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AP Statistics Section 3.1B Correlation A scatterplot displays the direction, form and the strength of the relationship between two quantitative variables. Linear relations are particularly important because a straight line is a simple pattern that is quite common. We say a linear relation is strong if the points lie close to a straight line and weak if they are widely scattered about the line. Relying on our eyes to try to judge the strength of a linear relationship is very subjective. We will be determining a numerical summary called the __________. correlation The correlation ( r ) measures the direction and the strength of the linear relationship between two quantitative variables. The formula for correlation of variables x and y for n individuals is: 1 n Xi X r n 1 i1 sX Yi Y s Y where Xi and Yi are values for the first individual , X 2 and Y2 the second individual , etc. TI 83/84: Put data into 2 lists, say L1 and L2 STAT CALC 8:LinReg(a+bx) L1, L2 ENTER Note: If r does not appear,2nd 0 (Catalog) Scroll down to “Diagnostic On” Press ENTER twice Find r for the data on sparrowhawk colonies from section 3.1 A r .7485 Important facts to remember when interpreting correlation: 1. Correlation makes no distinction between __________ explanatory and ________ response variables. 2. r does not change when we change the unit of measurement of x or y or both. 3. Positive r indicates a ________ positive association between the variables and negative r indicates a ________ negative association. 4. The correlation r is always between ___ 1 and ___. 1 Values of r near 0 indicate a very _____ weak relationship. Example 1: Match the scatterplots below with their corresponding correlation r 6 4 2 1 3 5 Cautions to keep in mind: 1. Correlation requires both variables be quantitative. 2. Correlation does not describe curved relationships between variables, no matter how strong. 3. Like the mean and standard deviation, the correlation is NOT resistant to outliers. What effect does adding an outlier have on r and why? r will move closer to zero, because with the outlier the points do not lie as close to a straight line as they would without the outlier. 4. Correlation is not a complete summary of two-variable data. Ideally , give the mean and standard deviations of both x and y along with the correlation.