Seth Satterfield - Submission Form - Relationship Significance Testing Lab + HW
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RELATIONSHIP SIGNIFICANCE TESTING LAB AND HOMEWORK SUBMISSION FORM
Please organize your analysis in the appropriate space below. Do not change the order, this is to help expedite the grading process and get your feedback to you as quickly as possible. Students must submit both this word document and
the excel workbook. Analysis in the workbook and the word document should be consistent. No credit will be awarded if the Excel file is not submitted.
ALL TABLES AND GRAPHS SHOULD BE NEATLY FORMATTED, ORGANIZED, AND PASTED AS PICTURES IN THE WORD
DOCUMENT. INTEPRETATIONS AND HYPOTHESIS STATEMENTS SHOULD BE WELL WRITTEN WITH PROPER GRAMMAR
AND SPELLING
Regression Test 1 Table and Plot Output
Regression Statistics
Multiple R
0.694537
R Square
0.482381
Adjusted R Square
0.482002
Standard Error
50976.19
Observations
1367
Coefficients
Standard
Error
t Stat
P-value
Lower
95.0%
Upper
95.0%
Intercept
26616.70084
4736.6295
26
5.619333
472
0.00
17324.83
846
35908.56
322
Living Area
105.4835451
2.9575226
01
35.66618
395
0.00
99.68176
292
111.2853
274
Regression Test 1 Hypothesis Statements and Interpretations
Null: There is no relationship between living area and sales price. (Slope = 0)
Alt: The is a statistically significant relationship between living area and sales price (Slope ≠ 0)
1
Multiple R: The correlation coefficient of 0.695 indicates that there is a strong relationship between living area and sale price.
R Square: The coefficient of determination indicates that 48.2% (0.482) of the variation is sale price can be explained by the amount of living area square footage.
P-value and Conclusion: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between living area and sale.
Regression Test 2 Table and Plot Output
Regression Statistics
Multiple R
0.490779376
R Square
0.240864396
Adjusted R Square
0.240308253
Standard Error
61733.67415
Observations
1367
Coefficients
Standard Error
t Stat
P-value
Lower 95%
Upper 95%
Lower 95.0%
Upper 95.0%
Intercept
166896.373
1959.497035 85.17306742
0
163052.421 170740.3251
163052.421 170740.3251
MasonryVeneer Area
201.1049047
9.663394571 20.81100003
9.128E-84
182.1481904 220.0616189 182.1481904 220.0616189
Regression Test 2 Hypothesis Statements and Interpretations
Null: There is no relationship between masonry veneer area and sales price. (Slope = 0)
Alt: The is a statistically significant relationship between masonry veneer area and sales price (Slope ≠ 0)
Multiple R: The correlation coefficient of 0.491 indicates that there is a strong relationship between masonry veneer area
and sale price.
R Square: The coefficient of determination indicates that 24.1% (0.241) of the variation is sale price can be explained by the amount of masonry veneer area square footage.
P-value and Conclusion: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between masonry veneer area and sale.
Regression Test 3 Table and Plot Output
2
Regression Statistics
Multiple R
0.57698284
R Square
0.332909198
Adjusted R Square
0.332420487
Standard Error
57870.19174
Observations
1367
Coefficients
Standard Error
t Stat
P-value
Lower 95%
Upper 95%
Lower 95.0%
Upper 95.0%
Intercept
72189.96977
4713.806502 15.31458063
5.6416E-49
62942.8794 81437.06015
62942.8794 81437.06015
Full Baths
56455.1414
2163.050968 26.09977399
3.7908E-122
52211.8769 60698.40589
52211.8769 60698.40589
Regression Test 3 Hypothesis Statements and Interpretations
Null: There is no relationship between full baths and sales price. (Slope = 0)
Alt: The is a statistically significant relationship between full baths and sales price (Slope ≠ 0)
Multiple R: The correlation coefficient of 0.577 indicates that there is a strong relationship between full baths and sale price.
R Square: The coefficient of determination indicates that 33.2% (0.332) of the variation is sale price can be explained by the amount of full baths.
P-value and Conclusion: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between full baths and sale.
Regression Test 4 Table and Plot Output
Regression Statistics
Multiple R
0.644035071
R Square
0.414781172
Adjusted R Square
0.414352441
Standard Error
54202.78354
Observations
1367
Coefficients
Standard Error
t Stat
P-value
Lower 95%
Upper 95%
Lower 95.0%
Upper 95.0%
Intercept
65394.78733
4212.769828 15.52299081
3.6132E-50
57130.58232 73658.99234 57130.58232 73658.99234
Garage Car Capacity
66717.50565
2144.979288 31.10403258
5.2441E-161
62509.69243 70925.31887 62509.69243 70925.31887
3
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Regression Test 4 Hypothesis Statements and Interpretations
Null: There is no relationship between garage car capacity and sales price. (Slope = 0)
Alt: The is a statistically significant relationship between garage car capacity and sales price (Slope ≠ 0)
Multiple R: The correlation coefficient of 0.664 indicates that there is a strong relationship between garage car capacity and sale price.
R Square: The coefficient of determination indicates that 41.5% (0.415) of the variation is sale price can be explained by the amount of garage space for cars.
P-value and Conclusion: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between garage car capacity and sale
ANOVA Test 1 Table Output
Groups
Count
Sum
Average
Variance
Concrete Block
570
88344985
$154,991
1817271213
Poured Concrete
675 151697449
$224,737
5725162117
Slab Stone
122
17280202
$141,641
1369292835
Source of Variation
SS
df
MS
F
P-value
F crit
Between Groups
1.79416E+12
2
8.97082E+11 241.8950704
1.21982E-90 3.002321399
Within Groups
5.05847E+12
1364
3708556466
Total
6.85263E+12
1366
ANOVA Test 1 Hypothesis Statements and Interpretations
Null: There is no relationship between Foundation Type and sales price. (Mean Poured Concrete = Mean Cinder Block = Mean Slab)
Alt: The is a statistically significant relationship between Foundation Type and sales price (At least one mean is different)
P-value and Conclusions: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between foundation type and sale price. One 4
thing to note is that there are unequal variances between the groups and we do not know if one mean is significantly different or is all means are different
Pairwise T-Test 1 Table Output
Poured Concrete
Concrete Block
Mean
$224,737
$154,991
Variance
5725162116.68
1817271213
Observations
675.00
570
Hypothesized Mean Difference
0.00
df
1093.00
t Stat
20.42
P(T<=t) one-tail
0.00
t Critical one-tail
1.65
P(T<=t) two-tail
0.00
t Critical two-tail
1.96
Pairwise T-Test 1 Interpretations
Null: There is no difference in the mean sale price for homes with poured concrete and concrete block. (Mean Poured Concrete = Mean Cinder Block) (Mean Poured Concrete - Mean Cinder Block = 0)
Alt: The is a statistically significant difference in the mean sale price for home with poured concrete and concrete block.
P-value and Conclusions: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between foundation type and sale price for homes with poured concrete compared to cinder block.
Pairwise T-Test 2 Table Output
Concrete Block
Slab Stone
Mean
154991.2018
141641
Variance
1817271213
1369292835
Observations
570
122
Hypothesized Mean Difference
0
df
196
t Stat
3.516633472
P(T<=t) one-tail
0.000271506
t Critical one-tail
1.652665059
P(T<=t) two-tail
0.000543011
t Critical two-tail
1.972141222
5
Pairwise T-Test 2 Interpretations
Null: There is no difference in the mean sale price for homes with slab and concrete block. (Mean Slab = Mean Cinder Block) (Mean Cinder Block - Mean Slab = 0)
Alt: The is a statistically significant difference in the mean sale price for home with slab and concrete block.
P-value and Conclusions: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between foundation type and sale price for homes with cinder block and slab.
Pairwise T-Test 3 Table Output
Poured Concrete
Slab Stone
Mean
$224,737
$141,641
Variance
5725162116.68
1369292835
Observations
675.00
122
Hypothesized Mean Difference
0.00
df
338.00
t Stat
18.72
P(T<=t) one-tail
0.00
t Critical one-tail
1.65
P(T<=t) two-tail
0.00
t Critical two-tail
1.97
Pairwise T-Test 3 Interpretations
Null: There is no difference in the mean sale price for homes with poured concrete and concrete block. (Mean Slab = Mean Cinder Block) (Mean Cinder Block - Mean Slab = 0)
Alt: The is a statistically significant difference in the mean sale price for home with slab and concrete block.
P-value and Conclusions: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between foundation type and sale price for homes with poured concrete and slab.
ANOVA Test 2 Table Output
Groups
Count
Sum
Average
Variance
Split Level
233
35414225
$151,992
1780364242
1 Story
702 130575096
$186,004
4954085852
2 Story
429
90734315
$211,502
5622335132
2.5 Story
3
599000
$199,667
9120333333
6
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Source of Variation
SS
df
MS
F
P-value
F crit
Between Groups
5.42175E+11
3 1.80725E+11 39.03492803
3.36386E-24 2.611431218
Within Groups
6.31046E+12
1363
4629830366
Total
6.85263E+12
1366
ANOVA Test 2 Hypothesis Statements and Interpretations
Null: There is no relationship between House Style and sales price. (Mean Split Level = Mean 1 story = Mean 2 story = Mean 2.5 story)
Alt: The is a statistically significant relationship between House Style and sales price (At least one mean is different)
P-value and Conclusions: Since the p-value of 0.000 is less than the significance level of 0.05, we can reject the null hypothesis and conclude that there is a statistically significant relationship between House Style and sale price. 7
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