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Published byDwight Mosley Modified over 5 years ago
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Warm Up The table below shows data on the number of live births per 1000 women (aged years) from 1965 to (Hint: enter the year as the years since 1900: 65, 70, …) Year Births Year Births 1) Find the equation of the LSRL, r and r2. 2) Check to see if a linear model is appropriate. Explain. 3) Estimate the birth rate in 1997. 4) The actual rate in 1997 was What is its residual?
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Computer Output Data is often presented in a summary form of a computer program output. For the warm up problem we might get the following: Dependent variable is: Births R squared = 67.43% S = 1.05 Variable Coefficient SE(Coeff) t-ratio p-value Constant Year <0.0001 What is the LSRL and r? What is the predicted number of births in 1972?
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Practice Assembly line workers were studied to find a correlation between experience (in months) of the worker and the time (in minutes) to complete an assembly task. The data is summarized below. Dependent variable is: Assembly time R squared = 62.0% S = 9.790 Variable Coefficient SE(Coeff) t-ratio p-value Constant Experience What is the LSRL and r? What is the predicted assembly time for a worker with 120 months of experience?
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Bears The following data on black bear age and weight came from a Canadian study completed in Age Weight (kg) Age Weight (kg) a) Make a scatterplot. b) Find the equation of the LSRL and the correlation r. c) Is there an influential point? Check by removing the outlier and calculating the LSRL and r again.
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