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Topics:%20Significance%20Testing%20of%20Correlation%20Coefficients

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Topics: Significance Testing of Correlation Coefficients Inference about a population correlation coefficient: Testing H0: xy= 0 or some specific value – PowerPoint PPT presentation

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Title: Topics:%20Significance%20Testing%20of%20Correlation%20Coefficients


1
Topics Significance Testing of Correlation
Coefficients
  • Inference about a population correlation
    coefficient
  • Testing H0 ?xy 0 or some specific value
  • Testing H0 ? xy 0 for two or more correlations
    based on the same sample
  • Inference about a difference between population
    correlation coefficients
  • Testing H0 ? xy1 - ? xy2 0 (or ? xy1 ? xy2 )

2
Inference about a Correlation Coefficient
  • Purpose to determine whether two variables (X
    and Y) are linearly related in the population.
  • H0 ?xy 0
  • H0 ?xysome specified value

3
Test of Correlation Coefficient
  • H0 ?xy some specified value
  • H1 ?xy not some specified value ( lt or gt than
    some specified value)
  • Transform sample and population correlation
    coefficients to Zr and Z?
  • Calculate t zobserveddistance of transformed rxy
    from the transformed population ?xy in standard
    error points
  • Test against zcritical (determined from table for
    chosen level of significance)

4
Sampling Distribution of rxy
5
Example
  • Study of relationship between achievement
    motivation and performance in school (grade point
    average). Theory and prior research suggests
    that the correlation between these two variables
    is positive and moderately high (.50)
  • The observed correlation in this study was .75
    based on N63

6
Test of Correlation Coefficient One Sample
  • H0 ?xy .50
  • H1 ?xy not .50
  • Level of Significance .05
  • Verify Assumptions
  • Independence of score pairs
  • Bivariate Normality
  • n gt 30

7
Assumptions
  • Independence where the pair of scores for any
    particular student is independent of the pair of
    scores of every other student.
  • Bivariate Normality For each value of X, the
    values of Y are normally distributed for each
    value of Y the values of X are normally
    distributed each variable normally distributed
  • Sample Size n gt 30

8
Bivariate Normal
For each value of X the Y scores are normally
distributed
For each value of Y the X scores are normally
distributed
9
Example Contd
  • Find Fisher Z transformation for rxy and ?xy
    (from a Table I)
  • r .75 so Zr .973
  • ? .50 so Z? .549
  • Set up Zrobserved Zr-Z?/sZ to get distance of
    Zr from Z? in standard error points
  • Computation formula for Zrobserved
  • (Zr-Z?) (sqrt n-3)
  • (.973 - .549)/7.75
  • (.424)(7.75) 3.29

10
Example Contd
  • Find zcritical (from table or memory) 1.96
  • Decision Rule
  • Reject H0 if absolute value of zrobserved gt 1.96
    (3.29 is greater than 1.96)
  • Do not reject H0 if absolute value of zrobserved
    lt 1.96
  • Conclusion the relationship between achievement
    motivation and school performance (grade point
    average) is greater than the specified value of
    .50

11
The Simple Approach When H0 ?xy 0
  • H0 ?xy 0 H1 ?xy gt 0
  • Sample size 102
  • r .24
  • Compare robserved with r critical (.05,df100)
    .1638 (from Table G)
  • Since .24 gt .1638 can reject the null
    hypothesis and conclude that there is a positive
    correlation in the population--our best estimate
    of that correlation is .24

12
Example Testing Two or More Correlation
Coefficients
  • Working example Suppose the following measures
    were collected on 82 subjects GPA,.
    Self-concept, and locus of control
    (internal-external)

13
Testing H0 ?xy 0 for Two or More Correlations
Based on Same Sample (N82)
14
Testing H0 ?xy 0 for Two or More Correlations
Based on Same Sample
  • H0
  • H1 (non-directional)
  • Level of significance ? .01 (level of
    significance)
  • Assumptions
  • Number of Variables
  • Number of dfs
  • Critical Value (from Table H)
  • Decisions and conclusions

15
Inference about Difference between Population
Correlation Coefficients
  • To determine whether or not the observed
    difference between two correlation coefficients
    (r1-r2) may be due to chance or represents a
    difference in population coefficients

16
Example Testing Difference between Two
Correlation Coefficients
  • To determine whether or not the observed
    difference between two correlation coefficients
    (r1-r2) may be due to chance or represents a
    difference in population coefficients
  • In the Overachievement Study, the correlation
    between SAT scores and GPA was .0214 for the
    sample of 40 subjects. However the correlation
    between SAT and GPA for men was -.2369 and for
    women was .3760.

17
Example Differences (cont)
  • H0
  • H1 (non directional)
  • Significance Level ? .05
  • Check assumptions
  • Convert sample rs to Zrs (Table I) male Zrmale
    -.239 female Zrfemale .394
  • Compute standard error of the difference between
    correlations srmale-rfemale .34 (via
    formula)
  • Calulate zrmale- rfemale(observed) Zrmale- -
    Zrfemale/ srmale-rfemale -.633/.34 -1.86
  • Find z rmale-rfemale(critical) /-1.96 (.05,
    two-tailed)
  • Decision and Conclusion
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