g.,
    weight) to get a univariate data set
  • Can measure several variables per individual
    multi-variate data
  • Would like to measure a sample of indivuduals to
    make inference about the population inferential
    statistics

8
Types of Variables
  • Two types of variable
  • Quantitative Variables take on numeric values for
    which addition and averaging make sense (height,
    weight, income,).
  • Qualitative Variables each individual falls into
    a category (ethnicity, machine works or does not,
    ).
  • Hair color
  • Color preference (red1, blue2, green3)
  • Length of time slept

9
  • Will first focus on descriptive statistics
    (graphical and numeric).
  • Will move on to inferential statistics (test
    hypotheses).
  • In either case, statistical tools are used to
    describe data and help answer scientific
    questions.

10
Descriptive Statistics
  • Want to describe or summarize data in a clear and
    concise way.
  • Two basic methods graphical and numerical.

11
Graphical Descriptions of Data
  • Often, pictures tells entire story of data.
  • Have different plots for the different sorts of
    variables.
  • For Qualitative variables, will use bar-plots and
    pie charts.

12
Bar Charts
  • Variable values are the category labels
    (typically placed along the x-axis)
  • Heights of bar is the count (percentage) of
    values falling in that category.
  • Note bars are the same width!

13
Example(retirement savings)
  • A USA Today (Jan. 4, 2000) poll asked Americans
    who earn 35,000 or less how they expected to
    accumulate a 500,000 retirement nest-egg.
  • The results are summarized in the frequency table
    below

14
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16
Pie Charts
  • Variable values are the category labels
  • Each category must appear on the plot
  • Percentage of area of pie covered by pie is
    relative frequency or percent) of values falling
    in that category.
  • Can easily see percentage for each category
  • Note Less flexible than bar chart

17
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