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CORRELATIONS: TESTING RELATIONSHIPS BETWEEN TWO METRIC VARIABLES Lecture 18:

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Presentation on theme: "CORRELATIONS: TESTING RELATIONSHIPS BETWEEN TWO METRIC VARIABLES Lecture 18:"— Presentation transcript:

1 CORRELATIONS: TESTING RELATIONSHIPS BETWEEN TWO METRIC VARIABLES Lecture 18:

2 Agenda 2 Reminder about Lab 3 Brief Update on Data for Final Correlations

3 Probability Revisited 3 To make a reasonable decision, we must know:  Probability Distribution  What would the distribution be like if it were only due to chance?  Decision Rule  What criteria do we need in order to determine whether an observation is just due to chance or not.

4 Quick Recap of An Earlier Issue: Why N-1? 4 If we have a randomly distributed variable in a population, extreme cases (i.e., the tails) are less likely to be selected than common cases (i.e., within 1 SD of the mean).  One result of this: sample variance is lower than actual population variance. Dividing by n-1 corrects this bias when calculating sample statistics.

5 Checking for simple linear relationships 5 Pearson’s correlation coefficient  Measures the extent to which two metric or interval-type variables are linearly related  Statistic is Pearson r, or the linear or product-moment correlation Or, the correlation coefficient is the average of the cross products of the corresponding z-scores.

6 Correlations 6 Ranges from zero to 1, where 1 = perfect linear relationship between the two variables.  Negative relations  Positive relations Remember: correlation ONLY measures linear relationships, not all relationships!

7 Interpretation 7 Recall that Correlation is a precondition for causality– but by itself it is not sufficient to show causality (why?) Correlation is a proportional measure; does not depend on specific measurements Correlation interpretation:  Direction (+/-)  Magnitude of Effect (-1 to 1); shown as r  Statistical Significance (p<.05, p<.01, p<.001)

8 Correlation: Null and Alt Hypotheses 8 Null versus Alternative Hypothesis  H 0  H 1, H 2, etc Test Statistics and Significance Level  Test statistic  Calculated from the data  Has a known probability distribution  Significance level  Usually reported as a p-value (probability that a result would occur if the null hypothesis were true). pricempg price1.0000 mpg-0.46861.0000 0.0000

9 Factors which limit Correlation coefficient 9 Homogeneity of sample group Non-linear relationships Censored or limited scales Unreliable measurement instrument Outliers

10 Homogenous Groups 10

11 Homogenous Groups: Adding Groups 11

12 Homogenous Groups: Adding More Groups 12

13 Separate Groups (non-homogeneous) 13

14 Non-Linear Relationships 14

15 Censored or Limited Scales… 15

16 Censored or Limited Scales 16

17 Unreliable Instrument 17

18 Unreliable Instrument 18

19 Unreliable Instrument 19

20 Outliers 20

21 Outliers 21 Outlier

22 22 Examples with Real Data…


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