Two Quantitative Variables: Linear Regression

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Presentation transcript:

Two Quantitative Variables: Linear Regression Section 2.6 Two Quantitative Variables: Linear Regression

Crickets and Temperature Can you estimate the temperature on a summer evening, just by listening to crickets chirp?

Crickets and Temperature Response Variable, y Explanatory Variable, x

Prediction If the crickets are chirping about 180 times per minute, your best guess at the temperature is 60 70 80

For a certain course, the regression line to predict grade G on the final based on number of hours studying H is One person studied 10 hours and received a 88 on the final. The predicted grade for this person is: 8 10 50 80 88

For a certain course, the regression line to predict grade G on the final based on number of hours studying H is One person studied 10 hours and received an 88 on the final. The residual for this person is: 8 10 50 80 88

We can interpret the slope in context to mean that: For a certain course, the regression line to predict grade G on the final based on number of hours studying H is We can interpret the slope in context to mean that: Predicted grade will go up by 1 point for a person who studies 3 more hours. Predicted grade will go up by 3 points for a person who studies 1 more hour. Three more hours of studying gives 3 more points on the final The rise over the run is 3/1. The response variable goes up by 1 if the explanatory variable goes up by 3.

We can interpret the intercept in context to mean that: For a certain course, the regression line to predict grade G on the final based on number of hours studying H is We can interpret the intercept in context to mean that: If a person does not study at all, the predicted grade will be 50. A predicted grade of zero goes with studying 50 hours. The more someone studies, the higher the predicted grade. The line crosses the axis at 50. The response variable is 50 if the explanatory variable is 0.

Regression Model 𝑊𝑔𝑡 =−260.4+6.02∙𝐻𝑔𝑡 Which is a correct interpretation? The average subject is just over 6 feet tall. For every extra 6.02 inches in height, the predicted weight goes up by one pound. Predicted weight increases by 6.02 pounds for every additional inch in height. A zero inch tall person is predicted to weigh about −260.4 pounds.

Exercise and GPA Are the hours of exercise per week and grade point average of students positively associated negatively associated not associated other All answers are correct, since it is really very hard to see what is going on.

Exercise and GPA Are the hours of exercise per week and grade point average of students positively associated negatively associated not associated other STILL, all answers are correct. Even though the regression line has a negative slope, the association may be very mild. 𝐺𝑃𝐴 =3.26−0.0114∙𝐸𝑥𝑒𝑟𝑐𝑖𝑠𝑒

Life Expectancy and Birth Rate Which of the following interpretations is correct? A decrease of 0.9953 in the birth rate corresponds to a 1 year increase in predicted life expectancy Increasing life expectancy by 1 year will cause birth rate to decrease by 0.9953 Both Neither Coefficients: (Intercept) LifeExpectancy 91.8703 -0.9953 The model is predicting birth rate based on life expectancy, not the other way around Can only make conclusions about causality from a randomized experiment.