2-3 Real Estate Analysis Part 1

2-3 Real Estate Analysis Part 1

Scenario

Smart businesses in all industries use data to provide an intuitive analysis of how they can get a competitive advantage. The real estate industry heavily uses linear regression to estimate home prices, as cost of housing is currently the largest expense for most families. Additionally, in order to help new homeowners and home sellers with important decisions, real estate professionals need to go beyond showing property inventory. They need to be well versed in the relationship between price, square footage, build year, location, and so many other factors that can help predict the business environment and provide the best advice to their clients.

Prompt

You have been recently hired as a junior analyst by D.M. Pan Real Estate Company. The sales team has tasked you with preparing a report that examines the relationship between the selling price of properties and their size in square feet. You have been provided with a Real Estate Data Spreadsheet (included in attachment) spreadsheet that includes properties sold nationwide in recent years. The team has asked you to select a region, complete an initial analysis, and provide the report to the team.

Note: In the report you prepare for the sales team, the response variable (y) should be the listing price and the predictor variable (x) should be the square feet.

Specifically you must address the following rubric criteria, using the Module Two Assignment Template Word Document (included in attachment, MUST USE TO COMPLETE ASSIGNMENT):

  • Generate a Representative Sample of the Data
    • Select a region and generate a simple random sample of 30 from the data.
    •  Report the mean, median, and standard deviation of the listing price and the square foot variables.
  • Analyze Your Sample
    • Discuss how the regional sample created is or is not reflective of the national market.
    • Explain how you have made sure that the sample is random.
      • Explain your methods to get a truly random sample.
  • Generate Scatterplot
    • Create a scatterplot of the x and y variables noted above and include a trend line and the regression equation
  • Observe patterns
    • Answer the following questions based on the scatterplot:
      • Define x and y. Which variable is useful for making predictions?
      • Is there an association between x and y? Describe the association you see in the scatter plot.
      • What do you see as the shape (linear or nonlinear)?
      • If you had a 1,800 square foot house, based on the regression equation in the graph, what price would you choose to list at?
      • Do you see any potential outliers in the scatterplot?
        • Why do you think the outliers appeared in the scatterplot you generated?
        • What do they represent?

You can use the following tutorial that is specifically about this assignment. Make sure to check the assignment prompt for specific numbers used for national statistics and/or square footage. The video may use different national statistics or solve for different square footage values.

LINK FOR STATISITCS AND GRAPHS:

https://learn.snhu.edu/content/enforced/1261476-MAT-240-J4761-OL-TRAD-UG.23EW4/course_documents/National%20Summary%20Statistics%20and%20Graphs%20Real%20Estate%20Data.pdf?_&d2lSessionVal=AhM4DCGqMI0sPcT1f2n3ULfJM&ou=1261476

Selling Price Analysis for D.M. Pan National Real Estate Company 2

[
Note: To complete this template, replace the bracketed text with your own content. Remove this note before you submit your outline.]

Report: Selling Price and Area Analysis for D.M. Pan National Real Estate Company

[Your Name]

Selling Price and Area Analysis for D.M. Pan National Real Estate Company 1

Southern New Hampshire University

Introduction

[Include in this section a brief overview, including the purpose of the report.]

Representative Data Sample

[Present your simple random sample of 30, including the region you selected for your sample. Then identify the mean, median, and standard deviation of the listing price and the square foot variables.]

Data Analysis

[Discuss how the regional sample created is reflective of the national market. Compare and contrast your regional sample with the national population using the National Statistics and Graphs document found in the Module Two Assignment Guidelines and Rubric.

Explain how you have made sure that the sample is random. Explain your methods to get a truly random sample.]

Scatterplot

[Insert a scatterplot graph of the sample using the
x and
y variables. Include a trend line and regression equation.]

The Pattern

[Based on your graph, define each variable, and explain which variable will be useful for making predictions and why.]

[Describe the association between
x and
y in the scatterplot and determine its shape. Identify any outliers you see in the graph and explain why these occur and what they represent.]

[If you had a 1,800 square foot house, based on the regression equation in the graph, what price would you choose to list at? Explain.]

project 1 data

Real Estate County Data for 2019
2019 Data (n=1000)
Region State County listing price $’s per square foot square feet
East North Central in grant 219,500 $116 1,898
East North Central il vermilion 254,500 $156 1,632
East North Central in henry 235,000 $148 1,588
East North Central in wayne 203,800 $141 1,441
East North Central il coles 220,800 $117 1,893
East North Central il macoupin 197,600 $111 1,783
East North Central in vigo 165,800 $122 1,362
East North Central oh jefferson 246,500 $136 1,814
East North Central il jackson 154,300 $105 1,463
East North Central oh marion 149,700 $116 1,296
East North Central mi bay 145,100 $117 1,239
East North Central il whiteside 283,700 $136 2,087
East North Central oh trumbull 243,000 $133 1,827
East North Central in madison 229,100 $187 1,224
East North Central il knox 205,100 $118 1,740
East North Central il stephenson 235,600 $140 1,682
East North Central il macon 212,900 $128 1,659
East North Central in delaware 221,600 $134 1,651
East North Central il henry 257,700 $123 2,087
East North Central oh seneca 211,900 $168 1,263
East North Central oh darke 160,800 $114 1,416
East North Central oh scioto 204,200 $131 1,562
East North Central oh belmont 172,500 $101 1,710
East North Central oh sandusky 253,900<
2-3 Real Estate Analysis Part 1



Scenario
Smart businesses in all industries use data to provide an intuitive analysis of how they can get a competitive advantage. The real estate industry heavily uses linear regression to estimate home prices, as cost of housing is currently the largest expense for most families. Additionally, in order to help new homeowners and home sellers with important decisions, real estate professionals need to go beyond showing property inventory. They need to be well versed in the relationship between price, square footage, build year, location, and so many other factors that can help predict the business environment and provide the best advice to their clients.
Prompt
You have been recently hired as a junior analyst by D.M. Pan Real Estate Company. The sales team has tasked you with preparing a report that examines the relationship between the selling price of properties and their size in square feet. You have been provided with a Real Estate Data Spreadsheet (included in attachment) spreadsheet that includes properties sold nationwide in recent years. The team has asked you to select a region, complete an initial analysis, and provide the report to the team.
Note: In the report you prepare for the sales team, the response variable (y) should be the listing price and the predictor variable (x) should be the square feet.
Specifically you must address the following rubric criteria, using the Module Two Assignment Template Word Document (included in attachment, MUST USE TO COMPLETE ASSIGNMENT):

Generate a Representative Sample of the Data

Select a region and generate a simple random sample of 30 from the data.
 Report the mean, median, and standard deviation of the listing price and the square foot variables.


Analyze Your Sample

Discuss how the regional sample created is or is not reflective of the national market.

Compare and contrast your sample with the population using the National Summary Statistics and Graphs Real Estate Data PDF (see link below for graphs) document.


Explain how you have made sure that the sample is random.

Explain your methods to get a truly random sample.




Generate Scatterplot

Create a scatterplot of the x and y variables noted above and include a trend line and the regression equation


Observe patterns

Answer the following questions based on the scatterplot:

Define x and y. Which variable is useful for making predictions?
Is there an association between x and y? Describe the association you see in the scatter plot.
What do you see as the shape (linear or nonlinear)?
If you had a 1,800 square foot house, based on the regression equation in the graph, what price would you choose to list at?
Do you see any potential outliers in the scatterplot?

Why do you think the outliers appeared in the scatterplot you generated?
What do they represent?







You can use the following tutorial that is specifically about this assignment. Make sure to check the assignment prompt for specific numbers used for national statistics and/or square footage. The video may use different national statistics or solve for different square footage values.

MAT-240 Module 2 Assignment (Video link: https://www.youtube.com/watch?v=PCL4YbDeGvg)

LINK FOR STATISITCS AND GRAPHS:
https://learn.snhu.edu/content/enforced/1261476-MAT-240-J4761-OL-TRAD-UG.23EW4/course_documents/National%20Summary%20Statistics%20and%20Graphs%20Real%20Estate%20Data.pdf?_&d2lSessionVal=AhM4DCGqMI0sPcT1f2n3ULfJM&ou=1261476




Selling Price Analysis for D.M. Pan National Real Estate Company	2

[
            Note: To complete this template, replace the bracketed text with your own content. Remove this note before you submit your outline.]
        

Report: Selling Price and Area Analysis for D.M. Pan National Real Estate Company
[Your Name]
Selling Price and Area Analysis for D.M. Pan National Real Estate Company	1
Southern New Hampshire University
Introduction
[Include in this section a brief overview, including the purpose of the report.]
Representative Data Sample
[Present your simple random sample of 30, including the region you selected for your sample. Then identify the mean, median, and standard deviation of the listing price and the square foot variables.]
Data Analysis
[Discuss how the regional sample created is reflective of the national market. Compare and contrast your regional sample with the national population using the National Statistics and Graphs document found in the Module Two Assignment Guidelines and Rubric.
Explain how you have made sure that the sample is random. Explain your methods to get a truly random sample.]
Scatterplot
[Insert a scatterplot graph of the sample using the
            x and
            y variables. Include a trend line and regression equation.]
        

The Pattern

[Based on your graph, define each variable, and explain which variable will be useful for making predictions and why.]
[Describe the association between
            x and
            y in the scatterplot and determine its shape. Identify any outliers you see in the graph and explain why these occur and what they represent.]
        
[If you had a 1,800 square foot house, based on the regression equation in the graph, what price would you choose to list at? Explain.]



project 1 data



Real Estate County Data for 2019


2019 Data (n=1000)






Region
State
County
 listing price
 $’s per square foot
 square feet


East North Central
in
grant
219,500
$116
1,898


East North Central
il
vermilion
254,500
$156
1,632


East North Central
in
henry
235,000
$148
1,588


East North Central
in
wayne
203,800
$141
1,441


East North Central
il
coles
220,800
$117
1,893


East North Central
il
macoupin
197,600
$111
1,783


East North Central
in
vigo
165,800
$122
1,362


East North Central
oh
jefferson
246,500
$136
1,814


East North Central
il
jackson
154,300
$105
1,463


East North Central
oh
marion
149,700
$116
1,296


East North Central
mi
bay
145,100
$117
1,239


East North Central
il
whiteside
283,700
$136
2,087


East North Central
oh
trumbull
243,000
$133
1,827


East North Central
in
madison
229,100
$187
1,224


East North Central
il
knox
205,100
$118
1,740


East North Central
il
stephenson
235,600
$140
1,682


East North Central
il
macon
212,900
$128
1,659


East North Central
in
delaware
221,600
$134
1,651


East North Central
il
henry
257,700
$123
2,087


East North Central
oh
seneca
211,900
$168
1,263


East North Central
oh
darke
160,800
$114
1,416


East North Central
oh
scioto
204,200
$131
1,562


East North Central
oh
belmont
172,500
$101
1,710


East North Central
oh
sandusky
253,900<

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