correlation association between 2 variables 1 2 suppose we wished to graph the relationship between...

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Correlation Association between 2 variables 1 2

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CorrelationAssociation between 2 variables12

Suppose we wished to graph the relationship between foot length 586062646668707274Height468101214Foot Lengthand heightIn order to create the graph, which is called a scatterplot or scattergram, we need the foot length and height for each of our subjects.of 20 subjects.1

1. Find 12 inches on the x-axis.2. Find 70 inches on the y-axis.3. Locate the intersection of 12 and 70.4. Place a dot at the intersection of 12 and 70.Foot LengthAssume our first subject had a 12 inch foot and was 70 inches tall.1

5. Find 8 inches on the x-axis.6. Find 62 inches on the y-axis.7. Locate the intersection of 8 and 62.8. Place a dot at the intersection of 8 and 62.9. Continue to plot points for each pair of scores.Assume that our second subject had an 8 inch foot and was 62 inches tall.12

Notice how the scores cluster to form a pattern.The more closely they cluster to a line that is drawn through them, the stronger the linear relationship between the two variables is (in this case foot length and height).12

If the points on the scatterplot have an upward movement from left to right, we say the relationship between the variables is positive. 1

If the points on the scatterplot have a downward movement from left to right, we say the relationship between the variables is negative. 2

A positive relationship means that high scores on one variable are associated with high scores on the other variable are associated with low scores on the other variable. It also indicates that low scores on one variable 1

A negative relationship means that high scores on one variable are associated with low scores on the other variable. are associated with high scores on the other variable. It also indicates that low scores on one variable 1

Not only do relationships have direction (positive and negative), they also have strength (from 0.00 to 1.00 and from 0.00 to 1.00).The more closely the points cluster toward a straight line,the stronger the relationship is.

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A set of scores with r= 0.60

has the same strength as a set of scores with r= 0.60 because both sets cluster similarly. 1

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For this procedure, we use Pearsons r (also known as a Pearson Product Moment Correlation Coefficient). This statistical procedure can only be used when BOTH variables are measured on a continuous scale and you wish to measure a linear relationship.

Linear Relationship

Curvilinear RelationshipNOPearson r1

Formula for correlations

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1a65

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Assumptions of the PMCCThe measures are approximately normally distributedThe variance of the two measures is similar (homoscedasticity) -- check with scatterplotThe relationship is linear -- check with scatterplotThe sample represents the populationThe variables are measured on a interval or ratio scale12

ExampleWell use data from the class questionnaire in 2005 to see if a relationship exists between the number of times per week respondents eat fast food and their weightWhats your guess (hypothesis) about how the results of this test will turn out? .5? .8? ???1

ExampleTo get a correlation coefficient:Slide the variables over...

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ExampleSPSS outputThe red is our correlation coefficient. The blue is our level of significance resulting from the testwhat does that mean?123

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