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Chapter 1
The Functions of Statistics
Two Classes of Statistics:
1. Descriptive
2. Inferential
Descriptive Statistics:
Functions of Descriptive Statistics:

a) Data reduction:
 allow a few numbers to summarize many
b) Measures of association
 quantify strength and direction of a relationship.
Types of Descriptive Statistics:
 Univariate Descriptive Statistics:
 Describes the distribution of a single variable
 Bivariate Descriptive Statistics
 Summarize relationship between two variables
 Multivariate Descriptive Statistics
 Summarize relationship between 3 or more
variables
Inferential Statistics:


Functions of Inferential Statistics:
a) Aids researchers in drawing inferences from
samples to populations
 Population
 all cases in which the researcher is interested.
 Samples
 carefully chosen subsets of the population.
b) Used to test significance of hypotheses
Types Of Variables
 Variables may be:
 Independent or dependent
 Discrete or continuous
 Nominal, ordinal, or interval-ratio
Types Of Variables:
Independent or Dependent
 In causal relationships:
CAUSE



EFFECT

independent variable  dependent variable
Types Of Variables:
Discrete or Continuous
 Discrete variables are measured in units that cannot
be subdivided.
 Anything regarding people
 Wrong when you hear the average number of children per
household being 2 ½…

 Continuous variables are measured in a unit that
can be subdivided infinitely.
Types of Variables:
Level Of Measurement


Levels of Measurement represent different
levels of numerical information contained
within the variable:
1. Nominal
2. Ordinal
3. Interval-ratio
Nominal Level Variables
 Used to classify or categorize
 Simplest (or crudest) level of measurement
 Numbers are for classification purposes only
 Examples:
Religion: 1 = Protestant, 2 = Catholic, 3=Jew,
4=None, 5=Other
Gender (dichotomy): 1 = Female, 0 = Male
Ordinal Level Variables
 Used to rank or order in a logical way
 Scores can be ranked from high to low or from more
to less
 Offers the property of “more than” or “less than” to
classifications
Example of an Ordinal Level Variable:

“Do you agree or disagree that University Health
Services should offer free contraceptives?”
5=strongly agree
4=agree
3=neutral
2=disagree
1=strongly disagree

 Because you can distinguish between the
scores of the variable using terms such as
“more, less, higher, or lower” the variable is
ordinal.
Interval-ratio Variables
 Scores are “actual” numbers
 Ratio variables meet the criteria for interval but also
have meaningful and true zero points
 Have equal intervals between scores indicating exact
distance, thus:
 Can indicate “how much more” (or less)
 Permits the use of mathematical operations
 Examples:
Age (in years)
Income (in dollars)
Number of children
 A true zero point (0 = no children)
 Equal intervals: each child adds one unit
 Different statistics require different
mathematical operations (ranking, addition,
square root, etc.)
 The level of measurement of a variable tells us
which statistics are permissible and
appropriate.
Determining the Level of Measurement of a Variable
Classify the level of measurement of the
following variables and tell level of
measurement:
 The numbers on an athlete’s jersey

 The dorm you live in
 Number of children in a family
 Fear of crime ( a lot, some, none)
 Number of hours per day respondent watches tv
 Tuition in dollars
Homework Assignment for Chapter 1:
 Problems 1.5 and 1.7

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Spring 2014 chapter 1

  • 1. Chapter 1 The Functions of Statistics
  • 2. Two Classes of Statistics: 1. Descriptive 2. Inferential
  • 3. Descriptive Statistics: Functions of Descriptive Statistics: a) Data reduction:  allow a few numbers to summarize many b) Measures of association  quantify strength and direction of a relationship. Types of Descriptive Statistics:  Univariate Descriptive Statistics:  Describes the distribution of a single variable  Bivariate Descriptive Statistics  Summarize relationship between two variables  Multivariate Descriptive Statistics  Summarize relationship between 3 or more variables
  • 4. Inferential Statistics:  Functions of Inferential Statistics: a) Aids researchers in drawing inferences from samples to populations  Population  all cases in which the researcher is interested.  Samples  carefully chosen subsets of the population. b) Used to test significance of hypotheses
  • 5. Types Of Variables  Variables may be:  Independent or dependent  Discrete or continuous  Nominal, ordinal, or interval-ratio
  • 6. Types Of Variables: Independent or Dependent  In causal relationships: CAUSE  EFFECT independent variable  dependent variable
  • 7. Types Of Variables: Discrete or Continuous  Discrete variables are measured in units that cannot be subdivided.  Anything regarding people  Wrong when you hear the average number of children per household being 2 ½…  Continuous variables are measured in a unit that can be subdivided infinitely.
  • 8. Types of Variables: Level Of Measurement  Levels of Measurement represent different levels of numerical information contained within the variable: 1. Nominal 2. Ordinal 3. Interval-ratio
  • 9. Nominal Level Variables  Used to classify or categorize  Simplest (or crudest) level of measurement  Numbers are for classification purposes only  Examples: Religion: 1 = Protestant, 2 = Catholic, 3=Jew, 4=None, 5=Other Gender (dichotomy): 1 = Female, 0 = Male
  • 10. Ordinal Level Variables  Used to rank or order in a logical way  Scores can be ranked from high to low or from more to less  Offers the property of “more than” or “less than” to classifications
  • 11. Example of an Ordinal Level Variable: “Do you agree or disagree that University Health Services should offer free contraceptives?” 5=strongly agree 4=agree 3=neutral 2=disagree 1=strongly disagree  Because you can distinguish between the scores of the variable using terms such as “more, less, higher, or lower” the variable is ordinal.
  • 12. Interval-ratio Variables  Scores are “actual” numbers  Ratio variables meet the criteria for interval but also have meaningful and true zero points  Have equal intervals between scores indicating exact distance, thus:  Can indicate “how much more” (or less)  Permits the use of mathematical operations  Examples: Age (in years) Income (in dollars) Number of children  A true zero point (0 = no children)  Equal intervals: each child adds one unit
  • 13.  Different statistics require different mathematical operations (ranking, addition, square root, etc.)  The level of measurement of a variable tells us which statistics are permissible and appropriate.
  • 14. Determining the Level of Measurement of a Variable
  • 15. Classify the level of measurement of the following variables and tell level of measurement:  The numbers on an athlete’s jersey  The dorm you live in  Number of children in a family  Fear of crime ( a lot, some, none)  Number of hours per day respondent watches tv  Tuition in dollars
  • 16. Homework Assignment for Chapter 1:  Problems 1.5 and 1.7