Positive, Negative, or No Correlation? No Correlation Positive Correlation Negative Correlation.

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Presentation transcript:

Positive, Negative, or No Correlation? No Correlation Positive Correlation Negative Correlation

Positive, Negative, or No Correlation? 4.Number of Homeless People vs. Crime Rate 5.Number of Storks in Denmark vs. the Number of children born 6.Age of Driver vs. Cost of Insurance Positive Correlation No Correlation Negative Correlation

Put the following correlation values in order from weakest to strongest. 0.29, -0.87, -0.41, 0.03, -0.59, -0.92, , 0.29, -0.41, -0.59, 0.68, -0.87, **Even though the #s are negative, the strong correlations are closer to 1**

Daily Check

Line of Best Fit Linear Regression

A little vocab… The line of best fit is the line that lies as close as possible to all the data points. Regression is a method used to find the equation of the line of best fit. Extrapolation is the use of the regression curve to make predictions outside the domain of values of the independent variable. Interpolation is used to make predictions within the domain values of the independent variable.

Example 1: The environment club is interested in the relationship between the number of canned beverages sold in the cafeteria and the number of cans that are recycled. The data they collected are listed in this chart. a)Plot the points to make a scatter plot. b)Use a straightedge to approximate the line of best fit by hand. c)Find an equation of the line of best fit for the data. # of Canned Drinks Sold # of Cans Recycled

Example 1:

Entering Data : TI 36X - Pro 1. DATA DATA 4 (this will clear all the data) 2. DATA (type in data) 3. 2 nd DATA 4. LinReg ax + b (for linear regression) ExpReg ab ^ x (for exponential regression) L1 L2 ONE YES CALC 5. a = b = r = 6. The equation of the line is y = a x + b. 7. Correlation Coefficient is r.

Example 2: The table shows the total outstanding consumer debt (excluding home mortgages) in billions of dollars in selected years. (Data is from the Federal Reserve Bulletin.) Let x = 0 correspond to a) Find the regression equation appropriate for this data set. Round values to two decimal places. L1L

Example 2: b)Find and interpret the slope of the regression equation in the context of the scenario represents the increase in consumer debt each year. c)Find the approximate consumer debt in d)Find the approximate consumer debt in 2008.

Example 3: The table below shows the number of deaths per 100,000 people from heart disease in selected years. (Data is from the U.S. National Center for Health Statistics.) Let x = 0 correspond to a) Find the regression equation appropriate for this data set. Round values to two decimal places. x =

Example 3: b)Find and interpret the slope of the regression equation in the context of the scenario is the decrease in deaths caused by heart disease each year. c)Find the approximate number of deaths due to heart disease in d)Find the approximate number of deaths due to heart disease in 2008.

Classwork Linear Regression