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Quantitative Reasoning II ­ Final Project 
Hannah Pierce and Sarah Lee Shan Yun 
 
Preliminary stage 
 
What is human development? 
Human development is the concept and subsequent study of human longevity and 
wellbeing as a factor of national (or global) development that takes precedent over 
measurements of economic factors, such as GDP. Human development pairs easily 
with social justice initiatives and plays a role in social research. This concept measures 
increased wellness and opportunities as indicators of growth. Education, public health, 
and public transportation infrastructure are all important topics that human development 
focuses upon.  
 
Variables 
1. Urban population (%Urban)​ is described as the percentage of the population 
living in cities in a given state. It is measured as a percentage (%) and​ is 
calculated using World Bank ​Population​ estimates and ​urban​ ratios from the 
United Nations World Urbanization Prospects  via statistical estimation. 1
2. Percentage population with long commutes (%LongCommute)​ measures the 
percentage (%) of the population with commute times that are 60 minutes or 
longer and is obtained through surveying a representative portion of each state’s 
population. This data includes active commuters (bikers, walkers, etc.) as well as 
commuters taking public transportation or automobile transportation). 
3. Percentage population with a bachelor's degree (%BA)​ measures the percentage 
of the population (%) who hold bachelor’s degree level education (BA) or higher. 
There will be a higher percentage of BA degree holders than MA degree holders 
because a BA is required before an individual can pursue an MA. Education 
attainment is calculated through a census of U.S. universities in each of the U.S. 
states. 
4. Percentage population with a graduate degree (%MA)​ measures the percentage 
of the population (%) who hold masters degree level education (MA) or higher. 
Education attainment is calculated through a census of U.S. universities in each 
of the U.S. states. 
 
1
 "Urban Population Data." ​Urban Population Data​. The World Bank, 2015. Web. 3 Nov. 2015. 
<http://data.worldbank.org/indicator/SP.URB.TOTL> 
Patterns across U.S. states 
 
Urban population (%Urban) 
The District of Columbia has the highest urban population at 100% because the state 
constitutes Washington D.C. The state with the second highest urban population is 
California at 95%. The state with the lowest percentage urban population is Maine at 
only 38.7%. The map shows the population density of the U.S. by county in 2010 . 2
States with the highest urban populations tend to be situated along the east and west 
coasts, whilst the midwest consists of more rural populations. 
 
Percentage population with long commutes (%LongCommute) 
New York has the highest percentage of long commuters at 16.6%. Northeastern states 
have some of the highest percentages of commutes over one hour. South Dakota has 
the lowest percentage of long commuters at 2.6%. The Midwest, into the Northwest 
have the lowest percentage of commute times over one hour.  
 
Percentage population with a bachelor’s degree (%BA) 
West Virginia has the lowest percentage of people with bachelor’s degrees at 17.5%, 
while the District of Columbia has the highest percentage of citizens with bachelor’s 
degrees at 50%, followed by Massachusetts at 39%. It appears that Southeastern 
states tend to have lower percentages of people that hold a bachelor’s degree, while 
states in the Northeast have the highest percentage of those holding bachelor’s 
degrees.  
 
Percentage population with a master’s degree (%MA) 
The state with the lowest percentage of the population with a master’s degree is 
Arkansas, at 6.3%. The state with the highest number of people with master’s degrees 
is the District of Columbia, at 26.9%, followed by Massachusetts at 16.7%. The high and 
low regional trends are similar to the measures of bachelor’s degrees. 
 
 
 
 
 
 
 
 
2
 "Thematic Maps, Geography." ​U.S. Census Bureau​. U.S. Census Bureau, 2010. Web. 12 Nov. 2015. 
<https://www.census.gov/geo/maps­data/maps/thematic.html>. 
Possible relationships between variables / hypotheses 
From initial observations of the variables, we believe that the ​percent population with 
long commutes​ will have a negative linear relationship with ​percentage population with 
a bachelor’s degree​ and ​percentage population with a master’s degree​, but a positive 
linear relationship with ​urban population​. For example, states with a higher ​urban 
population​ are more likely to have a higher ​percent population with long commutes​. We 
predict that states with higher ​urban populations​ will have a higher ​percentage 
population with bachelor’s and master’s degrees​, and that those holding those degrees 
live closer to work and are less likely to commute over 60 minutes to work. 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
Stage One: Univariate Analysis 
 
Percentage population with a bachelor's degree (%BA) 
 
Summary statistics 
Column  n  Mean  Std. dev.  Median  Range  Min  Max  Q1  Q3 
%BA  51  27.93333  5.723309  27.1  32.6  17.5  50.1  24.5  30.8 
 
   
According to the data, the median 
percentage of population with a bachelor’s 
degree is 27.1% and the mean is about 28%. 
41.1% of U.S. states contain populations 
where 25% to 30% of people have at least a 
bachelor’s level degree. 
 
The distribution of the curve is positively 
(right) skewed with most states having a 
%BA population below the mean. About 70% 
of the U.S. states have %BA populations 
between 17.5% to 30%. Only about 30% of 
U.S. states have %BA populations above 
30%. 
 
1 state, in particular, The District of 
Columbia is an outlier in the data with 50.1% 
of the population being bachelor degree level 
holders and above.​ ​Excluding the outlier, the 
data follows a normal distribution very 
closely. 
 
One standard deviation from the mean 
is 22.2% and 33.7%. 84.3% of the data falls 
within one standard deviation of the mean, 
suggesting that the percentage of commute 
times over 1 hour do not vary largely between 
regions or states. 
Percentage population with a master’s degree (%MA) 
 
Summary statistics 
Column  n  Mean  Std. dev.  Median  Range  Min  Max  Q1  Q3 
%MA  51  10.323529  3.4059705  9.4  20.6  6.3  26.9  8.1  11.3 
 
According to the data, the median 
percentage of population with a master’s 
degree is 9.4% and the mean is 10.3%. 51% 
of U.S. states contain populations where 
7.5% to 10% of people have at least a 
master’s level degree. 
 
The distribution of the curve is positively 
(right) skewed with about 61% of states 
having a %MA population below the mean. 
More than half of U.S. states have %MA 
populations between 7.5% to 10%. Only 
about 38.5% of U.S. states have %MA 
populations above 10%. 
 
Again, 1 state, in particular, The District 
of Columbia is an outlier in the data with 
26.9% of the population being master degree 
level holders and above.​ ​The data without the 
outlier still shows a positive (right) skew. 
 
One standard deviation from the mean 
is 6.0% and 12.8%. 84.3% of the data falls 
within one standard deviation of the mean, 
suggesting that the percentage of commute 
times over 1 hour do not vary largely between 
regions or states. 
 
 
 
 
Comparison of ​percentage %BA​ to %MA 
 
Overall, there is a much lower percentage of master’s graduates in comparison 
to bachelors graduates in the U.S. population. Unlike the %BA population data, %MA 
population is still positively (right skewed) after excluding the outlier, which means that 
there are more states with lower %MA populations and very little states with high %MA 
populations relative to the data provided. 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
Urban population (%Urban) 
 
Column  n  Mean  Std. 
dev. 
Median  Range  Min  Max  Q1  Q3 
%Urban  51  74.104  14.887  74.2  61.3  38.7  100  64.8  87.9 
 
According to the distribution of the data, 
the median is an urban population of 74.2%, 
while the mean is not far off, at 74.1%.  
 
The data closely follows a normal 
distribution. The only outlier for the data, (by 
less than 1%) is The District of Columbia 
(Washington, D.C.) with an urban population 
of 100%. It does not make much of a 
difference to the appearance of the 
distribution when it has been removed, but 
the mean and standard deviation decrease to 
73.586% and 14.567%. If anything, the data 
has a slight negative skew to the left.  
 
One standard deviation from the mean 
is 59.3% and 89.1%. Exactly 66.7% of the 
data falls within one standard deviation of the 
mean (34 out of 50 states and 1 district).  
 
 
 
 
The fact that the data has a near normal distribution seems logical, given that it 
accounts for very different regions of one country. The East Coast has largely urban 
populations, as there is a higher population density in these states than in many 
Western states. The distribution reflects this trend.  
 
 
 
 
 
Percentage population with long commutes (%LongCommute) 
 
Column  n  Mean  Std. 
dev. 
Median  Range  Min  Max  Q1  Q3 
%Long 
Commute 
51  6.806  2.851  5.8  14  2.6  16.6  4.9  8.3 
 
The mean percentage of a state 
population with commutes over 1 hour in 
duration is 6.81%, while the median is 5.8% 
of a state’s population.  
 
The distribution is skewed positively to 
the right. With the removal of the outliers 
(Maryland, 13.9%, New Jersey, 13.9%, and 
New York, 16.6%), the skew is far less 
drastic. The mean decreases to 6.3%, while 
the median decreases to 5.75%. 
 
For this data set, one standard deviation 
from the mean is 4.0% and 9.7%. 76.5% of 
the data falls within one standard deviation of 
the mean, suggesting that the percentage of 
commute times over 1 hour do not vary 
largely between regions or states. To further 
research this data set, it may be useful to 
separate states by the types of transportation 
used for commutes, or the average distance 
traveled to work.  
 
 
 
 
 
 
 
 
Stage two: bivariate analysis 
 
 
Percentage population with a bachelor's degree (%BA) VS ​urban population (%Urban) 
 
The data shows a positive relationship 
between %BA and %Urban. As the 
percentage of the population with bachelor’s 
degrees increases, the percentage of urban 
population increases as well. 
The correlation coefficient (​r​) between 
%BA and %Urban is +0.50. This shows a 
moderate to strong linear relationship. 
The equation for the regression line of 
best fit is y = 37.88 + 1.30x. 
The R­squared value (​r​2​
) between %BA 
and %Urban is 0.25 indicating that 25% of 
the variability of the %Urban data can be 
explained by the variability of the %BA data. 
 
 
Percentage population with a master’s degree (%MA) VS ​urban population (%Urban) 
 
The data shows a positive relationship 
between %BA and %Urban. As the 
percentage of the population with master’s 
degrees increases, the percentage of urban 
population increases as well. 
The correlation coefficient (​r​) between 
%BA and %Urban is +0.48. This shows a 
moderate to strong linear relationship. 
The equation for the regression line of 
best fit is y = 52.23 + 2.12x. 
The R­squared value (​r​2​
) between %BA 
and %Urban is 0.23 indicating that 23% of 
the variability of the %Urban data can be 
explained by the variability of the %MA data. 
 
 
As predicted, the higher both %BA and %MA populations of the state, the higher 
the urban population. This might be because as there are more people with degrees, 
there are more people in the workforce who tend to live and work in more densely 
populated urban cities. Companies also tend to congregate in urban areas and hire 
college graduates. 
 
 
Percentage population with a bachelor's degree (%BA) ​VS percentage population with 
long commutes (%LongCommute) 
 
The data shows a positive relationship 
between %BA and %LongCommute. As the 
percentage of the population with bachelor’s 
degrees increases, the percentage of the 
population with long commutes increases as 
well. 
The correlation coefficient (​r​) between 
%BA and %LongCommute is +0.43. This 
shows a moderate linear relationship. 
The equation for the regression line of 
best fit is y = 0.86 + 0.21x 
 
The R­squared value (​r​2​
) between %BA and %LongCommute is 0.18 indicating 
that 18% of the variability of the %LongCommute data can be explained by the %BA 
data. The p­value of the model is 0.0018. 
 
 
 
 
 
 
 
 
 
 
 
 
 
Percentage population with a master’s degree (%MA) VS ​percentage population with 
long commutes (%LongCommute) 
The data shows a moderate relationship 
between %MA and %LongCommute. As the 
percentage of the population with bachelor’s 
degrees increases, the percentage of the 
population with long commutes increases as 
well. 
The correlation coefficient (​r​) between 
%MA and %LongCommute is +0.51. This 
shows a moderate linear relationship. 
The equation for the regression line of 
best fit is y = 2.39 + 0.43x 
 
The R­squared value (​r​2​
) between %MA and %LongCommute is 0.26 indicating 
that 26% of the variability of the %LongCommute data can be explained by the 
variability of the %MA data. The p­value of the model is 0.0001. 
 
We did not expect to see a positive correlation between the variables, as we 
predicted that those without bachelor’s or master’s degrees may not earn as much 
money, live outside urban areas and may have to commute farther to work. 
 
Urban population (%Urban) VS percentage population with long commutes 
(%LongCommute) 
The data shows a moderate relationship 
between %Urban and %LongCommute. As 
the percentage of the urban population 
increases, the percentage of the population 
with long commutes increases as well. 
The correlation coefficient (​r​) between 
%Urban and %LongCommute is +0.45. This 
shows a moderate linear relationship. 
The equation for the regression line of 
best fit is y = 0.37 + 0.087x 
 
 
The R­squared value (​r​2​
) between %Urban and %LongCommute is 0.21 
indicating that 21% of the variability of the %LongCommute data can be explained by 
the variability of the %Urban data. The p­value of the model is 0.0008. 
We expected to see that cities with a higher urban population would have a 
greater percentage of citizens with commute times over one hour, due to traffic delays. 
This occurs to an extent, but the scatter plot indicates a less strong correlation than we 
expected. 
 
Stage three: summary and investigation suggestions (2­3 pages) 
 
Summary of observations of relationships 
As observed, the model with the highest correlation is between %MA and 
%LongCommute with r = +0.51. At first, there seemed to be no direct explanation for 
this relationship, but upon looking at the next observed model we see that the 
%LongCommute increases as the %Urban increases as well. Both of these results were 
unexpected and could have several explanations. The results are related, as the 
percentage of graduates increases more people live in urban cities and therefore the 
commute times for the populations increase. People could be travelling in cars which 
could cause high traffic within urban areas. People could also be walking or biking to 
work or school which are generally slower modes of transportation compared to cars 
and public transportation and increase the %LongCommute data in urban areas. 
Populations in more rural states, however, may tend to commute less often or live 
directly in their area of work where there is less traffic congestion. 
 
Comparison of U.S. Regions 
For the purpose of regional comparisons, we have divided the 50 States into four 
regions  (West, Midwest, Northeast, and South) noted by W, MW, NE, and S in charts. 3
 
West               Midwest            South            Northeast 
Washington          North Dakota          Texas                 Maine 
Oregon                 South Dakota         Oklahoma           Vermont 
California              Nebraska               Arkansas             New Hampshire 
Nevada                 Kansas                  Louisiana             Massachusetts 
Idaho                    Iowa                       Mississippi          Rhode Island 
Colorado              Minnesota              Alabama             Connecticut 
New Mexico         Missouri                 Tennessee          New York 
Arizona                Wisconsin              Kentucky              Pennsylvania 
Montana              Illinois                     Georgia               New Jersey 
Wyoming             Indiana                   Florida 
Utah                    Michigan                 Virginia 
Alaska                 Ohio                       West Virginia 
Hawaii                                                North Carolina 
          South Carolina 
          Maryland 
3
 Regions determined by “Statistical Groupings of States and Countries” 
(https://files.acrobat.com/a/preview/616a7056­0769­4a8e­950c­78afc8f794ab) 
When all of the data for a specific variable is viewed together, it is difficult to 
conclude much about the specific regions of the United States. By dividing the regions, 
we hope to gain a more conclusive understanding of the relationship between our 
variables. We were most interested in looking at the regional differences between urban 
population and commute time, and education level and commute time.  
 
%Urban VS %LongCommute, by Region 
 
   
 
 
 
 
W​: ​r​=0.628, ​r­squared​=0.394, ​sd​=1.407, ​p­value​=0.022, ​y​=­0.701+0.86x 
MW​: ​r​=0.777, ​r­squared​=0.603, ​sd​=1.582, ​p­value​=0.003, ​y​=­10.881+0.223x 
S​: ​r​=0.430, ​r­squared​=0.185, ​sd​=2.163, ​p­value​=0.096, ​y​=1.933+0.076x 
NE​: ​r​=0.523, ​r­squared​=0.273, ​sd​=3.533, ​p­value​=0.149, ​y​=2.522+0.089x 
 
 
 
The charts and figures above demonstrate a more detailed breakdown of the 
percentage urban population versus the percentage of a state’s population with a long 
commute. For all regions, save the South (with r=0.430), the correlation coefficient is 
higher. The Midwest has the highest correlation coefficient and r­squared value, as well 
as the lowest p­value. Midwestern states have urban populations between 50­80% 
(Illinois has an 88% urban population) and 2­7% of the state’s inhabitants have a 
commute over 1 hour long. This phenomena may be explained by the fact that most 
citizens live near cities, and are easily able to travel between home and work. Although 
it would be expected that the same hypothesis applies to the other regions, the 
infrastructure of roads and availabilty of public transportation may contribute to higher 
commute times for states with large urban populations. For example, for the 
Northeastern states have very high urban populations (80­100%), the percentage of the 
population with commutes over 1 hour long is extremely varied (4­17%). Congestion, 
interstate commuting, and delays in public transportation may contribute to this data.  
 
%BA VS %LongCommute 
 
 
 
 
W​: r=0.321, r­squared=0.103, sd=1.712, p­value=0.284, y=2.807+0.147x 
MW​: r=0.256, r­squared=0.065, sd=2.426, p­value=0.422, y=­1.025+0.223x 
S​: r=0.600, r­squared=0.360, sd=1.917, p­value=0.014, y=0.436+0.273x 
NE​: r=0.304, r­squared=0.092, sd=3.949, p­value=0.427, y=­0.406+0.294x 
 
When divided by region, the data comparing the percentage of a state’s 
population that has (at least) a Bachelor’s Degree and the percentage of the population 
with a commute time over 1 hour appears to be less correlated than the country as a 
whole. The South has the strongest correlation coefficient at 0.600. The percentage of 
the population that has commutes over 1 hour is low as a whole, but commute times 
appear to be higher for states with more inhabitants holding Bachelor’s degrees. Again, 
this may be explained by infrastructure. It’s possible that those holding Bachelor’s 
degrees tend to prefer living farther away from cities (where they work), preferring to live 
in a suburban community.  
 
These regions are grouped together because of their similarities in population, 
history, industries, and more. To further develop comparisons, it would be useful to use 
population density data, and to pull up information surrounding types of industry and the 
most popular mode of transportation in these regions. This data can further develop 
understanding about the relationships (or lack thereof) between urban population and 
commute times over 1 hour, as well as education level and commute times over 1 hour. 

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