Mat 303 Project One Summary Reportfull Namesnhu Emailsouthern New ✓ Solved

MAT 303 Project One Summary Report [Full Name] [SNHU Email] Southern New Hampshire University Note: Replace the bracketed text on page one (the cover page) with your personal information. 1. Introduction Discuss the statement of the problem in terms of the statistical analyses that are being performed. Be sure to address the following: · What is the data set that you are exploring? · How will your results be used? · What type of analyses will you be running in this project? Answer the questions in a paragraph response.

Remove all questions and this note before submitting! Do not include R code in your report. 2. Data Preparation There are some important variables that are used in this project. Identify and explain these variables. · What are the important variables in this data set? · How many rows and columns are present in this data set?

Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report. 3. Model #1 - First Order Regression Model with Quantitative and Qualitative Variables Correlation Analysis · Create the following scatterplots and include a copy of each in this section: · Price (price) vs. the living area (sqft_living) · Price (price) vs. the age of the home (age) · Describe what trends, if any, exist for each scatterplot. · Report the correlation coefficients between the following variables: · Price (price) vs. the living area (sqft_living) · Price (price) vs. the age of the home (age) · Describe the strength and direction of each correlation coefficient.

Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report. Reporting Results · Write the general form of the multiple regression model using price as the response variable and living area, grade of the home, number of bathrooms, and view as predictor variables. Use (where i 1, 2, ... ) to represent the slope parameters for all predictor variables.

Note: You will use the variables living area, grade of the home, and number of bathrooms as quantitative variables and view as a qualitative variable in this model. Use the equation editor to write the general form of the regression equation. · Create the multiple regression model for price as a response variable with living area, grade of the home, number of bathrooms and views as predictor variables. Write the model equation. Note: Use the equation editor to write the regression equation. · What are the values of R2 and for the model? Provide your interpretation of these statistics. · Interpret the beta estimates for the living area and lake view. · Obtain the residuals and fitted values to create the following plots.

Include these plots and comment on the validity of assumptions. Include any tables for the values for residuals or the fitted values. · Residuals against Fitted Values · Normal Q-Q plot Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report. Evaluating Significance of Model · Is the model significant at a 5% level of significance?

Carry out the overall F-test by identifying the null hypothesis, the alternative hypothesis, the P-value, and the conclusion of the test. · Which terms are significant at a 5% level of significance? Carry out individual beta tests by identifying the null hypothesis, the alternative hypothesis, the P-value, and the conclusion of each test. Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report.

Making Predictions Using Model · What is the predicted price for a home that backs out to a lake and has a 2,150 sq ft living area, 7 grade, and three bathrooms? Obtain 90% prediction and confidence intervals for the price of this home. Interpret each interval. · What is the predicted price for a home that backs out to a road and has a 2,150 sq ft living area, 7 grade, and three bathrooms? Obtain 90% prediction and confidence intervals for the price of this home. Interpret each interval. · Why is the prediction interval wider than the confidence interval?

Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report. 4. Model #2 - Complete Second Order Regression Model with Quantitative Variables Correlation Analysis · Create scatterplots of: · Price (price) vs. the age of appliances (appliance_age) · Price (price) vs. the crime rate per 100,000 people (crime) · Comment on each scatterplot.

Is a second order model appropriate using these variables? Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report. Reporting Results · Write the general form of a complete second order model for price using age of appliances and crime rate per 100,000 people as predictors.

Use (where i 1, 2, ... ) to represent the slope parameters for all predictor variables. Note: Use age of appliances and crime rate as quantitative variables in this model. Use the equation editor to write the general form of the regression equation. · Create and write the equation for the complete second order regression model for price using age of appliances and crime rate per 100,000 people as predictors. Note: Use age of appliances and crime rate as quantitative variables in this model. Use the equation editor to write the general form of the regression equation. · What are the values of and for the model?

Provide your interpretation of these statistics. · Obtain the residuals and fitted values to create the following plots. Include these plots and comment on the validity of assumptions. Include any tables for the values for residuals or the fitted values. · Residuals against Fitted Values · Normal Q-Q plot Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report.

Evaluating Significance of Model · Is the model significant at a 5% level of significance? Carry out the overall F-test by identifying the null hypothesis, the alternative hypothesis, the P-value, and the conclusion of the test. · Which terms are significant at a 5% level of significance? Carry out individual beta tests by identifying the null hypothesis, the alternative hypothesis, the P-value, and the conclusion of each test. Answer the questions in a paragraph response. Remove all questions and this note before submitting!

Do not include R code in your report. Making Predictions Using Model · What is the predicted price for a home that has one-year-old appliances and is in an area that has a crime rate of 81.02 per 100,000 individuals? Obtain 90% prediction and confidence intervals for the price of this home. Interpret each interval. · What is the predicted price for a home that has 15-year-old appliances and is in an area that has a crime rate of 200.50 per 100,000 individuals? Obtain 90% prediction and confidence intervals for the price of this home.

Interpret each interval. Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report. 5.

Nested Models F-Test Reporting Results · Write the general form of a first order model for price using age of appliances and crime rate per 100,000 people as predictors. Include the interaction term between age of appliances and crime rate. Use (where i 1, 2, ... ) to represent the slope parameters for all predictor variables. Note: Use age of appliances and crime rate as quantitative variables in this model. Use the equation editor to write the general form of the regression equation. · Create and write the equation for a first order regression model for price using age of appliances and crime rate per 100,000 people as predictors.

Include the interaction term between age of appliances and crime rate. Note: Use age of appliances and crime rate as quantitative variables in this model. Use the equation editor to write the general form of the regression equation. Answer the questions in a paragraph response. Remove all questions and this note before submitting!

Do not include R code in your report. Evaluating Significance of Model · Is the model significant at a 5% level of significance? Carry out the overall F-test by identifying the null hypothesis, the alternative hypothesis, the P-value, and the conclusion of the test. · Which terms are significant at a 5% level of significance? Carry out individual beta tests by identifying the null hypothesis, the alternative hypothesis, the P-value, and the conclusion of each test. Answer the questions in a paragraph response.

Remove all questions and this note before submitting! Do not include R code in your report. Model Comparison You will now compare this model with the second order model for price using age of appliances and crime rate per 100,000 people as predictors to test whether the quadratic (squared) terms contribute in predicting the prices of homes. The complete second order model is Model #2, which you created in this project. · In general, what is a reduced and a complete model when comparing two models? · Write the general form of the model that is the reduced model in this comparison. · Write the general form of the model that is the complete model in this comparison. · Run the nested model F-test at a 5% level of significance to evaluate if the quadratic (squared) terms are needed.

Identify the null hypothesis, the alternative hypothesis, the P-value, and the conclusion of the test. Answer the questions in a paragraph response. Remove all questions and this note before submitting! Do not include R code in your report. 6.

Conclusion Describe the results of the statistical analyses clearly, using proper descriptions of statistical terms and concepts. Fully describe what these results mean for your scenario. · Which model would you choose to predict house prices? Briefly summarize your findings in plain language. · What is the practical importance of the analyses that were performed? Answer the questions in a paragraph response. Remove all questions and this note before submitting!

Do not include R code in your report. 7. Citations You were not required to use external resources for this report. If you did not use any resources, you should remove this entire section. However, if you did use any resources to help you with your interpretation, you must cite them.

Use proper APA format for citations. Insert references here in the following format: Author's Last Name, First Initial. Middle Initial. (Year of Publication). Title of book: Subtitle of book, edition. Place of Publication: Publisher.

1 A Small trucking company is determining the composition of its next trucking job. The load master has his choice of seven different types of cargo, which may be loaded in full or in part. The specifications of the cargo type are shown in the following table. The goal is to maximize the amount of freight, in terms of dollars, for the trip. The truck can hold up to 900 pounds of cargo in a 2500 cubic-foot space.

Cargo Type Freight per Pound Volume per Pound (Cu. Ft.) Pounds Available A $ 8.. B .. C