capstone project

Directions

Using the “North Valley Real Estate” Excel Dataset located in the “Files” Section of the course (Left-hand Side Menu Bar). The Final Research Project for the course, and all supporting assignments to the project, will be executed using the “North Valley Real Estate” dataset.

Please make sure that your paper conforms to APA style requirements, 7th edition.

General Guidelines for a Successful Capstone Term Project Report include the following:

  1. Provide a general introduction, background, and purpose of the paper, with your thesis resting on the idea of using statistical analysis to achieve better business decision and increase profitability and business activities. Also, include a discussion of the real estate industry and the impacts that influence the health, viability, and success of the real estate marketplace; particularly in the Northeastern region of the U.S.
  2. State why the dependent variable has been chosen for analysis. Then make a general statement about the model you will be employing, for example:

The dependent variable _______ is determined by variables ________, ________, ________, and __________.

  1. Identify the primary independent variable and defend why it is important by stating:

The most important independent variable in this analysis is ________ because _________.

In your paragraphs, cite and discuss the research sources/references that support the thesis, i.e., the model you have chosen.

  1. Write the general form of the regression model (less intercept and coefficients), with the variables named appropriately so the reader can identify each variable at a glance:

Dep_Var = Ind_Var_1 + Ind_Var_2 + Ind_Var_3

  • For instance, a typical model would be written:

Price_of_Home = Square_Footage + Number_Bedrooms + Lot_Size.

  • Price_of_Home: brief definition of dependent variable
  • Square_Footage: brief definition of first/primary independent variable
  • Number_Bedrooms: brief definition of second independent variable
  • Lot_Size: brief definition of third independent variable
  1. Define and defend all variables, including the dependent variable, in a single paragraph for each variable. Also, state the expectations for each independent variable. These paragraphs should be in numerical order, i.e., dependent variable, X1, then X2, etc. In each paragraph, the following should be addressed:
  • How is the variable defined in the data source?
  • Which unit of measurement is used?
  • For the independent variables: why do the independent variables determine the dependent variable?
  • What sign is expected for the independent variable’s coefficient, positive or negative? Why?
  1. Data Description: Describe the data and identify the data sources. From which general sources and from which specific tables are the data taken? Which year or years were the data collected. Are there any data limitations?
  2. Presentation and Interpretation of Results. Write the regression (prediction) equation:

Dep_Var = Intercept + c1 * Ind_Var_1 + c2 * Ind_Var_2 + c3 * Ind_Var_3

  1. Identify and interpret the adjusted R2 (one paragraph). Define adjusted R2, what does the value of the adjusted R2 reveal about the model? If the adjusted R2 is low, how has the choice of independent variables created this result?
  2. Identify and interpret the F-test (one paragraph). Using the p-value approach, is the null hypothesis for the F-test rejected or not rejected? Why or why not? Interpret the implications of these findings for the model.
  3. Identify and interpret the t-tests for each of the coefficients (one separate paragraph for each variable, in numerical order): Are the signs of the coefficients as expected? If not, why not? For each of the coefficients, interpret the numerical value. Using the p-value approach, is the null hypothesis for the t-test rejected or not rejected for each coefficient? Why or why not? Interpret the implications of these findings for the variable. Identify the variable with the greatest significance.
  4. Analyze multicollinearity of the independent variables (one paragraph); Generate the correlation matrix. Define multicollinearity. Are any of the independent variables highly correlated with each other? If so, identify the variables and explain why they are correlated. State the implications of multicollinearity (if found) for the model you have created for this analysis.
  5. Other (not required): If any additional techniques for improving results are employed, discuss these at the end of the paper. As for grading, the inclusion of additional statistical methods will be rewarded appropriately.
  6. Reference Page: Use the proper format to list the works cited and place the entire page in APA format 7th edition. Include at least 10 references from across the spectrum of possible reference sources (books, magazines, journals, periodicals, newspapers, videos, etc.)

ive inserted a working copy of my project so please add on to that and send it back please. please review the instructions and attachments for the project.

Attached Files (PDF/DOCX): MG 315_ Capstone Term Project Report Information.pdf, Using Regression Analysis to Improve Pricing Decisions in Residential Real Estate.docx

Note: Content extraction from these files is restricted, please review them manually.

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