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Scatter Plots A graph of a set of data pairs (x, y) Correlation Coefficient, r A number, denoted by r, from -1 to 1 that measures the strength and direction of a linear relationship between two variables 3 Types of Correlation Positive Negative No Correlation Positive Correlation Relationship between paired data when y tends to increase as x increases Negative Correlation Relationship between paired data when y tends to decrease as x increases No Correlation (or Zero Correlation) The points do not lie close to any line Strong Positive Correlation The points are clustered resembling a rising straight line with a positive slope. r is close to +1 http://www.regentsprep.org/regents/math/algebra/AD4/scatter.htm Weak Positive Correlation Points tend to rise, but this is a weak positive slope Strong Negative Correlation The points are clustered resembling a falling straight line with a negative slope. r is close to -1 Weak Negative Correlation Points tend to fall, but this is a weak negative slope No way to determine and no straight line forms 1. The scatter plot shows a relationship between hours worked and money earned. Which best describes the relationship between the variables? Strong Positive Correlation 2. The scatter plot shows a relationship between age and height. Which best describes the relationship between the variables? No Correlation 3. The scatter plot shows a relationship between age of a car and its value. Which best describes the relationship between the variables? Weak Negative Correlation 4. The scatter plot shows a relationship between number of customers and the temperature. Which best describes the relationship between the variables? Weak Positive Correlation Some Types of Regression Linear Regression - straight line form Some Types of Regression Quadratic Regression parabolic form (u-shape) Linear Regression A method for finding the equation of the best-fitting line, 1. Which choice is the best example of a line of best fit? 2. Matt considers whether or not the amount of time students study for a test are related. He determines that the more they study the higher grade they will get. What type of slope would the line of best fit have? A. B. C. D. negative positive undefined zero 3. What type of model best describes this data’s relationship? A. B. C. D. Linear Quadratic Exponential No relationship Hint: look at the rate of increase…is it constant? 4. What type of model best describes this data’s relationship? A. B. C. D. Linear Quadratic Exponential No relationship Hint: look at the rate of increase 5. What type of model best describes this data’s relationship? A. B. C. D. Linear Quadratic Exponential No relationship 6. The graph shows Jessica’s weight as it compares to her age. Using the line of best fit, what is the best approximation for her weight at age 9 A. B. C. D. 70 75 80 85 7. The table shows the average household size y in the U.S. from 1930 to 2000. y = -.021t + 3.9425 Years since Household 1930, t 0 size, y 4.11 10 3.67 20 3.37 30 3.35 40 3.14 50 2.76 60 2.63 70 2.62 Use the model and predict the average household size in 2030. (2030 – 1930) and substitute that in for t 1.84 Consumer Debt 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.) Years since 1985 Consumer Debt (billions) 0 5 585 789 10 15 1096 1693 Let x = 0 correspond to 1985. The best fit line is y 79.859 x 463.35 18 1987 y 79.859 x 463.35 8. Find the approximate consumer debt in 1998. 1998 1985 1501.517 billion 9. Find the approximate consumer debt in 2008. 2008 1985 2300.107 billion Health 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.) Years since 1960 Deaths 0 10 20 30 40 42 559 483 412 322 258 240 Let x = 0 correspond to 1960. The line of best fit is y 7.62 x 559.25 y 7.62 x 559.25 10. Find an approximation for the number of deaths due to heart disease in 1995. 1995 1960 293 11. Predict the number of deaths from heart disease in 2008. 2008 1960 193 almost 194 12. Which equation best fits the scatterplot? A. f(x) (x 3)2 4 C. f(x) (x 4)2 3 B. f(x) (x 3)2 4 D. f(x) (x 4)2 3 13. Which equation best fits the scatterplot? A. f(x) x2 8 x 22 C. f(x) x2 8 x 32 B. f(x) x2 8 x 10 D. f(x) x2 8x 10 14. Which equation best fits the scatterplot? 2 2 A. f(x) (x 25) 5 C. f(x) (x 25) B. f(x) 41 (x 25)2 5 D. f(x) 41 (x 25)2 1 4 1 4 15. What type of model would best fit the data? A. B. C. D. Linear Quadratic Exponential Cubic 16. What type of model would best fit the data? A. B. C. D. Linear Quadratic Exponential Cubic