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A Primer for Inferential Statistics

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Title: A Primer for Inferential Statistics


1
Chapter 12
  • A Primer for Inferential Statistics

2
What Does Statistically Significant Mean?
  • Its the probability that an observed difference
    or association is a result of sampling
    fluctuations, and not reflective of a true
    difference in the population from which the
    sample was selected

3
Example 1
  • Suppose we test differences between high school
    men and women in the hours they study females
    spend 12 minutes more per night than males and
    the result is analyzed and shown to be
    statistically significant
  • It means that less than 5 of the time could the
    difference be due to chance sampling factors

4
Example 2
  • Suppose we measure the difference in self-esteem
    between 12 year old males and females and get a
    statistically significant difference, with males
    having higher self-esteem
  • This means that the difference probably reflects
    a true difference in the self-esteem levels.
    Wrong lt 5 of the time.

5
Example 3
  • You test the relation between gender and
    self-esteem a test of significance indicates
    that the null hypothesis should be accepted. What
    does this mean?
  • It means that more than 5 of the time the
    difference you are getting could be the result of
    sample fluctuations

6
Clinically Significance
  • Clinical significance means the findings must
    have meaning for patient care in the presence or
    absence of statistical significance
  • Statistical significance indicates that the
    findings are unlikely to result from chance,
    clinical significance requires the nurse to
    interpret the findings in terms of their value to
    nursing

7
Sample Fluctuation
  • Sample fluctuation is the idea that each time we
    select a sample we will get somewhat different
    results
  • If we selected repeated samples, and plotted the
    means, they would be normally distributed but
    each one would be different

8
A Test of Significance
  • A test of significance reports the probability
    that an observed difference is the result of
    sampling fluctuations and not reflective of a
    real difference in the population from which
    the sample has been taken

9
Research Null Hypothesis
  • Research Hypothesis reference is to your
    predicted outcome.
  • Null Hypothesis the prediction that there is no
    relation between the variables.
  • It is the null hypothesis that is tested

10
Testing the Null Hypothesis
  • In a test, you either accept the null hypothesis
    or you reject it.
  • To accept the null hypothesis is to conclude that
    there is no difference between the variables
  • To reject the null is to conclude that there
    probably is a difference between the variables.

11
One- and Two-Tailed Tests
  • If you predict the direction of a relationship,
  • you do a one-tailed test if you do not predict
  • the direction, you do a two-tailed test.
  • Example females are less approving of violence
    than are males (one-tailed)
  • Example there is a gender difference in the
    acceptance of violence (two-tailed)

12
Type I II Errors
  • TYPE 1. Reject a null hypothesis (that states no
    relationship between variables) when it should be
    accepted
  • TYPE 2. Accept a null hypothesis when it should
    be rejected
  • RAAR -Reject when you should accept Accept when
    you should reject-the first 2 letters give you
    type 1, the second two letters, type 2

13
Chi-Square Red White Balls
  • The Chi-square (X2) involves a comparison of
    expected frequencies with observed frequencies.
    The formula is

X2 ?
(fo - fe)2
fe
14
One Sample Chi-Square Test
  • Suppose the following incomes
  • INCOME STUDENT GENERAL
  • SAMPLE POPULATION
  • Over 100,000 30 15.0 7.8
  • 40,000 - 99,999 160 80.0 68.9
  • Under 40,000 10 5.0 23.3
  • TOTAL 200 100.0 100.0

15
The Computation
  • Remember, Chi-squares compare expected
    frequencies (assuming the null hypothesis is
    correct) to the observed frequencies.
  • To calculate the expected frequencies simply
    multiply the proportion in each category of the
    general population times the total no. of
    students (200).
  • Why do you do this?

16
Why?
  • If the student sample is drawn equally from all
    segments of society then they should have the
    same income distribution (this is assuming the
    null hypothesis is correct).
  • So what are the expected frequencies in this case?

17
Expected Frequencies fe
  • Frequency Frequency
  • Observed Expected
  • 30 15.6 (200 x .078)
  • 160 137.8 (200 x .689)
  • 10 46.6 (200 x .233)
  • Degrees of Freedom 2

18
Decision
  • Look up Chi square value in Appendix p. 399
  • 2 degrees of freedom
  • 1 tailed test (use column with value .10)
  • Critical Value is 4.61
  • Chi-Square calculated 45.61
  • Decision (Calculated exceeds Critical) Reject
    null hypothesis

19
Standard Chi-Square Test
  • Drug use by Gender
  • 3 categories of drug use (no experience, once or
    twice, three or more times)
  • row marginal times column marginal divided by
    total N of cases yields expected frequencies
  • degrees of freedom (row - 1)(columns - 1) 2.

20
Decision
  • With 2 degrees of freedom, 2-tailed test, the
    Critical Value is 5.99
  • Calculated Chi-Square is 5.689
  • Does not equal or exceed the Critical Value
  • So, your decision is what?
  • Accept the null hypothesis

21
T-Tests
  • Sample sizes lt 30
  • Dependent variable measured at ratio level
  • Independent assignment to treatments
  • Treatment has two levels only
  • Population normally distributed

22
Two T-Tests Between Within
  • Between-Subjects T-Test used in an experimental
    design, with an experimental and a control group,
    where the groups have been independently
    established.
  • Within-Subjects In these designs the same person
    is subjected to different treatments and a
    comparison is made between the two treatments.
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