Problem 1: The regression below relates earnings to years of experience for a sample of 30 working adults.   wage = 15.6   + 1.4*exp   Predictor        Coef     SE Coef          T  Constant         15.6       2.38          6.55   Exp              1.40        .60          2.33   where wage equals hourly wage rate ($/hour) and exp equals years of work experience   a)According to the above regression results, by how much does a year of experience increase the hourly wage rate?   b)For a = .05, test the hypothesis that increases in experience are associated with increases in earnings. Clearly state the null and alternative hypotheses, show all relevant statistics for performing the test, and report the conclusion of your test.   c)For a = .05 test the hypothesis that a 1year increase in experience increases the wage rate by more than $1/hour. Clearly state the null and alternative hypotheses, show all relevant statistics for performing the test, and report the conclusion of your test.   d) What can you conclude from your answers to parts a-c? How can we explain these differences?          e) For the wage regression coefficient, calculate a 95% confidence for its value and in 1 or 2 sentences describe its interpretation.     Problem 2:  Bike Sharing Data on the ISLE platform represent 731 days of recorded data with the following variable definitions: - workingday : if day is neither weekend nor holiday is 1, otherwise is 0. - temp : Normalized temperature in Celsius. - atemp: Normalized feeling temperature in Celsius. - hum: Normalized humidity. - windspeed: Normalized wind speed. - count: count of total bike rentals   a) Create a scatterplot in ISLE that shows the relationship between temperature (independent variable) and count (dependent variable). Does a pattern exist?   b) What is the least squares linear regression equation to model this relationship? How do we interpret this coefficient in the context of the problem? Paste your ISLE output.     c) What information should we use to make inferences about ? For α=.05, use ISLE to test whether each one degree increase in temperature increases the count of rentals by more than 6000. Clearly, state the null and alternative hypotheses, test statistic, and the conclusion of the test.   d) In terms of R2, which of the four weather variables is the worst predictor of bike rentals? Produce a scatterplot of each comparison.

College Algebra
7th Edition
ISBN:9781305115545
Author:James Stewart, Lothar Redlin, Saleem Watson
Publisher:James Stewart, Lothar Redlin, Saleem Watson
Chapter1: Equations And Graphs
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Problem 1: The regression below relates earnings to years of experience for a sample of 30 working adults.

 

wage = 15.6   + 1.4*exp

 

Predictor        Coef     SE Coef          T 

Constant         15.6       2.38          6.55  

Exp              1.40        .60          2.33

 

where wage equals hourly wage rate ($/hour) and exp equals years of work experience

 

a)According to the above regression results, by how much does a year of experience increase the hourly wage rate?

 

b)For a = .05, test the hypothesis that increases in experience are associated with increases in earnings. Clearly state the null and alternative hypotheses, show all relevant statistics for performing the test, and report the conclusion of your test.

 

c)For a = .05 test the hypothesis that a 1year increase in experience increases the wage rate by more than $1/hour. Clearly state the null and alternative hypotheses, show all relevant statistics for performing the test, and report the conclusion of your test.

 

d) What can you conclude from your answers to parts a-c? How can we explain these differences? 

       

e) For the wage regression coefficient, calculate a 95% confidence for its value and in 1 or 2 sentences describe its interpretation.

 

 

Problem 2:  Bike Sharing Data on the ISLE platform represent 731 days of recorded data with the following variable definitions:

- workingday : if day is neither weekend nor holiday is 1, otherwise is 0.

  • - temp : Normalized temperature in Celsius.
  • - atemp: Normalized feeling temperature in Celsius.
  • - hum: Normalized humidity.
  • - windspeed: Normalized wind speed.
  • - count: count of total bike rentals

 

a) Create a scatterplot in ISLE that shows the relationship between temperature (independent variable) and count (dependent variable). Does a pattern exist?

 

b) What is the least squares linear regression equation to model this relationship? How do we interpret this coefficient in the context of the problem? Paste your ISLE output.

 

 

c) What information should we use to make inferences about ? For α=.05, use ISLE to test whether each one degree increase in temperature increases the count of rentals by more than 6000. Clearly, state the null and alternative hypotheses, test statistic, and the conclusion of the test.

 

d) In terms of R2, which of the four weather variables is the worst predictor of bike rentals? Produce a scatterplot of each comparison.

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