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Seth M. Noar, Ph.D.

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Widely used in the social sciences ... Oops you made a TYPE 1 ERROR. (a) Bingo. Correct decision! (1-a) Null is true. Reject ... – PowerPoint PPT presentation

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Title: Seth M. Noar, Ph.D.


1
Hypothesis Testing
  • Seth M. Noar, Ph.D.
  • Department of Communication
  • University of Kentucky

2
Hypothesis Testing
  • Widely used in the social sciences
  • Statistical significance is one way to examine
    whether our findings are important statistically
  • Numerous statistical tests allow us to test for
    statistical significance
  • Logic for numerous statistical tests is the same,
    even though the tests are different

3
Hypotheses
  • Research hypothesis (W M, p. 63)
  • Null hypothesis (W M, p. 63)
  • Two possibilities
  • M1 equal to M2 (or different only to the extent
    to which we would expect based on sampling error)
  • M1 unequal to M2
  • We cannot directly test our research hypothesis.
    We test the null hypothesis.

4
  • ARE THESE MEANS DIFFERENT???

5
Direction of tests
  • We can also use directional or non-directional
    tests
  • Two-tailed test Non-directional hypothesis
  • One-tailed test directional hypothesis
  • Note one-tailed test are more powerfully
    statistically.

6
Probability and Error
  • We must choose a probability level (p
  • The extent to which we risk error is directly
    related to the probability level
  • Type 1 error rejecting null hypothesis when it
    was true
  • However, we must balance this with statistical
    power probability of correctly rejecting null
    hypothesis

7
  • Rejection regions for 2-tailed test, p

8
  • Rejection regions for 1-tailed test, p

9
  • Probability of type 1 error, p

10
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11
  • Comparison of Type 1 2 errors, p

12
t-test
  • t-test is a significance test
  • Focuses on mean differences
  • When one would apply it
  • 1 IV 2-level nominal (dichotomous)
  • 1 DV continuous (must be interval)
  • For example Do treatment and control
    participants differ at the end of a treatment
    program?

13
Logic of t-test
  • M1 - M2
  • SE diff
  • SE diff standard error of the difference
    between means
  • M1 M2 is straightforward.
  • Larger the difference, larger the t value.
  • SE diff is a bit more complex.

14
Standard Error of Difference
  • Standard error of the difference between means
    takes into account
  • Sampling error
  • Does this by including sample size and
    variability in the formula.
  • As t grows larger, associated values of
    probability grow smaller (higher chance of
    significance)
  • Note Larger sample size often results in larger
    t values

15
Procedure
  • Calculate t value
  • Calculate degrees of freedom
  • (n-1) (n-1) OR (n n 2)
  • Look up critical value in Table
  • Our calculated t-value must be greater than the
    value in the table to be statistically
    significant

16
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17
Results
  • If our t value is significant at the probability
    level we have chosen (phypothesis.
  • This suggests that there are real differences
    between these means (e.g., they come from
    different populations).

18
Cautions related to significance
  • Statistical significance is NOT clinical
    significance.
  • Because two means are different statistically
    does NOT mean that the difference is meaningful
    or important.
  • Statistical significance must be interpreted
    within the context of any given study.
  • Measures of effect size are also very important.

19
More cautions on significance
  • Significant test controversy gets revisited every
    so often.
  • Some have suggested abandoning traditional
    statistical tests (e.g., Jacob Cohen).
  • Lines of argument include
  • Over-reliance on dichotomous statistical tests to
    tell us whats important
  • Statistical tests are often misused
  • Should rely more on effect sizes and confidence
    intervals

20
Hypothesis Testing 2
  • Seth M. Noar, Ph.D.
  • Department of Communication
  • University of Kentucky

21
ANOVA
  • Single Factor ANOVA Analysis of Variance
  • Focuses on mean differences
  • When one would apply it
  • 1 IV 2 or more nominal levels
  • 1 DV continuous (must be interval)

22
ANOVA
  • In many ways, similar to t test
  • Major difference is that it can handle more than
    2 levels of IV
  • For example Experiment with three groups
    Treatment, placebo, and no-treatment control.

23
Logic of ANOVA
  • MS between (among)
  • MS within
  • Calculate between group variance
  • Calculate within group variance
  • Divide to get an F value
  • We always expect within group variability
  • However, we would only expect between group
    variability if the groups were different

24
Degrees of Freedom
  • Degrees of Freedom
  • Between (among) groups (numerator)
  • Number of groups minus 1
  • K-1 3 1 2
  • Within groups (denominator)
  • N-1 in each group, times number of groups
  • N-1 5 1 4 x 3 12
  • Similar to t look up critical value in table to
    examine significance
  • In fact, t2 F (get same result whether applying
    t test or ANOVA)

25
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26
Results
  • Similar to t, if our F value is significant at
    the probability level we have chosen, we reject
    the null hypothesis.
  • F (2, 12) 16.25, p
  • However, if there are more than 2 levels of the
    IV, we do NOT know where the differences lie.
  • We need follow-up tests (post hoc tests) to know
    exactly where the differences are.

27
Follow-up Tests
  • Such tests allow us to know exactly where
    differences lie
  • Tests include Tukey, Scheffe, Duncan, and Newman
    Keuls
  • Some are more conservative, some more liberal
  • Tukey HSD test is often used, and is a reasonably
    balanced test

28
Variations on ANOVA
  • Repeated measures ANOVA
  • Instead of multiple groups, we have multiple time
    points
  • ANCOVA Analysis of covariance
  • Same as ANOVA, except that we control for a
    variable called a covariate (e.g., stress, other
    meds)
  • MANOVA Multivariate Analysis of Variance
  • Allows for multiple DVs

29
More cautions on significance
  • Significant test controversy gets revisited every
    so often.
  • Some have suggested abandoning traditional
    statistical tests (e.g., Jacob Cohen).
  • Lines of argument include
  • Over-reliance on dichotomous statistical tests to
    tell us whats important
  • Statistical tests are often misused
  • Should rely more on effect sizes and confidence
    intervals
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