MG 315 Park University Advanced Business Statistics What Affects Graduation Grade Average Points Capstone Hi there,
The final revision of the paper is due this week. I’ve attached a couple examples that my instructor sent to the class. Below is the feedback I received regarding the draft paper I turned in:
Add title page addressing use of your regression model. Use table of contents. Added subheads. Added purpose statement. Your regression equation has at least three independent variables. Added cited definition of variables. Your data matrix has at least 30 rows. You have columns of data, one for each variable. Good bibliography. You did follow APA style throughout, and in your written portion. Well done.
If you need me to send a copy of the draft paper you did for me just let me know. Thank you so much!!!
I also attached examples of the final paper. What variables affect foreclosure filings?
EC315
U.S. Foreclosures
Feasibility Project
Prepared for
Mr. Thomas Hiestand
Park University
Prepared by
Jessica Tipton
Park University
Jessica Tipton
Quantitative Research Methods
12 January 2009
1
What variables affect foreclosure filings?
2
Purpose Statement & Background
The United States foreclosure crisis is said to be the worst financial disaster since the
great depression. (Reinhart, 2008) John A. Tatom, Director of Research at Networks Financial
Institute at Indiana State University writes that rising foreclosure filings and excessive personal
debt have created the greatest short-term threat to the U.S. economy. This study will examine
these and other variables responsible for the rise in foreclosure filings throughout the United
States.
The dependent variable, U.S. Foreclosures Filings (US_FORCLSURE) is determined by
independent variables, High Un-employment rate (UNEPLY_RATE), high revolving debt
(REVOLV_DEBT), divorce (DIVORCE) and Death (DEATH).
The most important independent variable in this relationship is rise in unemployment
rates because the more people who lose their jobs the more likely those sample individuals will
begin the foreclosure process and eventually lose their home.
Definition of Variables & Data Description
Y = X1 + X2 + X3 + X4
US_FORCLSURE = UNEPLY_RATE + REVOLV_DEBT + DIVORCE + DEATH
Dependent Variable:
a. U.S. Foreclosures Filing (Y: US_FORCLSURE)- The dependent variable, U.S.
Foreclosures Filings, is used in the cause and affect relationship presented throughout
the project. The following independent variables will be used to determine the most
significant factor in U.S. foreclosure filings. This data is collected every month from
more than 2,200 counties by RealtyTrac®. RealtyTrac® compiles this nationwide
data and reports a count of the total number of properties with at least one foreclosure
filing reported.
What variables affect foreclosure filings?
3
Primary Independent Variable:
a. Rising Unemployment (X1: UNEPLY_RATE)- Rising unemployment rates is the
primary independent variable because I believe that as the national employment rate
continues to rise so will the number of foreclosure filings. The data used to represent
the relationship was provided by the Bureau of Labor Statistics and collected
monthly.
The first resource that solidifies my belief comes from cnnmoney.com. Les
Christie describes in the article, Mounting Job Losses Fueling Foreclosures, the
correlation between unemployment rates and the rise in U.S. Foreclosures. He
explains that the more individuals lose their jobs the more the delinquency trend will
continue. (Christie, 2008)
In the article, 2008 Foreclosure Filings Set Record, Stephanie Armour
recognizes the relationship between job loss and foreclosure filings. She clarifies that
even though interest rates decreased, the number of those filing for foreclosure
continued to rise between 2007 and 2008 resulting in an 81% increase. The former
federal deputy Housing Commissioner under President Clinton is quoted saying,
with foreclosures continuing to rise and the economy in a downward spiral, its not
surprising you see increased foreclosure because of increased unemployment.
(Armour, 2009)
Independent Variables:
a. Divorce (X2: DIVORCE)- Divorce is another leading cause in the number of
foreclosure filings, if a marriage is dissolved then there is less revolving revenue for
the family and they then run the risk of foreclosure. This data was compiled through
the Center for Disease Control and Prevention & National Center for Health
What variables affect foreclosure filings?
4
Statistics. These government agencies use a series of surveys to compile monthly data
on divorce records. These records are compiled monthly and are represented by the
thousands.
b. Death (X3:DEATH)- The death statistics used for this project have been recorded by
Center for Disease Control and Prevention & National Center for Health Statistics.
Surveys are used to obtain and compile monthly data. These records are assembled
monthly and are denoted by the thousands. These statistics are important as if a
primary spouse dies then the family is at risk of becoming delinquent in his/her
mortgage payments.
c. Consumer Credit Outstanding (X4:REVOLV_DEBT) – When individuals live
beyond his/her means the amount of money placed in a revolving credit card becomes
more than is manageable. The minimum balance that was once reasonable becomes
unrealistic and the family is then susceptible to foreclosure. These debts could include
from car loans, credit cards and student loans. This data is compiled by the Federal
Reserve and has been collected on a monthly basis from January 1968 to November
2008. For this project, the investigation will include the data from June 1006 to
November 2008.
Presentation and Interpretation of Results
Estimated (prediction) equation
The results are:
Y? = -1,229,444.4414 + 15853.9372 X1 + 1.4785 X2 + 2.8838X3 -1.0534 X4
What variables affect foreclosure filings?
5
Identify and Interpret the Adjusted R2
An adjusted coefficient of multiple determination is used to balance the effect that the
number of independent variables has on the coefficient of multiple determination. (Lind,
Marchal W., and Wathen, S., 2008, p. 449) The adjusted R2 in this projects model of 0.856 (see
Appendix B) signifies a strong association between the independent variables of unemployment
rates, outstanding consumer credit, number of divorces, and number of deaths and dependent
variable of U.S. foreclosure rates.
Identify and Interpret the F Test
H0 : ?1 = ? 2 = ? 3 = ? 4 = 0
H1 : Not all ? i ‘ s are 0
The p-value is 1.01E-07 or .000000101. (see Appendix B)
Using a .05 significance level, the p-value is significantly smaller than the significance
level. Since the p-value is smaller than the significance level, H0 is rejected and accept the
alternate hypothesis of not all independent variables are 0. The rejection of H0 means at least one
regression coefficient is not 0 and therefore, some of the independent variables do have the
ability to explain the variation in the dependent variable, U.S. Foreclosure Filings.
Identify and Interpret the t Tests for Each of the Coefficients
Un-Employment Rates (UNEPLY_RATE)
Ho: ?1 = 0
H1: ?1 does not equal 0
Let ? = 0.05
Testing at the .05 significance level:
N (k + 1) = 22 (4 + 1) = 17 degrees of freedom
What variables affect foreclosure filings?
6
Reject H0 if t > 2.110 or t < -2.110
t=
b1 ? 0 15,853.9372
=
= 0.955
Sb1
16,597.6668
Accept Ho at the .05 significance level as, 0.955 is greater than the critical value, 2.110.
Accept H0 using the p value approach as well because the p value for UNEPLY_RATE is .3529
(see Appendix B) and greater than the significance level of .05. There is little evidence that the
null hypothesis is not true.
Consumer Credit Outstanding (REVOLV_DEBT)
Ho: ? 2 = 0
H1: ? 2 does not equal 0
Let ? = 0.05
Testing at the .05 significance level:
N (k + 1) = 22 (4 + 1) = 17 degrees of freedom
Reject H0 if t > 2.110 or t < -2.110
t=
b2 ? 0 1.4785
=
= 10.66
Sb2
0.1387
Reject Ho at the .05 significance level as, 10.66 is greater than the significance level of 2.110.
Reject H0 using the p value approach as well because the p value for REVOLV_DEBT is 6.00E09 (see Appendix B) and less than the .05 significance level. A p-value of 6.00E-09 indicates
that there is little evidence that the null hypothesis is true.
Divorce Rate (DIVORCE)
Ho: ? 3 = 0
H1: ? 3 does not equal 0
What variables affect foreclosure filings?
Let ? = 0.05
Testing at the .05 significance level:
N (k + 1) = 22 (4 + 1) = 17 degrees of freedom
Reject H0 if t > 2.110 or t < -2.110
t=
b3 ? 0 2.8838
=
= 2.27
S b3
1.2698
Reject Ho at the .05 significance level as, 2.27 is greater than the significance level of 2.110.
Reject H0 using the p value approach as well because the p value for DIVORCE is .0364 (see
Appendix B) and less than the .05 significance level. A p-value of .0364 indicates that there is
strong evidence that the null hypothesis is not true.
Deaths (DEATH)
Ho: ? 4 = 0
H1: ? 4 does not equal 0
Let ? = 0.05
Testing at the .05 significance level:
N (k + 1) = 22 (4 + 1) = 17 degrees of freedom
Reject H0 if t > 2.110 or t < -2.110
t=
b4 ? 0 - 1.0535
=
= ?2.33
Sb4
0.4530
Reject Ho at the .05 significance level as, -2.33 is less than the significance level of -2.110.
Reject H0 using the p value approach as well because the p value for DIVORCE is .0327 (see
Appendix B) and less than the .05 significance level. A p-value of .0327 indicates that there is
strong evidence that the null hypothesis is not true.
7
What variables affect foreclosure filings?
8
Variable With the Greatest Significance on U.S. Foreclosures Filing (US_FORCLSURE)
The independent variable that has the greatest significance on dependent variable, U.S.
foreclosure filing rates is Consumer Credit Outstanding (REVOLV_DEBT).
Analysis of Multicollinearity of the Independent Variables
Generated Correlation Matrix
Correlation Matrix
U.S. Foreclosures Filings
U.S. Foreclosures Filings
1.000
Un-Employment Rates-%
.288
Consumer Credit Outstanding -Millions
.900
Divorce Rate-Thousands
-.148
Deaths-Thousands
.262
Un-Employment Rates-%
Consumer Credit Outstanding -Millions
Divorce Rate-Thousands
Deaths-Thousands
1.000
.393
-.501
.489
1.000
-.359
.479
1.000
-.248
1.000
22 sample size
Correlation Matrix
Multicollinearity exists when independent variables are correlated. (Lind et al., 2008, p.
461) These correlated variables make it difficult to make conclusions about their individual
effects on the dependent variable and the individual regression coefficients. (Lind et al., 2008,
p.461)
Highly Correlated Independent Variables and Indications of Multicollinearity
There is no multicollinearity among the independent variables shown in the correlation
matrix. All correlation values fall inside the normal indicators, -.70 and .70. The most highly
correlated independent variables are that of the divorce rates and un-employment rates. These
variables are inversely related at a level of -.501. Indicating that the higher the divorce rate the
lower the unemployment rate.
What variables affect foreclosure filings?
9
References
Research:
Armour, S. (2009, January 15). 2008 foreclosure filings set record. USA TODAY, p. B.1.
Retrieved January 21, 2009, from ProQuest National Newspapers Premier database.
(Document ID: 1627331121).
Christie, L. (2008 November 7). Mounting job losses fueling foreclosures. CNNMoney.com,
Retrieved January 21, 2009, from
http://money.cnn.com/2008/11/04/real_estate/job_losses_fuel_foreclosure/index.htm?pos
tversion=2008110705
Lind, D., Marchal W., and Wathen, S. Basic Statistics for Business Economics 6th ed. McGrawHill Irwin, New York, NY. Copyright 2008.
Reinhart, V. (2008, March 26). Our Overextended Fed. Wall Street Journal (Eastern Edition),
p. A.15. Retrieved February 3, 2009, from ABI/INFORM Global database. (Document
ID: 1451528761).
Tatom, J. (2008, July). The U.S. Foreclosure Crisis: A Two-Pronged Assault on the U.S.
Economy. Networks Financial Institute at Indiana State University, Retrieved February 3,
2009, from http://mpra.ub.uni-muenchen.de/9787/1/2008-WP-10_Tatom.pdf
Data:
? Dependent Variable:
o U.S. Foreclosure Filings-? RealtyTrac. (2009). News and Trends Center, RealtyTrac Reports. Retrieved
January 20, 2009, from http://www.realtytrac.com/News-Trends/
What variables affect foreclosure filings?
10
? Primary Independent Variable:
o Rising Unemployment-? Bureau Of Labor Statistics. (2009). National Unemployment Rate, BLS
Statistics on Unemployment. Retrieved January 20, 2009, from
http://www.bls.gov/bls/unemployment.htm
? Independent Variable:
o Divorce-? National Center for Health Statistics. (2009). Births, Marriages, Divorces, and
Deaths, National Vital Statistics Reports. Retrieved January 21, 2009, from
http://www.cdc.gov/nchs/products/pubs/pubd/nvsr/nvsr.htm#vol57
o Death? National Center for Health Statistics. (2009). Births, Marriages, Divorces, and
Deaths, National Vital Statistics Reports. Retrieved January 21, 2009, from
http://www.cdc.gov/nchs/data/nvsr/nvsr57/nvsr57_06.htm#tables
?
National Center for Health Statistics. (2009). Births, Marriages, Divorces, and
Deaths, National Vital Statistics Reports. Retrieved January 21, 2009, from
http://www.cdc.gov/nchs/data/nvsr/nvsr56/nvsr56_21.htm#tables
o Consumer Credit Outstanding? Federal Reserve. (2009, January 8). Consumer Credit Outstanding: Revolving,
Federal Reserve Statistical Release. Retrieved January 20, 2009, from
http://www.federalreserve.gov/releases/g19/hist/cc_hist_r.html
What variables affect foreclosure filings?
APPENDIX A
The following data will be used to conduct the regression testing:
Dependent
Variable
U.S.
Foreclosures
Filings
233,089
223,651
233,001
230,874
201,950
224,451
223,538
243,947
179,599
164,644
176,137
147,708
149,150
130,786
130,511
109,652
120,334
115,568
112,210
115, 292
92, 845
88,195
Independent Variables
UnYear &
Employment
Month
Rates-%
Mar
Feb
Jan
Dec-07
Nov
Oct
Sep
Aug
Jul
Jun
May
Apr
Mar
Feb
Jan
Dec-06
Nov
Oct
Sep
Aug
Jul
Jun
5.2
5.2
5.4
4.8
4.5
4.4
4.5
4.6
4.9
4.7
4.3
4.3
4.5
4.9
5.0
4.6
4.3
4.1
4.4
4.6
5.0
4.8
Consumer
Credit
Outstanding
-Millions
943237.94
948758.73
957891.35
969597.16
944671.83
927240.08
921014.07
916740.55
903894.02
897339.98
890146.48
881472.71
875567.27
878806.30
887862.99
902316.16
878104.68
861350.83
857915.20
854817.60
844837.62
841313.05
Divorce
RateThousands
DeathsThousands
67,405
66,743
68,868
67,876
66,399
76,696
67,854
74,754
69,463
69,514
76,716
74,559
73,974
65,253
70,166
69,021
68,641
74,365
71,931
72,004
64,798
79,664
221,000
212,000
222,000
214,000
199,000
198,000
187,000
191,000
194,000
188,000
199,000
203,000
216,000
204,000
222,000
214,000
194,000
200,000
190,000
193,000
192,000
188,000
11
What variables affect foreclosure filings?
12
Appendix B
Regression Analysis
R²
Adjusted R²
R
Std. Error
0.883
0.856
0.940
20079.976
n 22
k 4
Dep. Var. U.S. Foreclosures Filings
ANOVA table
Source
Regression
Residual
Total
SS
51,843,399,576.0609
6,854,492,706.3028
58,697,892,282.3636
Regression output
variables
Intercept
Un-Employment Rates-%
Consumer Credit Outstanding -Millions
Divorce Rate-Thousands
Deaths-Thousands
coefficients
-1,229,444.4414
15,853.9372
1.4785
2.8838
-1.0535
df
4
17
21
std. error
179,151.2879
16,597.6668
0.1387
1.2698
0.4530
MS
12,960,849,894.0152
403,205,453.3119
F
32.14
t (df=17)
-6.863
0.955
10.662
2.271
-2.326
p-value
2.75E-06
.3529
6.00E-09
.0364
.0327
p-value
1.01E-07
confidence interval
95% lower
95% upper
-1,607,420.6159
-851,468.2669
-19,164.0783
50,871.9528
1.1859
1.7710
0.2048
5.5628
-2.0092
-0.0977
Amy Copeland
Term Project Report
Term Project Report
Do Overall Health, Age, Race, and Gender Effect Heart Disease?
Amy Copeland
EC 315 DL
Professor Hiestand
Summer 2008
Does Overall Health Effect Heart Disease?
Amy Copeland
Term Project Report
Do Overall Health, Age, Race, and Gender Effect Heart Disease?
Background
Studies have shown there are several contributors to heart disease. Heart disease
(HD) is determined by physical inactivity, obesity/overweight and smoking. The most
important factor is physical inactivity because it is the key to good health and a person
has control over this. Therefore, if a person maintains a healthy lifestyle, they will be
less likely to develop heart disease. This study will determine the effect of overall health,
age, race and gender on heart disease. The model (less constants and coefficients) is:
HD = physical inactivity + obesity + smoking
According to the National Heart, Lung, and Blood Institute, Each year, in the
United States alone, cigarettes are responsible for up to a third of all deaths from heart
disease, according to the American Heart Association. Of the approximately 440,000
annual deaths caused by smoking each year, about 180,000 are related to heart disease
and another 160,000 are due to lung cancer. Just a few smokes a day can double your risk
for a heart attack, and more than a pack a day could raise the risk fifteenfold, according to
a 1998 report in Postgraduate Medicine. (2008) Overall health, to include exercise, diet
and smoking is a main contributor of heart disease. Obesity, high cholesterol, diabetes
and physical inactivity are all contributors to not being overall healthy and therefore heart
disease. Obesity is now recognized as a major risk factor for coronary heart disease,
which can lead to heart attack. (American Heart Association, 2008) The gender of a
person can determine their risk of heart disease, as well. The American Heart
Association reports, The relative risk of coronary heart disease associated with physical
Amy Copeland
Term Project Report
inactivity ranges from 1.5 to 2.4, an increase in risk comparable to that for high blood
cholesterol, high blood pressure or cigarette smoking. (2008)
The relationship between heart disease, physical inactivity, obesity and smoking
is evident. All individuals, not only those at a higher risk, should improve their overall
health in order to decrease their risk of heart disease. (U.S. National Library of
Medicine, 2008) Individuals with a higher risk of heart disease due to gender, race and
age should be vigilant about the signs and symptoms of heart disease and heart attacks.
Presentation and Interpretation of Results
Estimated (prediction) equation:
The results are:
_
Y = -372.1648 -1.8728 X1 - 8.8926 X2 + 2.3332 X3
Define adjusted R2.
Adjusted coefficient of determination (R2) is used to balance the effect that the
number of independent variables has on the coefficient of multiple determination. (Lind,
2008) The adjusted R2 in this projects model of 0.494 signifies a moderate association
between the independent variables of physical inactivity, obesity and smoking and the
dependent variable of heart disease. Fifty percent of the people with heart disease
(dependent variable) have one or more of the independent variables.
Amy Copeland
Term Project Report
Identify and interpret the F test:
F test null hypothesis:
F test alternate hypothesis:
The p-value is 0001.
H0: B1 = B2 = B3 = B4
H1: Not all the B1s are 0
Using a .05 significance level, the p-value is significantly smaller than the
significance level. Since the p-value is smaller than the significance level, H0 is rejected
and the alternate hypothesis of not all independent variables are 0 cannot be accepted.
Identify and interpret the t tests for each of the coefficients:
Physical Inactivity:
The negative number 1.8728 was surprising as one would expect the
number to be higher to indicate that the greater number of people who are physically
inactive would contribute to the number of people with heart disease.
H0: B1 equals 0
H1: B1 does not equal 0
Test at the .05 significance level and is a two tailed test.
N (k + 1) = 50 (4 + 1) = 45 degrees of freedom
The critical value is 2.014 (Lind, 2008)
Decision rule is to reject H0 if the computed value of t is less than -2.014 or
greater than 2.014. The t value is -0.695 therefore, accept H0. The t value is in within the
acceptable numbers, therefore this variable is 0.
Using the p-value approach, the null hypothesis for t test is rejected because the pvalue for the physical inactivity variable of 0.4930 far falls below the significance level
of .05. The p-value of 0.4930 signifies that there is minimal evidence that the null
hypothesis is not true.
Amy Copeland
Term Project Report
Obesity:
The number for obesity (8.8926) is not surprising. One would imagine and has
been told time and time again that there is a link between obesity and heart disease.
H0: B1 equals 0
H1: B1 does not equal 0
Test at the .05 ...
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