We can work on Perform regression analysis

Overview
The purpose of this project is to have you complete all of the steps of a real-world linear regression research project starting with developing a research question, then completing a comprehensive statistical analysis, and ending with summarizing your research conclusions.

Scenario
You have been hired by the D. M. Pan National Real Estate Company to develop a model to predict housing prices for homes sold in 2019. The CEO of D. M. Pan wants to use this information to help their real estate agents better determine the use of square footage as a benchmark for listing prices on homes. Your task is to provide a report predicting the housing prices based square footage. To complete this task, use the provided real estate data set for all U.S. home sales as well as national descriptive statistics and graphs provided.

Directions
Using the Project One Template located in the What to Submit section, generate a report including your tables and graphs to determine if the square footage of a house is a good indicator for what the listing price should be. Reference the National Statistics and Graphs document for national comparisons and the spreadsheet (both found in the Supporting Materials section) for your statistical analysis.

Note: Present your data in a clearly labeled table and using clearly labeled graphs.

Specifically, include the following in your report:

Introduction

Describe the report: Give a brief description of the purpose of your report.
Define the question your report is trying to answer.
Explain when using linear regression is most appropriate.
When using linear regression, what would you expect the scatterplot to look like?
Explain the difference between predictor (x) and response (y) variables in a linear regression to justify the selection of variables.
Data Collection

Sampling the data: Select a random sample of 50 houses. Describe how you obtained your sample data (provide Excel formulas as appropriate).
Identify your predictor and response variables.
Scatterplot: Create a scatterplot of your predictor and response variables to ensure they are appropriate for developing a linear model.
Data Analysis

Histogram: Create a histogram for each of the two variables.
Summary statistics: For your two variables, create a table to show the mean, median, and standard deviation.
Interpret the graphs and statistics:
Based on your graphs and sample statistics, interpret the center, spread, shape, and any unusual characteristic (outliers, gaps, etc.) for house sales and square footage.
Compare and contrast the center, shape, spread, and any unusual characteristic for your sample of house sales with the national population (under Supporting Materials, see the National Summary Statistics and Graphs House Listing Price by Region PDF). Determine whether your sample is representative of national housing market sales.
Develop Your Regression Model

Scatterplot: Provide a scatterplot of the variables with a line of best fit and regression equation.
Based on your scatterplot, explain if a regression model is appropriate.
Discuss associations: Based on the scatterplot, discuss the association (direction, strength, form) in the context of your model.
Identify any possible outliers or influential points and discuss their effect on the correlation.
Discuss keeping or removing outlier data points and what impact your decision would have on your model.
Calculate r: Calculate the correlation coefficient (r).
Explain how the r value you calculated supports what you noticed in your scatterplot.
Determine the Line of Best Fit. Clearly define your variables. Find and interpret the regression equation. Assess the strength of the model.

Regression equation: Write the regression equation (i.e., line of best fit) and clearly define your variables.
Interpret regression equation: Interpret the slope and intercept in context. For example, answer the questions: what does the slope represent in this situation? What does the intercept represent? Revisit the Scenario above.
Strength of the equation: Provide and interpret R-squared.
Determine the strength of the linear regression equation you developed.
Use regression equation to make predictions: Use your regression equation to predict how much you should list your home for based on the assumed square footage of your home at 1500 square feet.
Conclusions

Summarize findings: In one paragraph, summarize your findings in clear and concise plain language for the CEO to understand. Summarize your results.
Did you see the results you expected, or was anything different from your expectations or experiences?
What changes could support different results, or help to solve a different problem?
Provide at least one question that would be interesting for follow-up research.

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Sample Answer

 

 

 

 

Introduction

Purpose: The purpose of this report is to develop a linear regression model to predict housing prices based on square footage, providing valuable insights for real estate agents at D.M. Pan National Real Estate.

Research Question: To what extent does square footage influence housing prices in the U.S. housing market?

Linear Regression: Linear regression is a statistical method used to model the relationship between a dependent variable (response variable) and one or more independent variables (predictor variables). It is appropriate when the relationship between the variables is linear. In this case, we expect a positive linear relationship between square footage (predictor) and housing price (response).

Full Answer Section

 

 

 

 

 

Data Collection

Sampling: A random sample of 50 houses was selected from the provided dataset.

  • Predictor Variable (X): Square Footage
  • Response Variable (Y): Housing Price

Data Analysis

Descriptive Statistics: [Insert Table: Mean, Median, Standard Deviation, and Range for Square Footage and Housing Price] [Insert Histogram for Square Footage and Housing Price]

Interpretation:

  • Square Footage: The distribution of square footage appears to be right-skewed, with a few houses having significantly larger square footage.
  • Housing Price: The distribution of housing prices is also right-skewed, indicating that a few houses have significantly higher prices.

Comparison with National Data: [Compare the sample statistics to the national statistics provided in the document]

Scatterplot: [Insert Scatterplot of Square Footage vs. Housing Price]

The scatterplot suggests a positive linear relationship between square footage and housing price. However, there is some variability in the data, indicating that other factors may also influence housing prices.

Correlation Coefficient (r): [Calculate the correlation coefficient using statistical software]

The correlation coefficient (r) measures the strength and direction of the linear relationship between two variables. A value of r close to 1 indicates a strong positive linear relationship.  

Regression Equation:

  • Housing Price = Intercept + Slope * Square Footage

[Calculate the regression equation using statistical software]

Interpretation of the Regression Equation:

  • Slope: The slope represents the average increase in housing price for each additional square foot.
  • Intercept: The intercept represents the estimated housing price when the square footage is zero.

R-squared:

[Calculate the R-squared value]

R-squared measures the proportion of the variation in housing prices that is explained by the variation in square footage. A higher R-squared value indicates a stronger model fit.

Prediction:

Using the regression equation, we can predict the listing price for a 1500 square foot home.

Conclusion

The analysis suggests a strong positive linear relationship between square footage and housing price. While square footage is a significant factor in determining housing prices, other factors such as location, age, and amenities also play a role.

For future research, it would be interesting to explore the impact of additional variables, such as location, number of bedrooms, and bathrooms, on housing prices. This could lead to a more accurate and comprehensive model for predicting housing prices.

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